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Market sentiment

Market sentiment, also known as investor attention, is the general prevailing attitude of investors as to anticipated price development in a market.[1] This attitude is the accumulation of a variety of fundamental and technical factors, including price history, economic reports, seasonal factors, and national and world events. If investors expect upward price movement in the stock market, the sentiment is said to be bullish. On the contrary, if the market sentiment is bearish, most investors expect downward price movement. Market participants who maintain a static sentiment, regardless of market conditions, are described as permabulls and permabears respectively. Market sentiment is usually considered as a contrarian indicator: what most people expect is a good thing to bet against. Market sentiment is used because it is believed to be a good predictor of market moves, especially when it is more extreme.[2] Very bearish sentiment is usually followed by the market going up more than normal, and vice versa.[3] A bull market refers to a sustained period of either realized or expected price rises,[4] whereas a bear market is used to describe when an index or stock has fallen 20% or more from a recent high for a sustained length of time.[5]

An investor is bullish when they see upward stock trends and bearish when the market is going down. A bull uses its horns in an upward motion to attack and a bear uses its claws in a downward motion to attack.

Market sentiment is monitored with a variety of technical and statistical methods such as the number of advancing versus declining stocks and new highs versus new lows comparisons. A large share of the overall movement of an individual stock has been attributed to market sentiment.[6] The stock market's demonstration of the situation is often described as all boats float or sink with the tide, in the popular Wall Street phrase "the trend is your friend". In the last decade, investors are also known to measure market sentiment through the use of news analytics, which include sentiment analysis on textual stories about companies and sectors.

Theory of investor attention edit

A particular thread of scientific literature connects results from behavioural finance, changes of investor attention on financial markets, and fundamental principles of asset pricing: Barberis et al. (1998),[7] Barberis & Thaler (2003),[8] and Baker & Wurgler (2007).[9] The authors argue that behavioural patterns of retail investors have a significant impact on market returns. At least five main approaches to measuring investor attention are known today in scientific literature: financial market-based measures, survey-based sentiment indexes, textual sentiment data from specialized on-line resources, Internet search behavior, and non-economic factors.

First approach edit

According to the first approach, investor attention can be approximated with particular financial market-based measures. According to Gervais et al. (2001)[10] and Hou et al. (2009),[11] trading volume is a good proxy for investor sentiment. High (low) trading volume on a particular stock leads to appreciating (depreciating) of its price. Extreme one-day returns are also reported to draw investors’ attention (Barber & Odean (2008)[12]). Noise traders tend to buy (sell) stocks with high (low) returns. Whaley (2001)[13] and Baker & Wurgler (2007)[9] suggest Chicago Board Options Exchange (CBOE) Volatility Index (VIX) as an alternative market sentiment measure. Credit Suisse Fear Barometer (CSFB) is based on prices of zero-premium collars that expire in three months. This index is sometimes used as an alternative to VIX index.[14] The Acertus Market Sentiment Indicator (AMSI) incorporates five variables (in descending order of weight in the indicator): Price/Earnings Ratio (a measure of stock market valuations); price momentum (a measure of market psychology); Realized Volatility (a measure of recent historical risk); High Yield Bond Returns (a measure of credit risk); and the TED spread (a measure of systemic financial risk). Each of these factors provides a measure of market sentiment through a unique lens, and together they may offer a more robust indicator of market sentiment.[15] Closed-end fund discount (the case when net asset value of a mutual fund does not equal to its market price) reported to be possible measure of investor attention (Zweig (1973)[16] and Lee et al. (1991)[17]).

The studies suggest that changes in discounts of closed-end funds are highly correlated with fluctuations in investor sentiment. Brown et al. (2003)[18] investigate daily mutual fund flow as possible measure of investor attention.[19] According to Da et al. (2014),[14] "...individual investors switch from equity funds to bond funds when negative sentiment is high." Dividend premium (the difference between the average book-to-market ratios of dividend paying and not paying stocks) potentially can be a good predictor for investor sentiment (Baker & Wurgler (2004)[20] and Vieira (2011)[21]). Retail investor trades data is also reported to be able to represent investor attention (Kumar & Lee (2006)[22]). The study shows that retail investor transactions "...are systematically correlated — that is, individuals buy (or sell) stocks in concert". Initial public offering (IPO) of a company generates a big amount of information that can potentially be used to proxy investor sentiment. Ljungqvist et al. (2006)[23] and Baker & Wurgler (2007)[9] report IPO first-day returns and IPO volume the most promising candidates for predicting investor attention to a particular stock. It is not surprising that high investments in advertisement of a particular company results in a higher investor attention to corresponding stock (Grullon et al. (2004)[24]). The authors in Chemmanur & Yan (2009)[25] provide an evidence that "...a greater amount of advertising is associated with a larger stock return in the advertising year but a smaller stock return in the year subsequent to the advertising year". Equity issues over total new issues ratio, insider trading data, and other financial indicators are reported in Baker & Wurgler (2007)[9] to be useful in investor attention measurement procedure.

The aforementioned market-based measures have one important drawback. In particular, according to Da et al. (2014):[14] "Although market-based measures have the advantage of being readily available at a relatively high frequency, they have the disadvantage of being the equilibrium outcome of many economic forces other than investor sentiment." In other words, one can never be sure that a particular market-based indicator was driven due to investor attention. Moreover, some indicators can work pro-cyclical. For example, a high trading volume can draw an investor attention. As a result, the trading volume grows even higher. This, in turn, leads to even bigger investor attention. Overall, market-based indicators are playing a very important role in measuring investor attention. However, an investor should always try to make sure that no other variables can drive the result.

Second way edit

The second way to proxy for investor attention can be to use survey-based sentiment indexes. Among most known indexes should be mentioned University of Michigan Consumer Sentiment Index, The Conference Board Consumer Confidence Index, and UBS/Gallup Index of Investor Optimism. The University of Michigan Consumer Sentiment Index is based on at least 500 telephone interviews. The survey contains fifty core questions.[26] The Consumer Confidence Index has ten times more respondents (5000 households). However, the survey consists of only five main questions concerning business, employment, and income conditions. The questions can be answered with only three options: "positive", "negative" or "neutral".[27] A sample of 1000 households with total investments equal or higher than $10,000 are interviewed to construct UBS/Gallup Index of Investor Optimism.[28] Mentioned above survey-based sentiment indexes were reported to be good predictors for financial market indicators (Brown & Cliff (2005)[29]). However, according to Da et al. (2014),[14] using such sentiment indexes can have significant restrictions. First, most of the survey-based data sets are available at weekly or monthly frequency. At the same time, most of the alternative sentiment measures are available at a daily frequency. Second, there is a little incentive for respondents to answer question in such surveys carefully and truthfully (Singer (2002)[30]). To sum up, survey-based sentiment indexes can be helpful in predicting financial indicators. However, the usage of such indexes has specific drawbacks and can be limited in some cases.

Third direction edit

 
In the 1920s, the market sentiment of railway companies was bullish as it was a new market, and investors saw long-term prospects.

Under the third direction, researchers propose to use text mining and sentiment analysis algorithms to extract information about investors’ mood from social networks, media platforms, blogs, newspaper articles, and other relevant sources of textual data (sometimes referred as news analytics). A thread of publications (Barber & Odean (2008),[12] Dougal et al. (2012),[31] and Ahern & Sosyura (2015)[32]) report a significant influence of financial articles and sensational news on behavior of stock prices. It is also not surprising, that such popular sources of news as Wall Street Journal, New York Times or Financial Times have a profound influence on the market. The strength of the impact can vary between different columnists even inside a particular journal (Dougal et al. (2012)[31]). Tetlock (2007)[33] suggests a successful measure of investors’ mood by counting the number of "negative" words in a popular Wall Street Journal column "Abreast of the market". Zhang et al. (2011)[34] and Bollen et al. (2011)[35] report Twitter to be an extremely important source of sentiment data, which helps to predict stock prices and volatility. The usual way to analyze the influence of the data from micro-blogging platforms on behavior of stock prices is to construct special mood tracking indexes.

The easiest way would be to count the number of "positive" and "negative" words in each relevant tweet and construct a combined indicator based on this data. Nasseri et al. (2014)[36] reports the predictive power of StockTwits (Twitter-like platform specialized on exchanging trading-related opinions) data with respect to behavior of stock prices. An alternative, but more demanding, way is to engage human experts to annotate a large number of tweets with the expected stock moves, and then construct a machine learning model for prediction. The application of the event study methodology to Twitter mood shows significant correlation to cumulative abnormal returns (Sprenger et al. (2014),[37] Ranco et al. (2015),[38] Gabrovšek et al. (2017)[39]). Karabulut (2013)[40] reports Facebook to be a good source of information about investors’ mood. Overall, most popular social networks, finance-related media platforms, magazines, and journals can be a valuable source of sentiment data, summarized in Peterson (2016).[41] However, important to notice that it is relatively more difficult to collect such type of data (in most cases a researcher needs a special software). In addition, analysis of such data can also require deep machine learning and data mining knowledge (Hotho et al. (2005)[42]).

Fourth road edit

 
Islamabad Stock Exchange Bull

The fourth road is an important source of information about investor attention is the Internet search behavior of households. This approach is supported by results from Simon (1955),[43] who concludes that people start their decision making process by gathering relevant information. Publicly available data on search volumes for most Internet search services starts from the year 2004. Since that time many authors showed the usefulness of such data in predicting investor attention and market returns (Da et al. (2014),[14] Preis et al. (2013),[44] and Curme et al. (2014)[45]). Most studies are using Google Trends (GT) service in order to extract search volume data and investigate investor attention. The usefulness of Internet search data was also proved based on Yahoo! Corporation data (Bordino et al. (2012)[46]). The application of Internet search data gives promising results in solving different financial problems. The authors in Kristoufek (2013b)[47] discuss the application of GT data in portfolio diversification problem. Proposed in the paper diversification procedure is based on the assumption that the popularity of a particular stock in Internet queries is correlated with the riskiness of this stock. The author reports that such diversification procedure helps significantly improve portfolio returns. Da et al. (2014)[14] and Dimpfl & Jank (2015)[48] investigate a predictive power of GT data for two most popular volatility measures: realized volatility (RV) and CBOE daily market volatility index (VIX). Both studies report positive and significant dependence between Internet search data and volatility measures. Bordino et al. (2012)[46] and Preis et al. (2010)[49] reveal the ability of Internet search data to predict trading volumes in the US stock markets. According to Bordino et al. (2012),[46] "...query volumes anticipate in many cases peaks of trading by one day or more." Some researchers find the usefulness of GT data in predicting volatility on foreign currency market (Smith (2012)[50]). An increasingly important role of Internet search data is admitted in cryptocurrency (e.g. Bitcoin) prices forecasting (Kristoufek (2013a)[51]). Google Trends data is also reported to be a good predictor for daily mutual fund flows. Da et al. (2014)[14] concludes that such type of sentiment data "...has significant incremental predictive power for future daily fund flow innovations of both equity and bond funds." One more promising source of Internet search data is the number of visits of finance-related Wikipedia pages (Wikipedia page statistics[52]) (Moat et al. (2013)[53] and Kristoufek (2013a)[51]). To sum up, the Internet search behavior of households is relatively new and promising proxy for investor attention. Such type of sentiment data does not require additional information from other sources and can be used in scientific studies independently.

Fifth source edit

 
"All boats float or sink with the tide."

Finally the fifth source of investor attention can also depend on some non-economic factors. Every day many non-economic events (e.g. news, weather, health condition, etc.) influence our mood, which, in term, influence the level of our risk aversion and trading behavior. Edmans et al. (2007)[54] discuss the influence of sport events on investors’ trading behavior. The authors report a strong evidence of abnormally negative stock returns after losses in major soccer competitions. The loss effect is also valid after international cricket, rugby, and basketball games. Kaplanski & Levy (2010)[55] investigate the influence of bad news (aviation disasters) on stock prices. The authors conclude that a bad piece of news (e.g. about aviation disaster) can cause significant drop in stock returns (especially for small and risky stocks). The evidence that the number of sunlight minutes in a particular day influence the behavior of a trader is presented in Akhtari (2011)[56] and Hirshleifer & Shumway (2003).[57] The authors conclude that the "sunshine effect" is statistically significant and robust to different model specifications. The influence of temperature on stock returns is discussed in Cao & Wei (2005).[58]

According to the results in the mentioned study, there is a negative dependence between temperature and stock returns on the whole range of temperature (i.e. the returns are higher when the weather is cold). A seasonal affective disorder (SAD) is also known to be a predictor of investors’ mood (Kamstra et al. (2003)[59]). This is an expected result because SAD incorporates the information about weather conditions. Some researchers go even further and reveal the dependence between lunar phases and stock market returns (Yuan et al. (2006)[60]). According to Dichev & Janes (2001):[61] "...returns in the 15 days around new moon dates are about double the returns in the 15 days around full moon dates". Even geomagnetic activity is reported to have an influence (negatively correlated) on stock returns (C. Robotti (2003).[62] To sum up, non-economic events have a significant influence on trader's behavior. An investor would expect high market returns on a sunny, but cool day, fifteen days around a new moon, with no significant geomagnetic activity, preferably the day after a victory on a significant sport event. In most cases such data should be treated as supplemental in measuring investor attention, but not as totally independent one.

Currency markets edit

Additional indicators exist to measure the sentiment specifically on Forex markets. Though the Forex market is decentralized (not traded on a central exchange),[63] various retail Forex brokerage firms publish positioning ratios (similar to the Put/Call ratio) and other data regarding their own clients' trading behavior.[64][65][66] Since most retail currency traders are unsuccessful,[67] measures of Forex market sentiment are typically used as contrarian indicators.[68] Some researchers report Internet search data (e.g. Google Trends) to be useful in predicting volatility on foreign currency markets.[50] Internet search data and (relevant) Wikipedia page views data are reported to be useful in cryptocurrency (e.g. Bitcoin) prices forecasting.[51]

See also edit

References edit

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  68. ^ "Sentiment Trading White Paper" (PDF).

market, sentiment, bullish, redirects, here, album, herb, alpert, tijuana, brass, bullish, album, also, known, investor, attention, general, prevailing, attitude, investors, anticipated, price, development, market, this, attitude, accumulation, variety, fundam. Bullish redirects here For the album by Herb Alpert and the Tijuana Brass see Bullish album Market sentiment also known as investor attention is the general prevailing attitude of investors as to anticipated price development in a market 1 This attitude is the accumulation of a variety of fundamental and technical factors including price history economic reports seasonal factors and national and world events If investors expect upward price movement in the stock market the sentiment is said to be bullish On the contrary if the market sentiment is bearish most investors expect downward price movement Market participants who maintain a static sentiment regardless of market conditions are described as permabulls and permabears respectively Market sentiment is usually considered as a contrarian indicator what most people expect is a good thing to bet against Market sentiment is used because it is believed to be a good predictor of market moves especially when it is more extreme 2 Very bearish sentiment is usually followed by the market going up more than normal and vice versa 3 A bull market refers to a sustained period of either realized or expected price rises 4 whereas a bear market is used to describe when an index or stock has fallen 20 or more from a recent high for a sustained length of time 5 An investor is bullish when they see upward stock trends and bearish when the market is going down A bull uses its horns in an upward motion to attack and a bear uses its claws in a downward motion to attack Market sentiment is monitored with a variety of technical and statistical methods such as the number of advancing versus declining stocks and new highs versus new lows comparisons A large share of the overall movement of an individual stock has been attributed to market sentiment 6 The stock market s demonstration of the situation is often described as all boats float or sink with the tide in the popular Wall Street phrase the trend is your friend In the last decade investors are also known to measure market sentiment through the use of news analytics which include sentiment analysis on textual stories about companies and sectors Contents 1 Theory of investor attention 1 1 First approach 1 2 Second way 1 3 Third direction 1 4 Fourth road 1 5 Fifth source 2 Currency markets 3 See also 4 ReferencesTheory of investor attention editA particular thread of scientific literature connects results from behavioural finance changes of investor attention on financial markets and fundamental principles of asset pricing Barberis et al 1998 7 Barberis amp Thaler 2003 8 and Baker amp Wurgler 2007 9 The authors argue that behavioural patterns of retail investors have a significant impact on market returns At least five main approaches to measuring investor attention are known today in scientific literature financial market based measures survey based sentiment indexes textual sentiment data from specialized on line resources Internet search behavior and non economic factors First approach edit According to the first approach investor attention can be approximated with particular financial market based measures According to Gervais et al 2001 10 and Hou et al 2009 11 trading volume is a good proxy for investor sentiment High low trading volume on a particular stock leads to appreciating depreciating of its price Extreme one day returns are also reported to draw investors attention Barber amp Odean 2008 12 Noise traders tend to buy sell stocks with high low returns Whaley 2001 13 and Baker amp Wurgler 2007 9 suggest Chicago Board Options Exchange CBOE Volatility Index VIX as an alternative market sentiment measure Credit Suisse Fear Barometer CSFB is based on prices of zero premium collars that expire in three months This index is sometimes used as an alternative to VIX index 14 The Acertus Market Sentiment Indicator AMSI incorporates five variables in descending order of weight in the indicator Price Earnings Ratio a measure of stock market valuations price momentum a measure of market psychology Realized Volatility a measure of recent historical risk High Yield Bond Returns a measure of credit risk and the TED spread a measure of systemic financial risk Each of these factors provides a measure of market sentiment through a unique lens and together they may offer a more robust indicator of market sentiment 15 Closed end fund discount the case when net asset value of a mutual fund does not equal to its market price reported to be possible measure of investor attention Zweig 1973 16 and Lee et al 1991 17 The studies suggest that changes in discounts of closed end funds are highly correlated with fluctuations in investor sentiment Brown et al 2003 18 investigate daily mutual fund flow as possible measure of investor attention 19 According to Da et al 2014 14 individual investors switch from equity funds to bond funds when negative sentiment is high Dividend premium the difference between the average book to market ratios of dividend paying and not paying stocks potentially can be a good predictor for investor sentiment Baker amp Wurgler 2004 20 and Vieira 2011 21 Retail investor trades data is also reported to be able to represent investor attention Kumar amp Lee 2006 22 The study shows that retail investor transactions are systematically correlated that is individuals buy or sell stocks in concert Initial public offering IPO of a company generates a big amount of information that can potentially be used to proxy investor sentiment Ljungqvist et al 2006 23 and Baker amp Wurgler 2007 9 report IPO first day returns and IPO volume the most promising candidates for predicting investor attention to a particular stock It is not surprising that high investments in advertisement of a particular company results in a higher investor attention to corresponding stock Grullon et al 2004 24 The authors in Chemmanur amp Yan 2009 25 provide an evidence that a greater amount of advertising is associated with a larger stock return in the advertising year but a smaller stock return in the year subsequent to the advertising year Equity issues over total new issues ratio insider trading data and other financial indicators are reported in Baker amp Wurgler 2007 9 to be useful in investor attention measurement procedure The aforementioned market based measures have one important drawback In particular according to Da et al 2014 14 Although market based measures have the advantage of being readily available at a relatively high frequency they have the disadvantage of being the equilibrium outcome of many economic forces other than investor sentiment In other words one can never be sure that a particular market based indicator was driven due to investor attention Moreover some indicators can work pro cyclical For example a high trading volume can draw an investor attention As a result the trading volume grows even higher This in turn leads to even bigger investor attention Overall market based indicators are playing a very important role in measuring investor attention However an investor should always try to make sure that no other variables can drive the result Second way edit The second way to proxy for investor attention can be to use survey based sentiment indexes Among most known indexes should be mentioned University of Michigan Consumer Sentiment Index The Conference Board Consumer Confidence Index and UBS Gallup Index of Investor Optimism The University of Michigan Consumer Sentiment Index is based on at least 500 telephone interviews The survey contains fifty core questions 26 The Consumer Confidence Index has ten times more respondents 5000 households However the survey consists of only five main questions concerning business employment and income conditions The questions can be answered with only three options positive negative or neutral 27 A sample of 1000 households with total investments equal or higher than 10 000 are interviewed to construct UBS Gallup Index of Investor Optimism 28 Mentioned above survey based sentiment indexes were reported to be good predictors for financial market indicators Brown amp Cliff 2005 29 However according to Da et al 2014 14 using such sentiment indexes can have significant restrictions First most of the survey based data sets are available at weekly or monthly frequency At the same time most of the alternative sentiment measures are available at a daily frequency Second there is a little incentive for respondents to answer question in such surveys carefully and truthfully Singer 2002 30 To sum up survey based sentiment indexes can be helpful in predicting financial indicators However the usage of such indexes has specific drawbacks and can be limited in some cases Third direction edit nbsp In the 1920s the market sentiment of railway companies was bullish as it was a new market and investors saw long term prospects Under the third direction researchers propose to use text mining and sentiment analysis algorithms to extract information about investors mood from social networks media platforms blogs newspaper articles and other relevant sources of textual data sometimes referred as news analytics A thread of publications Barber amp Odean 2008 12 Dougal et al 2012 31 and Ahern amp Sosyura 2015 32 report a significant influence of financial articles and sensational news on behavior of stock prices It is also not surprising that such popular sources of news as Wall Street Journal New York Times or Financial Times have a profound influence on the market The strength of the impact can vary between different columnists even inside a particular journal Dougal et al 2012 31 Tetlock 2007 33 suggests a successful measure of investors mood by counting the number of negative words in a popular Wall Street Journal column Abreast of the market Zhang et al 2011 34 and Bollen et al 2011 35 report Twitter to be an extremely important source of sentiment data which helps to predict stock prices and volatility The usual way to analyze the influence of the data from micro blogging platforms on behavior of stock prices is to construct special mood tracking indexes The easiest way would be to count the number of positive and negative words in each relevant tweet and construct a combined indicator based on this data Nasseri et al 2014 36 reports the predictive power of StockTwits Twitter like platform specialized on exchanging trading related opinions data with respect to behavior of stock prices An alternative but more demanding way is to engage human experts to annotate a large number of tweets with the expected stock moves and then construct a machine learning model for prediction The application of the event study methodology to Twitter mood shows significant correlation to cumulative abnormal returns Sprenger et al 2014 37 Ranco et al 2015 38 Gabrovsek et al 2017 39 Karabulut 2013 40 reports Facebook to be a good source of information about investors mood Overall most popular social networks finance related media platforms magazines and journals can be a valuable source of sentiment data summarized in Peterson 2016 41 However important to notice that it is relatively more difficult to collect such type of data in most cases a researcher needs a special software In addition analysis of such data can also require deep machine learning and data mining knowledge Hotho et al 2005 42 Fourth road edit nbsp Islamabad Stock Exchange BullThe fourth road is an important source of information about investor attention is the Internet search behavior of households This approach is supported by results from Simon 1955 43 who concludes that people start their decision making process by gathering relevant information Publicly available data on search volumes for most Internet search services starts from the year 2004 Since that time many authors showed the usefulness of such data in predicting investor attention and market returns Da et al 2014 14 Preis et al 2013 44 and Curme et al 2014 45 Most studies are using Google Trends GT service in order to extract search volume data and investigate investor attention The usefulness of Internet search data was also proved based on Yahoo Corporation data Bordino et al 2012 46 The application of Internet search data gives promising results in solving different financial problems The authors in Kristoufek 2013b 47 discuss the application of GT data in portfolio diversification problem Proposed in the paper diversification procedure is based on the assumption that the popularity of a particular stock in Internet queries is correlated with the riskiness of this stock The author reports that such diversification procedure helps significantly improve portfolio returns Da et al 2014 14 and Dimpfl amp Jank 2015 48 investigate a predictive power of GT data for two most popular volatility measures realized volatility RV and CBOE daily market volatility index VIX Both studies report positive and significant dependence between Internet search data and volatility measures Bordino et al 2012 46 and Preis et al 2010 49 reveal the ability of Internet search data to predict trading volumes in the US stock markets According to Bordino et al 2012 46 query volumes anticipate in many cases peaks of trading by one day or more Some researchers find the usefulness of GT data in predicting volatility on foreign currency market Smith 2012 50 An increasingly important role of Internet search data is admitted in cryptocurrency e g Bitcoin prices forecasting Kristoufek 2013a 51 Google Trends data is also reported to be a good predictor for daily mutual fund flows Da et al 2014 14 concludes that such type of sentiment data has significant incremental predictive power for future daily fund flow innovations of both equity and bond funds One more promising source of Internet search data is the number of visits of finance related Wikipedia pages Wikipedia page statistics 52 Moat et al 2013 53 and Kristoufek 2013a 51 To sum up the Internet search behavior of households is relatively new and promising proxy for investor attention Such type of sentiment data does not require additional information from other sources and can be used in scientific studies independently Fifth source edit nbsp All boats float or sink with the tide Finally the fifth source of investor attention can also depend on some non economic factors Every day many non economic events e g news weather health condition etc influence our mood which in term influence the level of our risk aversion and trading behavior Edmans et al 2007 54 discuss the influence of sport events on investors trading behavior The authors report a strong evidence of abnormally negative stock returns after losses in major soccer competitions The loss effect is also valid after international cricket rugby and basketball games Kaplanski amp Levy 2010 55 investigate the influence of bad news aviation disasters on stock prices The authors conclude that a bad piece of news e g about aviation disaster can cause significant drop in stock returns especially for small and risky stocks The evidence that the number of sunlight minutes in a particular day influence the behavior of a trader is presented in Akhtari 2011 56 and Hirshleifer amp Shumway 2003 57 The authors conclude that the sunshine effect is statistically significant and robust to different model specifications The influence of temperature on stock returns is discussed in Cao amp Wei 2005 58 According to the results in the mentioned study there is a negative dependence between temperature and stock returns on the whole range of temperature i e the returns are higher when the weather is cold A seasonal affective disorder SAD is also known to be a predictor of investors mood Kamstra et al 2003 59 This is an expected result because SAD incorporates the information about weather conditions Some researchers go even further and reveal the dependence between lunar phases and stock market returns Yuan et al 2006 60 According to Dichev amp Janes 2001 61 returns in the 15 days around new moon dates are about double the returns in the 15 days around full moon dates Even geomagnetic activity is reported to have an influence negatively correlated on stock returns C Robotti 2003 62 To sum up non economic events have a significant influence on trader s behavior An investor would expect high market returns on a sunny but cool day fifteen days around a new moon with no significant geomagnetic activity preferably the day after a victory on a significant sport event In most cases such data should be treated as supplemental in measuring investor attention but not as totally independent one Currency markets editAdditional indicators exist to measure the sentiment specifically on Forex markets Though the Forex market is decentralized not traded on a central exchange 63 various retail Forex brokerage firms publish positioning ratios similar to the Put Call ratio and other data regarding their own clients trading behavior 64 65 66 Since most retail currency traders are unsuccessful 67 measures of Forex market sentiment are typically used as contrarian indicators 68 Some researchers report Internet search data e g Google Trends to be useful in predicting volatility on foreign currency markets 50 Internet search data and relevant Wikipedia page views data are reported to be useful in cryptocurrency e g Bitcoin prices forecasting 51 See also editAcertus Market Sentiment Indicator AMSI Market trend Pivot point stock market Sentiment analysis Behavioral economics Behavioral portfolio theory Behavioral StrategyReferences edit Market Sentiment Definition Investopedia Sentiment A Meaningful Shift For Stock Bulls Seeking Alpha Seeking Alpha AAII The American Association of Individual Investors American Association of Individual Investors Bullish vs Bearish Sentiment Stockgeist 2022 02 15 Retrieved 2022 06 14 The S amp P 500 is in a bear market here s what that means ABC News Retrieved 2022 06 14 Thomas Dorsey Point and Figure Charting Sentiment has a 66 influence on the overall movement of an individual stock Barberis Nicholas Shleifer Andrei Vishny Robert W 1998 A Model of Investor Sentiment Journal of Financial Economics 49 3 307 343 doi 10 1016 S0304 405X 98 00027 0 S2CID 154782800 Barberis Nicholas Thaler Richard 2003 01 01 Finance BT Handbook of the Economics of ed Financial Markets and Asset Pricing Vol 1 Part B Elsevier pp 1053 1128 doi 10 1016 S1574 0102 03 01027 6 ISBN 9780444513632 a b c d Baker Malcolm Wurgler Jeffrey 2007 Investor Sentiment in the Stock Market Journal of Economic Perspectives 21 2 129 152 doi 10 1257 jep 21 2 129 Gervais Simon Kaniel Ron Mingelgrin Dan H 2001 06 01 The High Volume Return Premium The Journal of Finance 56 3 877 919 CiteSeerX 10 1 1 540 2997 doi 10 1111 0022 1082 00349 ISSN 1540 6261 Hou Kewei Xiong Wei Peng Lin 2009 01 16 A Tale of Two Anomalies The Implications of Investor Attention for Price and Earnings Momentum Rochester NY Social Science Research Network SSRN 976394 a href Template Cite journal html title Template Cite journal cite journal a Cite journal requires journal help a b Barber Brad M Odean Terrance 2008 04 01 All That Glitters The Effect of Attention and News on the Buying Behavior of Individual and Institutional Investors Review of Financial Studies 21 2 785 818 doi 10 1093 rfs hhm079 ISSN 0893 9454 Whaley Robert E 2000 03 01 The Investor Fear Gauge The Journal of Portfolio Management 26 3 12 17 doi 10 3905 jpm 2000 319728 ISSN 0095 4918 S2CID 154699901 a b c d e f g Da Zhi Engelberg Joseph Gao Pengjie 2014 10 17 The Sum of All FEARS Investor Sentiment and Asset Prices Review of Financial Studies 28 1 1 32 doi 10 1093 rfs hhu072 ISSN 0893 9454 A New Market Sentiment Indicator Journal of Indexes Zweig Martin E 1973 An Investor Expectations Stock Price Predictive Model Using Closed End Fund Premiums The Journal of Finance 28 1 67 78 doi 10 1111 j 1540 6261 1973 tb01346 x 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2012 06 01 Google Internet search activity and volatility prediction in the market for foreign currency Finance Research Letters 9 2 103 110 doi 10 1016 j frl 2012 03 003 a b c Kristoufek Ladislav 2013 01 01 Bitcoin meets Google Trends and Wikipedia quantifying the relationship between phenomena of the Internet era Scientific Reports 3 3415 Bibcode 2013NatSR 3E3415K doi 10 1038 srep03415 ISSN 2045 2322 PMC 3849639 PMID 24301322 Pageviews Analysis tools wmflabs org Retrieved 2016 04 26 Moat Helen Susannah Curme Chester Avakian Adam Kenett Dror Y Stanley H Eugene Preis Tobias 2013 05 08 Quantifying Wikipedia Usage Patterns Before Stock Market Moves Scientific Reports 3 1801 Bibcode 2013NatSR 3E1801M doi 10 1038 srep01801 ISSN 2045 2322 PMC 3647164 Edmans Alex Garcia Diego Norli Oyvind 2007 08 01 Sports Sentiment and Stock Returns The Journal of Finance 62 4 1967 1998 CiteSeerX 10 1 1 323 2017 doi 10 1111 j 1540 6261 2007 01262 x ISSN 1540 6261 Kaplanski Guy Levy Haim 2010 02 01 Sentiment and stock prices The case of aviation disasters Journal of Financial Economics 95 2 174 201 doi 10 1016 j jfineco 2009 10 002 S2CID 141066554 Akhtari Mitra 29 May 2011 Reassessment of the Weather Effect Stock Prices and Wall Street Weather Undergraduate Economic Review 7 1 Hirshleifer David Shumway Tyler 2003 01 01 Good Day Sunshine Stock Returns and the Weather The Journal of Finance 58 3 1009 1032 doi 10 1111 1540 6261 00556 JSTOR 3094570 Cao Melanie Wei Jason 2005 06 01 Stock market returns A note on temperature anomaly Journal of Banking amp Finance 29 6 1559 1573 doi 10 1016 j jbankfin 2004 06 028 Kamstra Mark J Kramer Lisa A Levi Maurice D 2003 10 01 Winter Blues A SAD Stock Market Cycle Rochester NY Social Science Research Network SSRN 208622 a href Template Cite journal html title Template Cite journal cite journal a Cite journal requires journal help Zheng Lu Yuan Kathy Zhu Qiaoqiao 2001 09 05 Are Investors Moonstruck Lunar Phases and Stock Returns Rochester NY Social Science Research Network SSRN 283156 a href Template Cite journal html title Template Cite journal cite journal a Cite journal requires journal help Dichev Ilia D Janes Troy D 2001 08 01 Lunar Cycle Effects in Stock Returns Rochester NY Social Science Research Network SSRN 281665 a href Template Cite journal html title Template Cite journal cite journal a Cite journal requires journal help Robotti Cesare Krivelyova Anya 2003 10 01 Playing the Field Geomagnetic Storms and the Stock Market Rochester NY Social Science Research Network SSRN 375702 a href Template Cite journal html title Template Cite journal cite journal a Cite journal requires journal help Decentralized Market Definition Oanda Forex Open Position Ratios SWFX Sentiment Index ForexBold Realtime Brokers Sentiment Index Finberg Ron 2014 05 18 Final Q1 2014 US Retail Forex Profitability Report forexmagnates com Forex Magnates Retrieved 19 July 2014 Sentiment Trading White Paper PDF Retrieved from https en wikipedia org w index php title Market sentiment amp oldid 1208527465, wikipedia, wiki, book, books, library,

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