The Joint Dynamics of Asset Returns, Trading Volume and Volatility

The Joint Dynamics of Asset Returns, Trading Volume and Volatility PDF Author: Gavin Conor Boyle
Publisher:
ISBN:
Category : Stock exchanges
Languages : en
Pages : 77

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The Joint Dynamics of Asset Returns, Trading Volume and Volatility

The Joint Dynamics of Asset Returns, Trading Volume and Volatility PDF Author: Gavin Conor Boyle
Publisher:
ISBN:
Category : Stock exchanges
Languages : en
Pages : 77

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Book Description


Volume and the Nonlinear Dynamics of Stock Returns

Volume and the Nonlinear Dynamics of Stock Returns PDF Author: Chiente Hsu
Publisher: Springer Science & Business Media
ISBN: 3642457657
Category : Business & Economics
Languages : en
Pages : 136

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Book Description
This manuscript is about the joint dynamics of stock returns and trading volume. It grew out of my attempt to construct an intertemporal asset pricing model with rational agents which can. explain the relation between volume, volatility and persistence of stock return documented in empirical literature. Most part of the manuscript is taken from my thesis. I wish to express my deep appreciation to Peter Kugler and Benedikt Poetscher, my advisors of the thesis, for their invaluable guidance and support. I wish to thank Gerhard Orosel and Gerhard Sorger for their encouraging and helpful discussions. Finally, my thanks go to George Tauchen who has been generous in giving me the benefit of his numerical and computational experience, in providing me with programs and in his encouragement. Contents 1 Introduction 1 7 2 Efficient Stock Markets Equilibrium Models of Asset Pricing 8 2. 1 2. 1. 1 The Martigale Model of Stock Prices 8 2. 1. 2 Lucas' Consumption Based Asset Pricing Model 9 2. 2 Econometric Tests of the Efficient Market Hypothesis 13 2. 2. 1 Autocorrelation Based Tests 14 16 2. 2. 2 Volatility Tests Time-Varying Expected Returns 25 2. 2. 3 3 The Informational Role of Volume 29 3. 1 Standard Grossman-Stiglitz Model 31 3. 2 The No-Trad Result of the BEO Model 34 A Model with Nontradable Asset 37 3. 3 4 Volume and Volatility of Stock Returns 43 4. 1 Empirical and Numerical Results 45 4.

Trading Volume, Volatility and Return Dynamics

Trading Volume, Volatility and Return Dynamics PDF Author: Leon Zolotoy
Publisher:
ISBN:
Category :
Languages : en
Pages : 36

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Book Description
In this paper we study the dynamic relationship between trading volume, volatility, and stock returns at the international stock markets. First, we examine the role of volume and volatility in the individual stock market dynamics using a sample of ten major developed stock markets. Next, we extend our analysis to a multiple market framework, based on a large sample of cross-listed firms. Our analysis is based on both semi-nonparametric (Flexible Fourier Form) and parametric techniques. Our major findings are as follows. First, we find no evidence of the trading volume affecting the serial correlation of stock market returns, as predicted by Campbell et.al (1993) and Wang (1994). Second, the stock market volatility has a negative and statistically significant impact on the serial correlation of the stock market returns, consistent with the positive feedback trading model of Sentana and Wadhwani (1992). Third, the lagged trading volume is positively related to the stock market volatility, supporting the information flow theory. Fourth, we find the trading volume to have both an economically and statistically significant impact on the price discovery process and the co-movement between the international stock markets. Overall, these findings suggest the importance of the trading volume as an information variable.

Stock Market Volatility

Stock Market Volatility PDF Author: Greg N. Gregoriou
Publisher: CRC Press
ISBN: 1420099558
Category : Business & Economics
Languages : en
Pages : 654

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Book Description
Up-to-Date Research Sheds New Light on This Area Taking into account the ongoing worldwide financial crisis, Stock Market Volatility provides insight to better understand volatility in various stock markets. This timely volume is one of the first to draw on a range of international authorities who offer their expertise on market volatility in devel

Return, Trading Volume, and Market Depth in Currency Futures Markets

Return, Trading Volume, and Market Depth in Currency Futures Markets PDF Author: Ai-ru Meg Cheng
Publisher:
ISBN:
Category :
Languages : en
Pages : 21

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Book Description


Price-Volume Relations of DAX Companies

Price-Volume Relations of DAX Companies PDF Author: Henryk Gurgul
Publisher:
ISBN:
Category :
Languages : en
Pages :

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Book Description
This study provides empirical evidence of the joint dynamics between stock returns and trading volume using stock data of DAX companies. Contemporaneous as well as dynamic interactions are investigated for a period from January 1994 to December 2005 on a daily basis. Our results suggest that there is almost no relationship between stock return levels and trading volume in either direction. We find that trading volume is contemporaneously positively related to return volatility. In addition, we establish that lagged return volatility induces trading volume movements.Finally, we examine dependencies in the tails and find no significant support for the hypothesis of the independence of the maximal values of absolute returns and trading volume.

Macroeconomic News, Stock Turnover, and Volatility Clustering in Daily Stock Returns

Macroeconomic News, Stock Turnover, and Volatility Clustering in Daily Stock Returns PDF Author: Robert A. Connolly
Publisher:
ISBN:
Category :
Languages : en
Pages :

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Book Description
We study volatility clustering in daily stock returns at both the index and firm level over 1985 to 2000. We find that the relation between today's index return shock and next period's volatility decreases when important macroeconomic news is released today and increases with the shock in today's stock market turnover. Collectively, our results suggest that volatility clustering tends to be stronger when there is more uncertainty and disperse beliefs about the market's information signal. Our findings also contribute to a better understanding of the joint dynamics of stock returns and trading volume.

The Dynamic Relation between Stock Returns, Trading Volume, and Volatility

The Dynamic Relation between Stock Returns, Trading Volume, and Volatility PDF Author: Gong-meng Chen
Publisher:
ISBN:
Category :
Languages : en
Pages :

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Book Description
We examine the dynamic relation between returns, volume, and volatility of stock indexes. The data come from nine national markets and cover the period from 1973 to 2000. The results show a positive correlation between trading volume and the absolute value of the stock price change. Granger causality tests demonstrate that for some countries, returns cause volume and volume causes returns. Our results indicate that trading volume contributes some information to the returns process. The results also show persistence in volatility even after we incorporate contemporaneous and lagged volume effects. The results are robust across the nine national markets.

A Dynamic Structural Model for Stock Return Volatility and Trading Volume

A Dynamic Structural Model for Stock Return Volatility and Trading Volume PDF Author: William A. Brock
Publisher:
ISBN:
Category : Stochastic processes
Languages : en
Pages : 46

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Book Description
This paper seeks to develop a structural model that lets data on asset returns and trading volume speak to whether volatility autocorrelation comes from the fundamental that the trading process is pricing or, is caused by the trading process itself. Returns and volume data argue, in the context of our model, that persistent volatility is caused by traders experimenting with different beliefs based upon past profit experience and their estimates of future profit experience. A major theme of our paper is to introduce adaptive agents in the spirit of Sargent (1993) but have them adapt their strategies on a time scale that is slower than the time scale on which the trading process takes place. This will lead to positive autocorrelation in volatility and volume on the time scale of the trading process which generates returns and volume data. Positive autocorrelation of volatility and volume is caused by persistence of strategy patterns that are associated with high volatility and high volume. Thee following features seen in the data: (i) The autocorrelation function of a measure of volatility such as squared returns or absolute value of returns is positive with a slowly decaying tail. (ii) The autocorrelation function of a measure of trading activity such as volume or turnover is positive with a slowly decaying tail. (iii) The cross correlation function of a measure of volatility such as squared returns is about zero for squared returns with past and future volumes and is positive for squared returns with current volumes. (iv) Abrupt changes in prices and returns occur which are hard to attach to 'news.' The last feature is obtained by a version of the model where the Law of Large Numbers fails in the large economy limit

Identifying Common Long-Range Dependence in Volume and Volatility Using High-Frequency Data

Identifying Common Long-Range Dependence in Volume and Volatility Using High-Frequency Data PDF Author: Roman Liesenfeld
Publisher:
ISBN:
Category :
Languages : en
Pages : 22

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Book Description
This paper examines the joint long-run dynamics of trading volume and return volatility in futures contracts on the German stock index DAX using a sample of 5-minute returns and trading volume. Employing robust semiparametric methods of inference on memory parameters, I find that volume and volatility exhibit the same degree of long-memory which is consistent with a mixture-of-distributions (MOD) model in which the latent number of information arrivals follows a long-memory process. However, there is some evidence that volume and volatility are not driven by the same long-memory process suggesting that the MOD model cannot explain the joint long-run dynamics of volatility and volume.