Gadjah Mada International Journal of Business Vol. No. 1 (January - April 2. : 27 - 44 Detecting the Existence of Herding Behavior in Intraday Data: Evidence from the Indonesia Stock Exchange Setiyono Faculty Economics and Business. Universitas Gadjah Mada. Indonesia Eduardus Tandelilin Faculty Economics and Business. Universitas Gadjah Mada. Indonesia Jogiyanto Hartono Faculty Economics and Business. Universitas Gadjah Mada. Indonesia Mamduh M. Hanafi Faculty Economics and Business. Universitas Gadjah Mada. Indonesia Abstract: This study attempts to investigate the issue of the existence of institutional herding in the stock market. The existence is detected in the intraday trade data from the Indonesia Stock Exchange (IDX) during up, down, and stable market condition over the period 2003-2005. By using the model of Lakonishok et al. , it is found that the intensity of the existence of institutional herding at the IDX, on average, is 8. 4 percent. Institutional investors do not seem to lead their transactions in a certain characteristic of stock. Most of them follow positive-feedback trading strategy while others follow negative-feedback trading strategy. This study also found that the existence of herd behavior at the IDX did not destabilize the market price in a subsequent period. Abstrak: Studi ini mencoba meneliti isu keberadaan perilaku pengikutan investor institusional di pasar Keberadaannya dideteksi dalam data perdagangan intraharian dari Bursa Efek Indonesia (BEI) selama kondisi pasar naik, turun dan pasar stabil pada perioda 2003-2005. Dengan menggunakan model Lakonishok et al. , ditemukan bahwa intensitas keberadaan perilaku pengikutan institusional di BEI rata-rata adalah 8,4 persen. Investor institusional nampaknya tidak mengarahkan perdagangan mereka dalam saham berkarakteristik tertentu. Sebagian besar dari mereka mengikuti strategi perdagangan umpan balik positif, sementara yang lainnya mengikuti strategi perdagangan umpan balik negatif. Studi ini juga menemukan bahwa keberadaan perilaku pengikutan di BEI tidak mengacaukan harga pasar saham pada perioda berikutnya. Keywords: destabilize. herd behavior. stock market price Corresponding authors. E-mail: stynahmad@yahoo. ISSN: 1141-1128 http://w. Setiyono et al. Introduction Since the beginning of the 1990s herding has already been empirically identified to exist in the stock markets both in developed countries such as U. Japan. Australia and in developing countries such as India and Indonesia. Herding is shown to be a pattern of mass behavior that results from the interactions among individuals. This behavior was formerly assumed to occur only when the market was in a condition of information asymmetry and highly volatility (Alchian 1. , as would happened when an economy was in crisis and when a market was fluctuating extremely. Nevertheless, such behavior is also found when the market is in a stable condition. Hwang and Salmon . surprisingly found that the occurrence of this behavior is more frequent during a stable market than during a market under pressure. As said by Hwang and Salmon . , a market cannot be free from the herding behavior, and the issue surrounding this behavior concerns its changing intensity from time to So it is reasonable to detect the existence of herding behavior in whatever market condition. The existence of herding behavior of both domestic and foreign investors at the Indonesia Stock Exchange. IDX . x-JSX) has been detected using daily data by Neal et al. and Bowe and Domuta . during the period of Asian crisis in 1997. The studies also found that both domestic and foreign investors engaged in herding behavior, and the existence did not destabilize the market prices of the stocks during the subsequent This research is intended to detect the existence of the herding behavior at the IDX with a number of differences especially concerning the period, subject, and type of the data used. This research focuses on the institutional investorsAo behavior. The subject is chosen due to the fact that this type of investor has been proven to have order in the strategy of trading i. trading by following the herd (Sias 2. The existence of the herding behavior of the institutional investors, in this research, is detected during a long period of time either when the market condition was rising, falling, or steady. That long period of time enables an observation to be made of the changes of intensity of the herding from time to time. This research also observes whether the herding is directed at securities with similar characteristics and whether the institutional investors follow trends or follow both positive and negative feedback-trading strategies. This kind of investor is often suspected as being informed-traders who tend to follow the trend and follow themselves, besides herding with each other, inside and outside of the securities with similar characteristics (Sias 2001. and Chakravarty 2. Furthermore, this research also observes what the tendency of the stocksAo market prices is during the period after the stocks are traded with the herding. During the period 2003-2005 at the IDX, based on the model of Lakonishok et . , it was found that the intensity of institutional herding was 8. 4 percent on average. The intensity of the herding initiated by the sellers was stronger than that initiated by the buyers. Those institutional traders were not obviously directed at the stocks with certain characteristics . isks, company size, and past performanc. Some institutional investors followed the positive-feedback trading strategy and some others followed the negative-feedback trading strategy. The intensity of the herding varied in accordance with the passing time, and consistently in line with the findings of Hwang and Salmon . Gadjah Mada International Journal of Business - January-April. Vol. No. 1, 2013 which say that the stronger intensity tends to occur when the market is more stable. Abnormal returns within the subsequent period was found to be non-monotonic. therefore, it cannot necessarily be said that it was evidence of price reversal as the consequence of the institutional investors choosing the herding strategy in their stock trading. The remainder of this is organized as follows. Part B explains the literature review and hypothesis on institutional herding, and the effects of herding on subsequential Part C presents the research method containing the reports on data and samples, herding measurement, and means difference The empirical testing along with its results is presented in Part D. Part E contains the conclusion. Literature Review and Hypotheses Herding Models From a rational viewpoint, the existence of herding behavior in a stock market can be explained through one or more of three mechanisms: informational externality, payoff externality, and reputation or compensation (Devenov and Welch 1. Those three mechanisms, which become the reasons why an individual behaves in that way in decision making, can be separately explained by using three models of rational herding: . informational based herding, . informational acquisition herding and . reputation and compensation based herding. Informational Based Herding When decision-making is complemented by a volatile condition and imperfect information, an information transmission be- tween individuals is needed to increase the knowledge about the environment condition that affects a decision making. Herding behavior is often chosen to obtain the effect of informational externality. Considering that herding behavior can be carried out by observing the interacting individuals, an information transmission is then assumed to have already occurred. Furthermore, as this herding model sees that inter-individual learning in information searching as being important, therefore, the informational based herding model is also called a social learning model. Banerjee . calls this social learning model herd behavior and Bikhchandani et . call it informational cascades. This model is constructed based on the assumption that an individual only receives private signals and action signals of the predecessors, but cannot learn private signals and the past payoffs of the predecessors. According to this model, herding behavior occurs when an individual can observe in sequential trading the predecessorAos actions, and then he makes a decision or acts by imitating the predecessorAos actions without considering the private information he has. In the beginning, a social learning model ignores the importance of verbal communication. This model only admits that information obtained by observing someone elseAos actions is more credible. in other words, actions speak louder than words. Consequently, this results in an inefficient decision. The opinion on this old herding model then changes because the behavior involving observing the actions of other interacting individuals, basically, involves a process of direct communication and discussion among individuals. Automatically, an extensive information transmission may occur and the amount of information owned by a group increases. Setiyono et al. In other words, a verbal communication becomes very important in the process of information transmission. The social learning model taking verbal communication as something very important is also called a social learning model through a conversation or word-of-mouth learning model. With an assumption that there are communications and discussions in a decisionmaking process, an individual is considered able to observe not only actions but also the past payoff (Ellison and Fudenberg 1993, 1995. and Banerjee and Fudenberg 2. and the predecessorAos private signals (Bikhchandani et al. Based on this assumption, the decision made with herding is Moreover, a more accurate decision will be achieved if the payoff resulting from a certain action can observed in the next period (Cao and Hirshleifer 2. Informational Acquisition Herding Herding behavior can also probably be explained by the existence of the payoff externality effect, which is a payoff increase as the result of the increasing number of other investors conducting the same actions. The effects can be shown when all of the informed investors receive information at the same time and decide to direct either the selling or buying to similar assets. The philosophical basis of this behavior model is that an informed investor will become better-off only when trading by following information sources used by other informed investors but by ignoring fundamental information he has already had. This herding model emphasizing the payoff externality effects is proposed by Froot et al. and Hirshleifer et al. and is named informational acquisition herding. This model counts the differences when information is attained by informed investors. The market, whose investors receive information at different times, has a fundamentally different balance compared to the market whose investors receive simultaneous information. In that kind of market, the more aggressive informed investors will enjoy a larger profit than the late informed investors will. In order to also get profit, the late informed investors apply a strategy of following the behavior of the earlier informed investors. simple words, this model states that informed investors can follow each other when trading in a stock market. Reputation and Compensation Based Herding A personal stake in herding behavior comes up when there is no perfect information in the market. In such a condition, an investor may or may not follow another investorAos action due to a vested interest, for example to keep or achieve reputation, career, or certain compensation. Herding behavior driven by a personal stake on reputation has been identified by Scharfstein and Stein . Zwiebel . and Prendergast and Stole . This model is based on a notion that in a certain situation a manager will follow other managersAo investment decisions by ignoring his private information when putting his reputation or career on stake. Unlike the arguments of reputation based herding theory. Brennan . emphasizes the importance of compensation in the contract making between the agent and the principal as the basis for developing the theory of herding. The idea that a principal may deal with an agentAos uncertainty of ability in making a right decision becomes the basis for developing this herding model. Empirical evidence supports the theory is shown by Maug and Naik . , stating that the performance rules, such as incentive for good Gadjah Mada International Journal of Business - January-April. Vol. No. 1, 2013 performing agents . o reduce any agency conflict. , explicitly set by the principal can bring about herding behavior in the agents. The informed agents may ignore their private information and follow the other probably uninformed agents in order to comply with the rules set by the principals. Institutional Investors Generally, institutional investors are the informed traders who prefer to engage in herding in their stock trading. It means that these people follow each other in trading the same stocks. Moreover, they also follow the trend or themselves in trading the same stocks (Chakravarty 2001. and Sias 2. this research, it is a general hypothesis that institutional investors prefer to engage in herding. The literature review presented in this part aims to give explanation as a theoretical basis in developing specific hypotheses, triggered by the previous general hypothesis. The Existence of Institutional Herding Observing the institutional herding behavior is not generally conducted when the market is in a state of high uncertainty, even though Patterson and Sharma . keep choosing this condition. These behaviors are found in various markets such as in U. S, by Lakonishok et al. Wermers . , and Jones et al. , in Japan by Iihara et . and Hanafi . , and in India by Batra . In the U. S stock market within different periods the existence of herding with different intensity is found. Lakonishok et al. find that the intensity reaches 2. percent average, while Wermers . and Jones et al. , find each of 3. 4 and 1. What has been said by Hwang and Salmon . can possibly be true that a market is not perfectly free from the existence of herding. During a certain period, the intensity can possibly be higher, similar to, or lower than another period. It is assumed that the existence of herding is not in line with the market uncertainty, or its existence is not positively related to the market volatility. It is hypothesized that the institutional investors engage in herding when trading stocks at the IDX, and the intensity can change over time. The Herding Towards the Security Characteristics It is assumed that the institutional investors tend to trade stocks having similar characteristics. Falkenstein . and Gompers and Metrick . have observed the demand of stocks by institutional investors based on various characteristics such as price per share, liquidity, firm size, the number of papers mentioning the names of certain companies, the length of period of the companies listed on the market, return volatility . evel of ris. , book to market value ratio, and the past performance, etc. This research focuses on some variables of the stocksAo characteristics, i. the level of risk, past performance, and firm size. Similar findings have been shown by Falkenstein . and Gompers and Metrick . that institutional investors prefer more risky Nevertheless, the preference of institutional investors towards smaller stocks and good past performance found by Falkenstein . cannot be found in the research of Gompers and Metrick . According to the study of Gompers and Metrick . , institutional investors prefer larger stocks with bad past performance. Despite the con- Setiyono et al. tradiction between these two findings concerning the investorsAo preference towards the size of the firm and the past performance, the previous researches . ee Lakonishok et al. Wermers 1999. and Sias 2. support the idea that institutional investors prefer the smaller companiesAo stocks with good past The stocks with certain characteristics . isk, size, and past performanc. that become the preference are supposed to be traded with a higher intensity of herding than those not becoming the preference. is assumed that the intensity of the existence of herding-buy is higher on the stocks with high-risk, small-size, and good past performance, vice versa. Trend Following The institutional investors often follow the trends in trading at the market. This is found in almost every observed market. They tend to buy the stocks with good past performance and sell those with bad past performance, or follow a positive-feedback trading In the U. S stock market, this kind of trading can be seen in the studies by for example Lakonishok, et al. Jones et . Nofsinger and Sias . and Sias . In Asian stock markets, this strategy can also be found in Japan (Iihara et al. and in India (Batra 2. Besides following the positive-feedback strategy, institutional investors also prefer to adopt a contrarian strategy, that is buying stocks after the price per share decreases and sell them after the price per share increases. (Bozcuk and Lasfer 2. Such a trading strategy is also followed by informed traders and presented in the research by Brennan and Cao . These researches explain that the strategy to follow the trend conducted by in- stitutional investors can possibly be either the positive-feedback trading strategy, or negative-feedback trading/contrarian strategy. is assumed that institutional investors prefer to follow the trend in their trading strategy and prefer to choose a positive-feedback strategy as shown by previous various findings. They buy stocks with good past performance more often than buying stocks with bad past performance. Institutional Investor Return According to Hartono . 8: . , in a market in which some of the investors have more information and some others do not, there will not be any difference between abnormal return enjoyed by some informed investors and that enjoyed by uninformed investors. The informed investors enjoy more abnormal return because the stocks are purchased below the equilibrium price at a certain time, and sold at the new equilibrium price at the next time. Institutional investors are thought to have better capability in searching, analyzing, and interpreting the information (Kraus and Stoll 1972. , along with their sophisticated ways (Gompers and Metrick 2. People also believe that they have much better capability than do individual investors in engaging in diversification. When there is asymmetrical information and some unsophisticated investors, the equilibrium price will be still below the true equilibrium price. The institutional investors who can analyze and interpret the information correctly will respond appropriately by buying the cheap stocks and then selling them when the price shows a new As a result, those institutional investors take the benefit of the abnormal return, while the others do not. Gadjah Mada International Journal of Business - January-April. Vol. No. 1, 2013 Reversal or Continuation When the institutional investors choose a positive-feedback strategy along with their herding behaviors at a certain level, it is assumed that this has the potential to suppress the market to make the prices unstable. This may happen due to the fact that the behavior causes excess demand for certain stocks i. those with good past performance. If the demand is not based on appropriate information, the stock prices are thought to have reversal in the subsequent period. Testing the hypothesis that institutional trading drives the price reversal shows the result that this hypothesis does not have any support from the data observed. Although there is relatively minor evidence on the existence of herding and positive-feedback trading. Lakonishok et al. are incapable of providing sufficient data to support the The continuation of the market price in the subsequent period may reflect the informationally efficient market condition. It is suspected that institutional trading has a valuable information signal. A large instance of trading is thought of as being more informative due to having information signals about the companyAos prospects, than a small trading which is regarded as having less information as to balance the investorAos portfolio (Scholes 1972. and Kraus and Stoll The large buying conducted by institutional traders is suspected of increasing the price because the trading contains private On the other hand, it is also assumed that a large instance of selling causes negative price reaction due to the fact that the trading carries information showing that the prospects of the company are negative (Bozcuk and Lasfer 2. If a large trade has information, the market price is supposed to be influenced by excess demand and excess supply at the previous time. The higher the excess demand on a certain kind of stock, the more the stock market will increase in the subsequent period. and the higher the excess supply on a certain kind of stock, the more the stock market will increase in the subsequent period. Research Method Data and Samples This research tests some data samples of companiesAo stock transactions listed on the Indonesia Stock Exchange (IDX) during the period 2003-2005. The raw data needed for this study are the intradaily data. The general criterion for the companies to be included in these research samples is the data The companies must provide data such as intradaily transaction data to cover dates, prices, volume, kinds of trading, and daily closing stock prices. Two other specific criteria to be fulfilled by the companies concern their being active in making transactions and the existence of block trade. Herding Measurement In this paper, measuring the variable of the existence of herding is conducted by applying the procedure developed by Lakonishok et al. and combined with Wermers . This aims to find out the weekly intensity of institutional . 1 As applied by Kraus, and Stoll . , and Holthausen et al. 7, 1. , the institutional trade is represented by block trade, that is, a trade at least 50. 000 shares. Setiyono et al. herding during the period 2003-2005. The first step is estimating the buyer-initiation and seller-initiation by reducing the present price with the previous price (Lee and Ready The measuring process using a model of Lakonishok et al. is as follows. Determine the proportion of block investors buying stock . in the week . , . = B. , . [ B. , . , . ] . Determine the proportion of block investors buying stocks at IDX in the week . i = N it B( i, t ) Oc i =1 =i N= i N it it Oc B( i, t ) Oc S( i, t ) i 1 =i 1 Determine the adjustment factor AF ( i , t ) = E . ( i , t ) Oe p ( t ) } . Calculate the herding intensity on stock . in the week . H ( i , t ) = p ( i , t ) Oe p ( t ) Oe AF ( i , t ) After the intensity of herding is measured, stocks in a certain period can be divided into three groups, i. stocks bought with herding, stocks sold with herding, and stocks not traded with herding. The stocks not traded with herding are those having negative H. and stocks without herding. To determine whether herding is initiated by buyers (BH) or initiated by sellers (SH), the criteria constructed by Wermers . are applied, with the herding rule: BH . = H. | p. > p. , and SH . = H. | p. < p. Calculate the herding intensity at IDX in the week . by averaging H. that calculated across all samples per week. A number of notations in equation . is defined as follow: is number of block investors buying stock . in the week . is number of block investors selling stock . in the week . is the expected proportion of block investors buying in that week relative to the number of active block investors, it is aggregated from entirely stock. AF. is adjustment factor determined by considering the fact that under null hypothesis of no herding. Nit is number of stocks traded at least one block investor in the week . is the proportion of block investors buying stock . in the week . - p. is excess buying or excess selling of stock . from the average of block buying or block selling in the week . Mean Difference Test Some hypotheses constructed in this paper need the mean difference test technique to test them. The test comparing the average of 2 samples will be applied by using an independent sample test method . -tes. , the average of the pair will be tested by using a pair samples test method, and the average of more than 2 samples will be tested by using the ANOVA method. Gadjah Mada International Journal of Business - January-April. Vol. No. 1, 2013 Result Market Condition The market condition during 20032005, as reflected by the fluctuation of market index returns, can be seen in Figure 1. The market return fluctuated with the highest average rise reaching 13. 90 percent in January 2004, and the lowest average rise reaching 35 percent in February 2004. Meanwhile, the highest average fall reached 8. 30 percent in May 2004, and the lowest average fall was 38 percent in August 2003. Figure 1 shows the market fluctuating This market volatility is shown by the market index returns either above or below the original value. During the research, this market index volatility was signaling a volatility of the market condition and is statistically shown through the value of the standard deviation of 0. 02655 of 0. as the average value. The highest return of the market index is 0. 08391, which occurs in the fourth week of December 2003, and the lowest is 0. 08764, which occurs in the fourth week of April 2004. Of the 153 observed weeks, there are 16 dates showing an extreme market fluctuation. A market is said to be AorisingAo only when, within those dates, it has market returns that stay in the highest 8 . % of the weekly return data distributio. , and is said to be AofallingAo when the market returns stay in the lowest 8. Some statistical values resulting from the description of the market return data indicate that the condition of the market covers quiet market . he market return is minimum close to zer. , up-market . he market return is positiv. , and down-market . he market return is negativ. Therefore, the stock market condition at the IDX is a perfect setting for Figure 1. Market Return Period of Years 2003-2005 Setiyono et al. detecting the herding behavior in price decision making as required by this study. Institutional Herding Existence By using the model of Lakonishok et . , the detection of herding towards 875 stocks found that there were 756 stocks traded by way of herding. Table 1 shows the average intensity of institutional herding 4 percent. The intensity of herding initiated by institutional buyers upon 353 stocks has an average of 7. 7 percent. This is lower than the intensity of herding initiated by institutional sellers, which reaches an average of 9. 1 percent, occurring on 403 stocks. Using quarterly data in U. S, this stronger herding initiated by sellers is also detected by Wermers . The existence of herding found in the IDX daily data is also detected by Neal et al. and Bowe and Domuta . , in which herding is conducted by both domestic and foreign investors. The existence of herding found in this research signals that the behavior of institutional investors at the IDX resemble informed agents. They follow each other in stocks trading. The results of detecting herding at the IDX during the period of the research show that herding behavior takes place not only when the market has an extreme fluctuating condition, but also when the market is stable. The results of the means difference test show that the intensity of herding in a market during an extreme fluctuating condition is lower than that during the time in which the market does not experience extreme changes (Table 2 Panel A). In an extremely changing condition, the average intensity of herding is as much as 0. 066, and it is lower than 0. when the market is not experiencing an extreme change. Table 1. Existence of Institutional Herding Existence of institutional herding is detected from intraday transaction data at IDX period of years 2003-2005. The existence of herding can be expressed as the intensity value estimated by using a Lakonishok et al. The average intensity of herding existence is reported, both for all samples and each trade side: buy-side and sellside. Standard errors are reported along with their means in parentheses. Whether the existence is initiated by buyer (BH) or seller (SH) determined by using a Wermers . Variable Mean . Observation . Herding Intensity Buyer Initiated Herding Intensity Seller Initiated Herding Intensity 084 . Estimation result of the intensity of herding existence for each stock is not shown in this paper. Gadjah Mada International Journal of Business - January-April. Vol. No. 1, 2013 Table 2. Mean difference test results Panel A presents the result of mean difference tests for the intensity of herding between two subsets of market conditions: extremely volatile and stable. Panel B presents the result of mean difference tests for the intensity of herding according to period of time changes: 2003, 2004 and 2005. Standard errors are reported along with their means in parentheses. Existence of herding is expressed as the institutional herding intensity estimated by using a Lakonishok et al. Test Condition Ae Category Mean (S. Extremely volatile 066 . Stable 087 . Panel A. Mean difference test Market condition LeveneAos statistic 019*** t-test 508*** Panel B. ANOVA Year 040 . LeveneAos statistic t-test 112*** *** Significant at the 1 percent level. These findings seem to be evidence supporting the statement of Hwang and Salmon . that there will be no market perfectly free from the existence of herding, and the intensity of its existence varies from time to time. Table 2 Panel B presents the result of ANOVA. At the level of significance of 1 percent, there is a variety of herding intensity during the period of this research. The intensity of herding decreases annually with the highest intensity as high as 0. occurring in 2003, and the lowest intensity 0293 in 2005. Characteristic Based Herding Table 3 shows the results of the mean difference tests for the herding intensity according to stock characteristics: firm size, risk, and past performance of stocks. During the research, the institutional investors at the IDX do not seem to have a monotonous preference with regard to the firm size. The results of the mean difference test that have not been uploaded in this paper show that the herding intensity of buying blocks is higher on small and large stocks, and the herding in- Setiyono et al. tensity of buying blocks is lower on medium There is a similar tendency on the selling side, though it is not statistically significant. These findings seems to justify the previous findings both that the institutional prefers small stocks (Falkenstein 1. , and vice versa (Gompers and Metrick 2. Institutional investors might not have monotonous preference for either large or small stocks. Meanwhile, seen from the characteristics of the risk level, their trading prefers the low risk stocks. This finding is different from the previous findings stating that institutional investors prefer stocks with high variation of return (Falkenstein 1996. and Gompers and Metrick 2. This institutional behavior is rational in order to avoid a relatively big loss if the high-risk stocks are chosen. Table 3. Mean difference test results This table presents the result of mean difference tests for the intensity of herding according to stock characteristics: firm size, risk, and past performance of stock. Standard errors are reported along with their means in parentheses. Existence of herding is expressed as the institutional herding intensity estimated by using a Lakonishok et al. Whether the existence is initiated by buyer (BH) or seller (SH) determined by using a Wermers . BH. = H. > p. , and SH. =H.