Gadjah Mada International Journal of Business Ae September-December. Vol. No. 3, 2017 Gadjah Mada International Journal of Business Vol. No. 3 (September-December 2. : 227-246 Can Backward-looking and Forward-looking Information Debias the Prospect Effect in Earnings Announcements? Jogiyanto Hartono,1* and Sri Wahyuni2 Faculty of Economics and Business. Universitas Gadjah Mada. Indonesia Institute of Economic Science (STIE) Mahardhika Surabaya. Indonesia Abstract: This study examines the important issue of whether additional pieces of information about the earningsAo characteristics . heir quantitative description and predicted earning. can debias the prospect effect of the earningsAo announcement. The prospect effect bias can be mitigated by the availability of clear information and an integrated disclosure. Additional information that is included with the previous information will make the investorsAo beliefs stronger and it will debias any psychological effects. This research confirms the prospect effectAos bias that investors react more negatively when evaluating a companyAos performance after a negative earnings information disclosure rather than react positively in evaluating the performance for a positive earnings information disclosure. The results also show that when additional pieces of information, such as a quantitative description and predicted earnings are added, they can mitigate the prospect effectAos bias. Additional information of predicted earnings as forward-looking oriented information has a stronger debiasing effect than that of additional information of a quantitative description as backward-looking oriented information. Keywords: backward-looking oriented information. forward-looking oriented mitigating bias. predicted earnings. prospect theory. quantitative description JEL classification: D81 * Corresponding authorAos e-mail: jogiyantohm@gmail. ISSN: 1141-1128 http://journal. id/gamaijb Hartono and Wahyuni Introduction The prospect effect is confirmed when investors react more negatively in evaluating a companyAos performance after its negative earnings information disclosure rather than when they react positively to evaluate the same companyAos performance for its positive earnings information disclosure (Schrand and Walther 2000. Krische 2. Previous research already showed that a single accounting information disclosure can cause the prospect effectAos bias when used by investors to make their investment decisions. Examples are studies by Ferris et al. Lakonishok and Seymour . and Odean . Since the prospect effectAos bias reflects irrational investorsAo inaccurate decision making, it is important to conduct research to mitigate this bias. Schrand and Walther . and Krische . indicated that investors adjust for the prior-period event when an additional clear quantitative description is presented in the current-period announcement. Using this idea, this study attempts to use additional pieces of information that are believed to revise investors prior beliefs, to reduce the decision-making bias. This research tries to test single and multiple pieces of information in earnings announcements, based on the prospect theory (Kahneman and Tversky 1. The single earnings information announcement is used to test the prospect effectAos bias. While the multiple pieces of information in earnings announcements are used to test the debiasing effect of the prospect effectAos bias. The underlying assumption is the presence of bounded rationality (Bazerman 1. , which is the condition of an individual who has limitations on the information, memory, capacity, time, and other things available to him/her, so the individual does not have backward- and forward-looking oriented prospectus information, unless the information is expressed in any current announcements (Wahyuni and Hartono 2. The involvement of the psychological aspect in this study is in line with Bernard . and Hartono . who suggested that the research should adopt a new way to think about the market by considering the cognitive-psychological aspect. In contrast to previous empirical research, this study uses the prospect theory to explain characteristics of the earningsAo information disclosures in a companyAos performance evaluation setting. Studies into the characteristics of earnings information disclosures are not frequently carried out, but there have been studies by Schrand and Walther . and Krische . They are pioneers in studying the characteristics of the earningsAo information disclosure. The characteristic of the earningsAo information disclosures they used is the transitory gain or loss on the disposal of Property. Plant and Equipment (PPE) in the current periodAos announcement of the earnings. They show that every item that is disclosed in the earningsAo announcements is expected to affect the perception of potential investors. Two characteristics of an earningAos information disclosure, as additional pieces of information used in this study, are qualitative description information as a proxy of backward-looking oriented information, and predictive earnings information as a proxy of forward-looking oriented information. The quantitative description information in this study is the managementAos explanation regarding the increase or decrease in sales stated in the earningAos announcement. The quantitative descriptionAos disclosure in an earningAos Gadjah Mada International Journal of Business Ae September-December. Vol. No. 3, 2017 announcement can clarify any previous quantitative information, thus reducing the occurrence of the perception bias (Schrand and Walther 2000. Krische 2005. Wahyuni and Hartono 2. study uses an experimental research design with real investors as the exerimentAos subjects, which is rare in market based accounting research and is expected to inspire the development of experimental research in this field. Predicted earnings information is the managementAos guidance about future information. King et al. used management earnings forecasts as an earningsAo prediction. Widely. Baginski et al. stated that management often explains its earningsAo prediction through an attribution related to estimated performance. Such an attribution can be about the companyAos internal activities . products and services, and organizational issue. or the companyAos external activities . economic conditions, or government The attribution potentially helps investors to interpret the managementAos forecast, even more so in the event of a possible negative forecast . ad news forecas. Not only does the managementAos guidance contains information (Patell 1976. Penman Waymire 1. , but it is also seen to have better quality information about the foreseeable future than that contained in many analystsAo forecasts (Ajinkya and Gift 1984. Patell 1976. Baginski et al. Therefore, this study uses predicted earnings as management guidance information to proxy the forward-looking information (Hartono and Wahyuni 2. The contributions of this research include theoretical, methodological, practical, and policy contributions. The theoretical contribution is given by providing evidence on the debiasing prospect effect in an accounting environment. This research supports the prospect effect and how to debias the effect. The results of this research are expected to trigger further research into the behavioral aspects of accounting. There are some matters that motivate this research as follows: first, this study not only uses single information but also uses multiple pieces of information to test the prospect effect. Second, this study is one of the few studies that use additional pieces of information, in terms of a quantitative description as backward-looking information, and an earningsAo prediction as forward-looking oriented piece of information. Third, this The methodological contribution in this research relates to the use of the experimental design. Experimental research itself into the behavioral aspects of accounting research is not a new thing, but it is rare in accounting capital market research. Experimental material, with the setting of investorsAo behavior about performance evaluations, will further inspire the development of experiment material in the field of capital market research. This study is expected to contribute to how firms determine their announcement strategies to avoid any decision-making bias in the reactions of their investors. Firms can use additional pieces of information to mitigate the investorsAo bias when they disclose a negative earningAos announcement. The last is for the contribution to policy For the regulator, as the accounting standardAos setter, the results of this research can be an important input, to be used as a consideration when making financial reporting disclosure standards. Since earnings announcements can create prospect bias, the regulator can force firms to disclose additional pieces of information, especially those of for- Hartono and Wahyuni ward-looking oriented information, to reduce and even to mitigate the bias. In the experiment, investors interpret a companyAos earnings announcement and forecast the next periodAos earnings. First, the investors receive the companyAos business description, manipulated between subjects to be either positive or negative information. This study further manipulates, within the subjects, whether the investors used the characteristics of the information as a basis for evaluating the companyAos performance . hree types of case. and determining the estimated earnings for the coming year. Then the subjects are given information of an increase or a decrease in the estimated earnings compared with the amount of current earnings. The subjects also answer questions about the manipulation check. Consistent with Schrand and Walther . Krische . and Wahyuni and Hartono . 0, 2. , this result indicates that additional information, which is integrated with previous information, will make investorsAo beliefs stronger, and it will debias the psychological effects, which in turn helps investors to evaluate the companyAos performance. This study provides evidence that single information in an earningAos announcement produces a bias of the prospect effect, and any additional characteristicsAo disclosure of earnings information of a quantitative description as backward-looking information, and predicted earnings as forward-looking information can mitigate the prospect effectAos This study also finds that forward-looking oriented information is better at debiasing the prospect effectAos bias than backwardlooking oriented information is. Theory and Hypotheses Development Prospect Theory The prospect theory is one of the main pillars of the behavioral finance literature. This theory was introduced by Kahneman and Tversky . as a decision-making theory in uncertain or risky conditions. The prospect theory explains how selections are framed and evaluated in the decision-making process. The prospect theory states that individuals focus more on the prospect of gains and losses, not on total wealth. Their reference point is the status quo and assumes that everyone who uses it is familiar with it. The prospect theory predicts an individual would avoid risk . isk avers. when evaluating a choice above the reference point . ain domai. and tends to be risk seeking when evaluating choices under the reference point . oss domai. The prospect theory can explain the trade-off between two parameters when evaluating organizations, namely risk and return (Fiegenbaum and Thomas 1988. Fiegenbaum 1990. Jegers 1991. Sinha 1. In particular, organizations below their target levels are found to be risk-takers, while organizations above their target levels are riskaverters. Kliger and Tsur . explain the relationship between risk and return at the organization level. that firms with returns above their reference levels take less risks than do firms with returns below their reference The important element of the prospect theory is the reference dependence. The prospect theoryAos preference is not presented with Gadjah Mada International Journal of Business Ae September-December. Vol. No. 3, 2017 a constant utility function, but it depends on the situation, and the expectations and norms of the individual, which develop from the basic psychology of human intuition. Stracca . explains that the prospect theory is based on three assumptions as follows: first, organisms always adapt to their circumstances. Individuals determine that gain or loss is based on a reference point, not an absolute InvestorsAo utility is assumed to be a function of the gains and losses relative to a benchmark, not a function of absolute Second, the marginal response is diminishing. The distance of the gains and losses from the reference point shows the decreasing sensitivity. Third, pain is more urgent than pleasure. Therefore, people are more sensitive to losses than gains, which means a reluctance to lose. Most researchers who examined the riskreturn association under the prospect theory assumed a common reference point at the industry level, usually measured by the industry median or mean of returns. Fiegenbaum and Thomas . and Fiegenbaum . justified this selection. Lev . and Frecka and Lee . found that firms periodically adjust their performance and financial ratios to their industry means. Lehner . found the validity of industry benchmarks to be reference level proxies. Quantitative Description and Predicted Earnings Information Quantitative description information is additional information, such as the manageAe mentAos explanation . anagement guidanc. about events which have occured in one accounting period. The quantitative description information in this study is the managementAos explanation regarding an increase . in sales stated in a positive . earningsAo announcement. A quantitative description disclosure in the earningsAo announcement can clarify the previous quantitative information, thus reducing the occurrence of the perception bias (Schrand and Walther 2000. Krische 2005. Wahyuni and Hartono 2. A quantitative description is considered as backward-looking oriented information. provides historical information to support the earningsAo announcement information. Predicted earnings infor mation is managementAos guidance about future information. 2 Empirical studies about predicted earnings information have been conducted and obtained different results. A study by Han and Wild . and Pownall and Waymire . showed that earnings forecasts are assumed to be less credible than other sources of information, while other studies documented that earnings forecasts have an information content (Patell 1976. Penman Waymire 1. The next development is related to the study of management guidance that is considered to have better quality future information than an analystAos forecast (Ajinkya and Gift 1984. Patell 1976. Baginski et al. Han and Tan 2. Baginski et al. explained an earningAos forecast, as a type of prospectus information, related to the estimation of the Prior archival evidence (Schrand and Walther 2. and an experimental setting (Krische 2. provides evidence that investors evaluate a company more favorably when a clear, quantitative description of a prior-period gain is included in the current announcement and less favorably when a clear, quantitative description of a prior-period loss is included. Similarly. Wahyuni and HartonoAos . 0, 2. experiment results suggest that a quantitative description of the priorperiod gain or loss influences the investorsAo judgments. For more information about management earnings forecasts see King et al. In this study. Aomanagement guidanceAo is similar to management earnings forecast. Hartono and Wahyuni performance of both a companyAos internal activities . product and service issues, organizational issue. and its external activities . economic conditions, or government Han and Tan . , by using an experiment, tested the disclosure of different forms of management guidance and indicated that investors tend to choose guidance in a range of forms, rather than in an absolute form. Both the study of earnings forecasts and the study of management guidance usually still focus on a single reference Hypotheses Development Prospect Effect of Single Information Hypothesis According to Kahneman and Tversky . , the prospect theory predicts that an individual will avoid risks . isk avers. when evaluating choices above the reference point . ain domai. and tends to be risk seeking when evaluating choices below the reference point . oss domai. Schrand and Walther . , as well as Krische . offer the support that investors often remember priorperiod gains more in a loss condition. This research result is strengthened by Wahyuni and Hartono . who state that investors will process prior-period information, expressed in the current announcement, differently between information containing gain and loss transitories. Boldt . found that an individual behaves more/less favorably because of the fixation effect. Individuals would be fixated by historic earnings that contain loss/profit transitories when estimating future earnings. Similarly when it is related to the phenomenon of earnings characteristicsAo information disclosure, it is believed that positive earn232 ings information disclosures will tend to make investors evaluate a companyAos performance higher, while negative earnings information will tend to cause investors to evaluate the companyAos performance lower, but the evaluation scale would be higher for negative earnings rather than positive earnings. Kahneman and Tversky . showed that psychologically people will react more to a loss situation than to a gain situation. Krische . and Wahyuni and Hartono . examined whether investors evaluate a company more favorably when information about a transitory prior-period gain, as positive information, is repeated in the currentperiod announcement and less favorably when information about a transitory prior-period loss, as negative information, is repeated. Those results suggest that the prospect effectAos bias occurred, as the negative information caused a greater reaction than the positive information did. Stracca . explains that one of the three assumptions of the prospect theory is that pain is more urgent than pleasure, so people are more sensitive to losses than gains. Therefore, the prospect effect bias is hypothesized as follows. H1: Investors will react more negatively in evaluating a companyAos performance based on a negative earningAos information disclosure rather than react positively in evaluating the companyAos performance based on a positive earningAos information disclosure. Debiasing Prospect Effect of Additional Multiple Pieces of Information Hypothesis Schrand and Walther . examined the strategic prior-period benchmark disclosures in earnings announcements. They provided evidence that the managersAo selective Gadjah Mada International Journal of Business Ae September-December. Vol. No. 3, 2017 repetition of information about transitory prior-period events in the current earnings announcement affect investorsAo adjustments to the events, and their evaluations of earnings performance. Krische . indicated that investors adjust for the prior-period event when a clear, quantitative description is presented in the current-period announcement, but not when the description is absent, even though investors had previously identified the The experimentAos results by Wahyuni and Hartono . suggested that the strategic disclosure of prior-period benchmarks influences the investorsAo judgments when evaluating performance. Individuals tend to make their decisions based on the information which exists in their The availability of information is deduced from a heuristic concept (Simon Kahneman and Tversky 1. Based on this assumption, it can be explained that a quantitative description of prior-period gains or losses, and predicted earnings included in the current earnings announcement, will serve as clues and help investors to recall pieces of information already in their memories, which can be of great help to individuals in calculating the adjusted earnings (Krische 2005. Wahyuni and Hartono 2010, 2. A quantitative description information disclosure, as backward-oriented information, is managementAos explanation regarding the increase or decrease in sales provided in an earningAos announcement. Additional quantitative description disclosures in earnings announcements can clarify the quantitative information, and thus can reduce the occurrence of perception bias (Schrand and Walther Krische 2005. Wahyuni and Hartono Similarly, recent research into comprehensive income disclosures (Maines and McDaniel 2. , and the accuracy of prior estimates (Hirst et al. has also documented that the presentation format used can affect analystsAo and individual investorsAo evaluations of performance. Predicted earnings information, as forward-oriented information, was examined by Baginski et al. and Han and Tan . Baginski et al. stated that managers often explain their earnings forecasts through attributions related to their estimations of performance, both for the companyAos internal activities . product and service issues, organizational issue. and its external activities . economic conditions, or government regulation. The predicted earnings information in this study is defined as the earningsAo forecast by the companyAos management, which is expressed as a percentage of the earnings, accompanied by a qualitative explanation of the concrete steps taken by the management to achieve their predicted Additional quantitative descriptions and predicted earnings pieces of information that are disclosed in the earningsAo announcements are expected to affect the perception of the investors, which would then be reflected in their behavior when they are making business decisions. The clear, quantitative description and predicted earnings information that are disclosed in the earningsAo announcements would ensure that investors had sufficient information available for them to compute the adjusted earnings. Therefore, this study predicts that the additional quantitative description and predicted earnings information, when disclosed in the earningsAo announcements, can mitigate the prospect effectAos bias in estimating future earnings. is hypothesized that additional pieces of information can debias the prospect effectAos bias as H2. Hartono and Wahyuni H2: The additional pieces of information of the earningsAo characteristics announcement . he quantitative description as backward-looking information and predicted earnings as forward-looking informatio. will debias the prospect effect of earnings announcement disclosure. Research Method Experiment Design This research uses an experiment to test causality relations with some manipulated variables to answer the research problems. The experimental method is chosen for use in this study because it can control any tested and extraneous variables affecting the causality relations. The experiment in this study uses a combination of between-subjects and within-subjects designs, with a 2 x 3 mixed factorial design, as seen in Table 1. The 2 x 3 experimental method in this research includes: . earnings information . wo conditions: positive earnings and negative earning. earnings characteristic disclosure . hree conditions: earnings information (E), earnings information (E) plus quantitative description (QD), and earnings information (E) plus quantitative description (QD) plus predicted parnings (PE)]. A between-subjects design compares earnings information between positive and negative earnings with subjects in different groups, to test the prospect effectAos bias (H. The within-subjects design compares the effects of different treatments on the same subjects in a group. The different treatments are the informationAos content . arnings, earnings plus quantitative description and earnings plus quantitative description plus predicted earning. which are used to test the debias prospectAos effect (H. In a between-subjects design, each subject gets a case description, while in the within-subjects design, each subject gets more than one case descriptions (Harsha and Knapp Moreover, it is explained that the use of the between-subjects experiment is based on the reason that the method is able to test the effect of any interaction from the independent variable toward the dependent variable, and to avoid the occurrence of the demand effect that occurs when the subjects know the direction, from the conditions given to them. Table 1. Experiment Design 2 x 3 Signs of Earnings Information Information Characteristics Positive Negative Earnings (E) Cell 1a Cell 2a Earnings (E) Quantitative Description (QD) Cell 1b Cell 2b Earnings (E) Quantitative Description (QD) Predicted Earnings (PE) Cell 1c Cell 2c Number of participants Gadjah Mada International Journal of Business Ae September-December. Vol. No. 3, 2017 Experiment Participants This research uses an 2 x 3 mixed experimental design with 38 investors consisting of 15 males and 23 females as the experimentAos participants. On average, the subjects are 27 years old. Out of the original 55 subjects, 6 of them could not be analyzed because of incomplete data and 11 people were declared to have failed the manipulation check. Of the 38 subjects, 20 subjects were assigned randomly to the positive earnings group and the other 18 to the negative earnings group. This experiment was conducted using a personnel based approach, on a voluntary basis and dependent on the willingness of the Experiments using this approach are conducted on a one-by-one basis for each subject, in contrast to a laboratory experiment which is conducted in a specific room with all the subjects at once. The personnel based approach makes it easy for each subject to determine the time and location, according to his/her availability, for the execution of the experiment. Recruitment was done through cooperation with the stock exchanges, educational institutions, and various already established relationships in Yogyakarta. 3 The criteria for the participants in this study are they should be investors who have undertaken some investment activities and have knowledge of, and at least five years experience in, the fields of investment, the capital markets and the analysis of financial statements. The experiment was done by a paper and pencil test. Research Variables and Their Measurements In this experiment, the dependent variable is the investorsAo evaluations of the companyAos performance, measured by the investorsAo earnings forecasts. The investors are asked to interpret an earningsAo announcement, and then make an earningAos forecast for the next year. This study uses earnings forecasts as a measure of the investorsAoevaluations of performance, because they are important components for value deter minations (Ohlson 1995. Lee 1. The independent variables in this study are the factors of the treatment of the 2x3 mixed design, which are between-subjects for earnings information disclosure . wo levels: Positive earnings and negative earning. and within-subjects for any additional pieces of information when evaluating the companyAos performance . hree levels: Earnings, earnings plus quantitative description, and earnings plus quantitative description plus predicted First, investors receive a description of the companyAos business, manipulated for the between-subjects to be either positive or negative information. Investors were also asked to identify the amount of historical earnings, including nonrecurring events . rior-period gain/loss from the sale of fixed This allows the researcher to verify that the investors had previously identified the information needed to adjust for that event when asked later to forecast the earnings. Time for the dataAos collection for a personnel based approach experiment is longer than for a laboratory The data collection for this experiment took A 6 months (March Ae August 2. From 55 subjects, 6 of them could not be analyzed because of incomplete data and 11 people were declared as failing the manipulation check . ,5%). 38 subject . ,5%) were declared as being qualified. Hartono and Wahyuni This study further manipulated for the within-subjects, whether the investors used the characteristics of the information as a basis for evaluating the companyAos performance . hree types of case. and determining the amount of the earningsAo estimation for the coming year. Then the subjects were given information of an increase or a decrease in the estimated earnings compared with the amount of the current earnings. The subjects also answered questions about the manipulation check. In this study, quantitative description information is the managementAos explanation regarding the increase or decrease in sales stated in the earningsAo announcement, which occurred during one accounting period. Predicted earnings are defined as the earnings forecast by the companyAos management, which is expressed as a percentage of the earnings, accompanied by a qualitative explanation of the concrete steps taken by the management to achieve the predicted earnings. Experiment Material The experimentAos material uses material taken from KrischeAos study . , with some adjustments to the storyAos context in order to make it realistic for the Indonesin setting. The case setting is a manufacturing company producing snacks. In this case, an earningsAo announcement, either positive or negative, is presented to each group. The positive earnings group was provided with case materials with the initial earningsAo value set at Rp530,000. 00, and the negative group was provided with case materials with an initial earningsAo value of Rp525,000. Experiment Task and Procedure The subjects in this study were randomly assigned to two groups, one of which received positive earnings information and the other received negative earnings information. Each participant was given written instructions and case material developed from the study by Krische . All the participants had access to their own calculator. There were four steps in this experiment. First, the participants were given a description of the companyAos business. In this step, they were also provided with initial earnings values of Rp530,000. 00 and Rp525,000. 00 for the positive and negative earnings announcements, respectively. Second, the participants were given one of three treatments. These were earnings (E). earnings (E) quantitative description (QD). and earnings (E) quantitative description (QD) predicted parnings (PE) pieces of Earnings information (E) contains information about the current and previous yearsAo earnings balances, and their earningsAo components. Quantitative description (QD) information is the managementAos explanation regarding the increase or decrease in sales stated in their earnings announcement, which occurred during one accounting period. Predicted earnings (PE) is the earningsAo forecast by the companyAos management, expressed as a percentage of the earnings accompanied by a qualitative explanation of the concrete steps taken by the management to achieve the predicted earnings. Step three was the demographic dataAos collection, and the last step was a debriefing for the subjects. Manipulation Check A manipulation check was performed to evaluate the subjectsAounderstanding of the experimentAos case material. The manipulation check was done after all the treatments were The subjects were asked to estimate future earnings and interpret the magnitude Gadjah Mada International Journal of Business Ae September-December. Vol. No. 3, 2017 of the estimation that they made, whether it is higher or lower than the current earnings. The magnitude of the estimation is said to be higher when there is an increase of Rp10,000. 00 or its multiples, and it is said to be lower if there is a decrease of Rp10,000. 00 or multiples thereof. If a subject did not answer as instructed, then the subject was declared as being unqualified. The estimation magnitude of Rp10,000. or its multiples is either a positive or negative change to the earningsAo forecast, which were allowed when the subjects evaluated the firmAos performance in the experiment. Hypotheses Testings The dataAos analysis technique used in this experiment is the Analysis of Variance (ANOVA). The reason to use this analysis method is to compare some of the means differences among the subjectsAo estimations of the earnings. Research Results Hypotheses Testing Results Table 3 shows the means of the investorsAo earnings forecasts for the 2x3 mixed The subjects responded positively from Rp530,000. 00 to Rp541,000. 00 for positive Earnings (E) information, which increased to Rp 551,000. 00 for positive Earnings (E) Quantitative Description (QD) infor mation, and increased again to Rp564,000. 00 for positive Earnings (E) Quantitatve Description (QD) Predicted Earnings (PE) pieces of information. Table 3 also shows the subjects responded negatively to negative information. The subjects had a negative response from Rp525,000. 00 to Rp506,111. 11 for negative Earnings (E) information, decreasing to Rp496,666. 67 for negative Earnings (E) Quantitatve Description (QD) pieces of in- Table 2. Hypotheses Testing No. Hypotheses H1: Prospect Effect for Single Information H2: Prospect effect debiased for multiple pieces of information Testing Ways Comparing the adjustment scale for negative earnings with the adjustment scale for positive earnings: Abs(Cell 2a - Rp525,000. > (Cell 1a - Rp530,000. Comparing the adjustment scale for negative earnings additional information with the adjustment scale for positive earnings additional pieces of information: Prospect effect debiased of Qualitative Description (QD): Abs(Cell 2b Ae Cell 2. O (Cell 1b AeCell 1. Prospect effect debiased of Predicted Earnings (PE): Abs(Cell 2c Ae Cell 2. O (Cell 1c Ae Cell 1. Notes: Initial value of earnings for negative earnings group. Initial value of earnings for positive earnings group. Hartono and Wahyuni for mation, and decreasing again to Rp492,222. 22 for negative Earnings (E) Quantitatve Description (QD) Predicted Earnings (PE) pieces of information. SubjectsAo estimation means for positive and negative pieces of information can be graphically presented as in Figure 1. Table 3. The Average of InvestorAos Evaluation (Standard Deviatio. Earnings Information Characteristic Disclosure Positive Earnings . n R. Initial reference point is Rp530,000. Negative Earnings . n R. Initial reference point is Rp525,000. Earnings (E) Cell 1a: 541,000. ,077. Cell 2a: 506,111. ,583. Earnings (E) Quantitative Description (QD) Cell 1b: 551,000. ,525. Cell 2b: 496,666. ,859. Earnings (E) Quantitative Description (QD) Predicted Earnings (PE) Cell 1c: 564,000. ,069. Cell 2c: 492,222. ,519. Total Means 552,000. 498,333. Figure 1. SubjectsAo Mean Evaluations for Positive and Negative Earnings Pieces of Information Gadjah Mada International Journal of Business Ae September-December. Vol. No. 3, 2017 Prospect Effect for Single Earnings Information Hypothesis (H. Prospect Effect Debiased of Multiple Pieces of Information Hypothesis (H. The first hypothesis (H. tests the prospect effect which is the difference in the subjectsAo reaction towards positive vs. earnings information in a single disclosure. The prospect effect is measured by the absolute difference between the earningsAo estimation reaction by the negative earnings group . and the reaction of the positive earnings group . From Table 4, this study shows that the scale average of the subjectsAo estimation of the earnings for a negative earningsAo infor mation disclosure is abs. ,888. , which is higher than the scale average of the earningsAo estimation for a positive infor mation disclosure, which is abs. ,000. The result supports H1. The second hypothesis (H. examines the debiasing prospect effect in a situation with multiple pieces of information. It is hypothesized that the additional pieces of information, of a quantitative description and predicted earnings nature, can debias the prospect effect. The research results show the adjustment scale of the subjectsAo estimation of the earnings for the positive Earnings (E) plus Quantitative Description (QD) information group is Rp10,000. 00 (Rp551,000. 00 Ae Rp541,000. , which is a little higher than that of the subjectsAo estimations for the negative Earnings (E) plus Quantitative Description (QD) information group which has a mean of Rp-9,444. 44 (Rp496,222. 22 Rp506,111. Table 4. Prospect Effect Hypothesis Testing for Single Information Comparing Effect Adjustment Scale . n R. Difference Single Information: Negative Earnings vs. Positive Earnings. Abs(Cell 2a - Rp525,000. (Cell 1a - Rp530,000. Abs. ,111. 11 - 525,000,. - 18,888. > . ,000,00 - 530,000. 00 = 11,000. 7,888. LeveneAos Test t-test F Sig. t Sig Notes: aInitial value of earnings for negative earnings group. b Initial value of earnings for positive earnings group. Hartono and Wahyuni The hypothesis tested the result by using an independent sample t-test, which showed a t-value of 24. 402 and p = 0. ee Table . It means that no prospects effect occurred in the future earnings estimation due to the subjectsAo adjustment scale in the positive earnings group, which is Rp10,000. 00 higher than the subjectAos response in the negative earnings group for a mean of Rp-9,444. Thus, additional pieces of information on the characteristics of the earningsAo announcement . uantitative descriptio. may reduce the prospect effect when investors are only given information about positive or negative earnings announcements. Therefore. Hypothesis 2 is supported. justment scale of the subjectsAo estimations for the negative Earnings (E) plus Quantitative Description (QD) plus Predicted Earnings (PE) information group which has a mean of minus Rp4,444. 45 (Rp492,222. Ae Rp496,222. This difference is tested using an independent sample t-test and is statistically significant at 0. The result shows that the disclosure of additional pieces of information of a Quantitative Description (QD) plus Predicted Earnings (PE) nature can further debias the prospect effect. Again. Hypothesis 2 is supported. Table 5 shows the testing results of the debiasing prospect effect for multiple pieces of information in the positive Earnings (E) plus Quantitative Description (QD) plus Predicted Earnings (PE) information group. The results of the adjustment scale of the subjectsAo earnings estimations for the positive Earnings (E) plus Quantitative Description (QD) plus Predicted Earnings (PE) information group is Rp13,000. 00 (Rp564,000. 00 Rp551,000. , which is higher than the ad- How the additional pieces of quantitative description and predicted earnings information can mitigate the prospect effect bias in earnings announcements can be explained in detail by Figure 2. Discussions The prospect effect occurs when peopleAos response to negative information is greater than their response to positive information. In this study, the prospect effect is found for single earnings information. But, when additional information about the earn- Table 5. Prospect Effect Debiased Hypotheses Testing for Multiple Pieces of Information Comparing Effect (Negative E QD) vs, (Positive E QD) Abs(Cell 2b Ae Cell 2. vs (Cell 1b Ae Cell 1. (Negative E QD PE) vs, (Positive E QD PE) Abs(Cell 2c Ae Cell 2. ell 1c Ae Cell 1. Adjustment Scale . n R. Difference LeveneAos Test t-test F Sig. t Sig Abs. ,222. 22 -506,111. -9,444. ,000. -541,000. 00 = 10,000. Abs. ,222. 22 Ae 496,222. - 4,444. <564,000. -551,000. 00 = 13,000. 8,555. Gadjah Mada International Journal of Business Ae September-December. Vol. No. 3, 2017 Figure 2. Debiasing Prospect Effect 13,000. (PE) (E) 506,111. (DQ) 496,666. 492,222. (PE) -4,444,5 -9,444. (DQ) 10,000. 541,000 (E) 551,000 564,000 Positive Information . Negative Information ingsAo characteristic is added, the prospect effect is mitigated. It can be concluded that the additional pieces of information about the Quantitative Description (QD) and Predicted Earnings (PE) both mitigate the prospect effect in earnings announcements with different magnitudes. The debiased effect occurs because additional information that is integrated with the previous information will make the investorsAo belief stronger, and it will decrease the irrational psychological effect. Clear quantitative description and predicted earnings information, disclosed in the earningsAo announcements, would ensure that investors had sufficient information available to them to compute the adjusted earnings, and that is expected to affect the perception of the investors which would then be reflected in their behavior when they make their business decisions. Instead of creating a greater response, additional information about the negative Quantitative Description (DE) over earnings infor mation has a lesser response (Rp9,444. than additional information about a positive Quantitative Description (DE) has (Rp10,000. The magnitude of the debiasing effect is Rp555. (Rp10,000. 00 - Rp9,444. as seen in Figure 2. Similarly, additional information about a negative Predicted Earnings (PE) over earnings information and quantitative description has a lesser response (-Rp4,444. than additional information of a positive Predicted Earnings (PE) has (Rp13,000. The magnitude of the debiasing effect is Rp8,555. (Rp13,000. 00 Ae Rp4,444. as seen in Figure 2. The total debiasing effects is Rp9,111. 10 (Rp555. 55 Rp8,555. The debiasing effect of additional information of Quantitative Description (QD) as backward-looking information is smaller than that of additional information of Predictive Earnings (PE) as forward-looking information. Hartono and Wahyuni The second hypothesis examines the debiasing of the prospect effect by additional multiple pieces of information. Consistent with H2, the adjustment scale of investorsAo evaluations for the positive information group . arnings plus quantitative descriptio. is a little higher than that of investorsAo evaluations for negative earnings. Further, the testing results of the prospect effectAos debiasing for multiple pieces of information show that the adjustment scale of the investorsAo evaluations for the positive group is higher than the adjustment scale of investorsAo evaluations for negative earnings. The result shows that the disclosure of additional pieces of information . uantitative description plus predicted earning. can debias the prospect effect. The findings confirmed the prospect theory (Kahneman and Tversky 1979. Barberis 2. These results for the debiasing of the prospect effect are expected to trigger fresh research into the behavioral aspects of Conclusion and Implication The research results indicate that the prospect effect occurs in the single information and any additional pieces of information in earnings announcements . uantitative description and predicted earning. can mitigate the prospect effectAos bias. Furthermore, the findings indicate that predicted earnings information can mitigate the bias in the prospect effect to a greater degree than quantitative description information can in evaluating a companyAos future performance. Overall, this study supports Hypotheses H1and H2. The first hypothesis tests whether investors evaluate a companyAos performance more negatively when they evaluate negative earnings announcements than they do when they evaluate a positive earnings information disclosure. Consistent with H1, the scale average of investorsAo estimations of earnings for negative earnings information disclosure is higher than the scale average of earnings estimations for a positive information disclosure. This result indicates that the prospect effect occurs in the single information disclosure. The results suggest that predicted earnings information can mitigate the prospect effectAos bias to a greater extent than quantitative description information is able to evalu- Table 6. Summary of the Results Comparing Effect of Adjustment Scale Single Information: Abs(-18,888. > 11,000. Mitigated Explanation - Prospect effect occured, - (H1 supporte. Multiple Information of quantitative description(QD): Abs(-9,444. < 10,000. ,000. 00 -9,444. - The additional information of quantitative description can debias the prospect effect, - (H2 supporte. Multiple Information of quantitative description (QD) predicted earnings (PE): Abs(-4,444. < 13,000. 8,555. ,000. 00 Ae 4,444. - The additional information of quantitative description and predicted earnings can debias the prospect - (H2 supporte. Gadjah Mada International Journal of Business Ae September-December. Vol. No. 3, 2017 ate a companyAos future performance. Prior research, such as the study by Baginski et al. documents that managers often explain their earnings forecasts by linking the forecasted performance to their internal actions and the actions of parties external to the firm. These explanations . r attribution. are potentially important information for investors who engage in strategic analysis of the information in financial statements. Strategic financial analysis involves understanding both a companyAos internal strategies and competencies, and its external competitive and regulatory environment, to generate profitability forecasts (Palepu et al. If the attributions are credible, they can enhance the usefulness of the accompanying earnings forecasts by either providing additional information on known links between factors and profitability, or by identifying additional factors to consider in forecasting profits. This study has important practical implication for firms. Usually, companies are afraid to announce negative information, especially negative earnings information. The reason is because investors will react more irrationally to negative than to positive earn- ings information . he prospect effectAos bia. This will disadvantage the companies by decreasing their stock prices. To mitigate this bias, firms can use additional pieces of information. Forward-looking oriented information, such as predictive earnings information, will better mitigate the prospect effectAos bias than backward-looking oriented information such as quantitative description The limitations of this study are because it used only a small number of participants. This limitation was caused by the difficulty in finding real investors with time to participate in the experiment. The recruitment of the participants was done through cooperation with the stock exchanges, educational institutions, and various relationships. There are some improvements that can be made by future studies, one being to increase the sample size of the participants. Future research can also use web-based experiments using internet technology. Webbased experimentation can allow for participants from various groups with a wide geographical distribution. References