Financial Returns: Stylized Features and Statistical Models

Size: px
Start display at page:

Download "Financial Returns: Stylized Features and Statistical Models"

Transcription

1 Financial Returns: Stylized Features and Statistical Models Qiwei Yao Department of Statistics London School of Economics p.1

2 Definitions of returns Empirical evidence: daily prices in Jan 1985 Feb 2011 of S&P500 index Apple Inc stock Efficient markets hypothesis Statistical models for returns p.2

3 Simple returns and gross returns Let P t be the price of an asset at time t. One-period simple (net) return: R t = (P t P t 1 )/P t 1. Often we use: 100R t, as R t = 100R t % One period gross return: P t /P t 1 = R t +1 k-period simple (net) return: R t (k) = (P t P t k )/P t k k-period gross return: P t /P t k = R t (k)+1. Multiperiod returns expressed in terms of one-period returns: P t P t k = P t P t 1 P t 1 P t 2 Pt k+1 P k k R t (k) = P t P t k 1 = (R t +1)(R t 1 +1) (R t k+1 +1) 1 R t +R t 1 + +R t k+1, provided all R j small p.3

4 Log returns One period log return: r t = logp t logp t 1 = log(p t /P t 1 ) = log(1+r t ) k period log return: r t (k) = log(p t /P t k ) = r t +r t 1 + +r t k+1 An investment of $A at time t-k yields the capital at time t: Aexp{r t (k)} = Aexp(r t +r t 1 + +r t k+1 ) = Ae k r, where r = 1 k k j=1 r t j+1 is the average one-period log returns. p.4

5 It holds always that R t r t. However when returns are small, r t = log(p t /P t 1 ) = log ( 1+ P t P t 1 P t 1 ) P t P t 1 P t 1 = R t. log return Apple Daily return log return Apple Weekly return log return Apple Monthly return simple return simple return simple return Plots of log returns against simple returns of the Apple Inc share prices in January 1985 February The blue straight lines mark the positions where the two returns are identical. p.5

6 Continuously compounding Log return is also called continuously compounded return Example. For a bank deposit account, an interest rate of 5% payable every 6 months will be quoted as a simple interest of 10% per annual. The gross return for 12 months is 1 (1+.05) 1 1 (1+.05) (1+.05) 1 (1+.05) = (1+.05) 2 = , i.e. the annual simple return is = 10.25% > 10% due to the interest-on-interest in the second 6 months. p.6

7 Simple interest rate Simple interest rate: r No. of payments per annual: m (at the rate of r/m each time) The gross annual return: (1+r/m) m e r, as m. Two interpretations for interest rate : the annual simple return if the interest is paid once the annual log return if the interest is compounded continuously. p.7

8 Behavior of financial return data Two data sets: Daily (adjusted) close prices in January 1985 February 2011 of S&P500 index Apple Inc stock Only consider log returns from now on p.8

9 P500: time series of daily indices, and daily, weekly and monthly return Daily price Daily log return Weekly log return Monthly log return The index peaked on 24/5/00 during the dot-com bubble, then lost about 50% of its value in It peaked again on 9/10/07 before suffered in High volatilities in did not show off in monthly returns Volatility clustering? p.9

10 pple: time series of daily prices, and daily, weekly and monthly returns Daily price Daily log return Weekly log return On 29/9/00, Apple s value sliced in half, due to the earning warning in the last quarter The recent sharp increase were due to successes with ipot, iphone and ipat Monthly log return Stationary or not? p.10

11 S&P500 returns: Normality? Daily returns Weekly returns Monthly returns Density Density Density Normal Q Q Plot Normal Q Q Plot Normal quantile Normal quantile Normal Q Q Plot Normal quantile p.11 Quantile of daily returns Quantile of weekly returns Quantile of monthly returns

12 Apple returns: Normality? Daily returns Weekly returns Monthly returns Density Density Density Normal Q Q Plot Normal Q Q Plot Normal quantile Normal quantile Normal Q Q Plot Normal quantile p.12 Quantile of daily returns Quantile of weekly returns Quantile of monthly returns

13 S&P500 returns: Serially correlated? Daily returns Weekly returns Monthly returns Squared daily returns Squared weekly returns Squared monthly returns Absolute daily returns Absolute weekly returns Absolute monthly returns p.13

14 Apple returns: Serially correlated? Daily returns Weekly returns Monthly returns Squared daily returns Squared weekly returns Squared monthly returns Absolute daily returns Absolute weekly returns Absolute monthly returns p.14

15 Stylized Features of financial returns (i) Stationarity. Asset prices are not stationary, due to e.g. expansion of economy, technology innovation, economic recessions or financial crisis. Returns can be modelled as a stationary process (ii) Heavy tails. Distribution of high-frequency (such as daily) returns r t exhibits heavier (than normal) tails. But it is accepted that E(r 2 t ) <. (iii) Asymmetry. Distribution of high-frequency (such as daily) returns r t is often negatively skewed: financial markets go down much faster! (iv) Volatility clustering. Large price changes (i.e. returns with large absolute values) occur in clusters, and periods of tranquillity alternate with periods of high volatility. p.15

16 Stylized Features of financial returns (continue) (v) Aggregational Gaussianity When sampling frequency decreases, the CLT sets in. The distribution of the returns over a long time-horizon (such as a month) tends toward a normal distribution. (vi) No serial correlations. The overwhelming evidence to support the claim that financial returns are white noise, i.e. showing no serial correlations. (vii) Long range dependence. Daily squared and absolute returns often exhibit small and significant autocorrelations. Those autocorrelations are persistent for absolute returns; indicating possible long-memory properties. However the serial correlation become weaker and less persistent when the sampling interval increases. p.16

17 prices are fair Efficient markets hypothesis (EMH) information is accessible for everybody, and is assimilated rapidly to adjust prices people (traders) are rational Hence P t incorporates all relevant info upto time t the change P t+1 P t is only due to the arrival of news between t and t+1 no arbitrage opportunities p.17

18 Models for returns under EMH Under EMH, a basic model for returns is of the form where r t+1 = µ t +ε t+1, ε t (0, σ 2 t), µ t is the rational expectation of of r t+1 at time t, ε t+1 is unpredictable based on P t, and therefore also on {P t,p t 1, }. Hence no serial correlations! Eε t+1 = 0; on average the actual change of log price equals the expectation. As r t+1 = log(p t+1 /P t ), logp t+1 = µ t +logp t +ε t Hence log prices follow a random walk, provided µ t µ and ε t p.18

19 Statistical models for returns Most statistical models for returns are of the form where µ = Er t. r t = µ+ε t, ε t WN(0,σ 2 ) Further hypotheses on ε t : martingale difference or i.i.d. ε t is WN: future returns cannot be predicted based on linear relationships ε t is MD: future returns cannot be predicted, but some nonlinear functions of future returns can be predicted (e.g. ARCH, GARCH structures) ε t is i.i.d.: nothing in the future can be predicted. Note i.i.d. martingale difference white noise p.19

Chapter 1 Asset Returns

Chapter 1 Asset Returns Chapter 1 Asset Returns The primary goal of investing in a financial market is to make profits without taking excessive risks. Most common investments involve purchasing financial assets such as stocks,

More information

Booth School of Business, University of Chicago Business 41202, Spring Quarter 2014, Mr. Ruey S. Tsay. Solutions to Midterm

Booth School of Business, University of Chicago Business 41202, Spring Quarter 2014, Mr. Ruey S. Tsay. Solutions to Midterm Booth School of Business, University of Chicago Business 41202, Spring Quarter 2014, Mr. Ruey S. Tsay Solutions to Midterm Problem A: (30 pts) Answer briefly the following questions. Each question has

More information

Statistical Analysis of Data from the Stock Markets. UiO-STK4510 Autumn 2015

Statistical Analysis of Data from the Stock Markets. UiO-STK4510 Autumn 2015 Statistical Analysis of Data from the Stock Markets UiO-STK4510 Autumn 2015 Sampling Conventions We observe the price process S of some stock (or stock index) at times ft i g i=0,...,n, we denote it by

More information

The Constant Expected Return Model

The Constant Expected Return Model Chapter 1 The Constant Expected Return Model Date: February 5, 2015 The first model of asset returns we consider is the very simple constant expected return (CER) model. This model is motivated by the

More information

Lecture 5a: ARCH Models

Lecture 5a: ARCH Models Lecture 5a: ARCH Models 1 2 Big Picture 1. We use ARMA model for the conditional mean 2. We use ARCH model for the conditional variance 3. ARMA and ARCH model can be used together to describe both conditional

More information

ARCH Models and Financial Applications

ARCH Models and Financial Applications Christian Gourieroux ARCH Models and Financial Applications With 26 Figures Springer Contents 1 Introduction 1 1.1 The Development of ARCH Models 1 1.2 Book Content 4 2 Linear and Nonlinear Processes 5

More information

1 Volatility Definition and Estimation

1 Volatility Definition and Estimation 1 Volatility Definition and Estimation 1.1 WHAT IS VOLATILITY? It is useful to start with an explanation of what volatility is, at least for the purpose of clarifying the scope of this book. Volatility

More information

The University of Chicago, Booth School of Business Business 41202, Spring Quarter 2009, Mr. Ruey S. Tsay. Solutions to Final Exam

The University of Chicago, Booth School of Business Business 41202, Spring Quarter 2009, Mr. Ruey S. Tsay. Solutions to Final Exam The University of Chicago, Booth School of Business Business 41202, Spring Quarter 2009, Mr. Ruey S. Tsay Solutions to Final Exam Problem A: (42 pts) Answer briefly the following questions. 1. Questions

More information

2.4 STATISTICAL FOUNDATIONS

2.4 STATISTICAL FOUNDATIONS 2.4 STATISTICAL FOUNDATIONS Characteristics of Return Distributions Moments of Return Distribution Correlation Standard Deviation & Variance Test for Normality of Distributions Time Series Return Volatility

More information

EFFICIENT MARKETS HYPOTHESIS

EFFICIENT MARKETS HYPOTHESIS EFFICIENT MARKETS HYPOTHESIS when economists speak of capital markets as being efficient, they usually consider asset prices and returns as being determined as the outcome of supply and demand in a competitive

More information

LONG MEMORY IN VOLATILITY

LONG MEMORY IN VOLATILITY LONG MEMORY IN VOLATILITY How persistent is volatility? In other words, how quickly do financial markets forget large volatility shocks? Figure 1.1, Shephard (attached) shows that daily squared returns

More information

Booth School of Business, University of Chicago Business 41202, Spring Quarter 2016, Mr. Ruey S. Tsay. Solutions to Midterm

Booth School of Business, University of Chicago Business 41202, Spring Quarter 2016, Mr. Ruey S. Tsay. Solutions to Midterm Booth School of Business, University of Chicago Business 41202, Spring Quarter 2016, Mr. Ruey S. Tsay Solutions to Midterm Problem A: (30 pts) Answer briefly the following questions. Each question has

More information

Prerequisites for modeling price and return data series for the Bucharest Stock Exchange

Prerequisites for modeling price and return data series for the Bucharest Stock Exchange Theoretical and Applied Economics Volume XX (2013), No. 11(588), pp. 117-126 Prerequisites for modeling price and return data series for the Bucharest Stock Exchange Andrei TINCA The Bucharest University

More information

Cross-Sectional Distribution of GARCH Coefficients across S&P 500 Constituents : Time-Variation over the Period

Cross-Sectional Distribution of GARCH Coefficients across S&P 500 Constituents : Time-Variation over the Period Cahier de recherche/working Paper 13-13 Cross-Sectional Distribution of GARCH Coefficients across S&P 500 Constituents : Time-Variation over the Period 2000-2012 David Ardia Lennart F. Hoogerheide Mai/May

More information

Lecture 6: Non Normal Distributions

Lecture 6: Non Normal Distributions Lecture 6: Non Normal Distributions and their Uses in GARCH Modelling Prof. Massimo Guidolin 20192 Financial Econometrics Spring 2015 Overview Non-normalities in (standardized) residuals from asset return

More information

High-Frequency Data Analysis and Market Microstructure [Tsay (2005), chapter 5]

High-Frequency Data Analysis and Market Microstructure [Tsay (2005), chapter 5] 1 High-Frequency Data Analysis and Market Microstructure [Tsay (2005), chapter 5] High-frequency data have some unique characteristics that do not appear in lower frequencies. At this class we have: Nonsynchronous

More information

Econometrics II. Seppo Pynnönen. Spring Department of Mathematics and Statistics, University of Vaasa, Finland

Econometrics II. Seppo Pynnönen. Spring Department of Mathematics and Statistics, University of Vaasa, Finland Department of Mathematics and Statistics, University of Vaasa, Finland Spring 2018 Part IV Financial Time Series As of Feb 5, 2018 1 Financial Time Series Asset Returns Simple returns Log-returns Portfolio

More information

I. Return Calculations (20 pts, 4 points each)

I. Return Calculations (20 pts, 4 points each) University of Washington Winter 015 Department of Economics Eric Zivot Econ 44 Midterm Exam Solutions This is a closed book and closed note exam. However, you are allowed one page of notes (8.5 by 11 or

More information

Stock Price Behavior. Stock Price Behavior

Stock Price Behavior. Stock Price Behavior Major Topics Statistical Properties Volatility Cross-Country Relationships Business Cycle Behavior Page 1 Statistical Behavior Previously examined from theoretical point the issue: To what extent can the

More information

Statistics and Finance

Statistics and Finance David Ruppert Statistics and Finance An Introduction Springer Notation... xxi 1 Introduction... 1 1.1 References... 5 2 Probability and Statistical Models... 7 2.1 Introduction... 7 2.2 Axioms of Probability...

More information

Volatility Analysis of Nepalese Stock Market

Volatility Analysis of Nepalese Stock Market The Journal of Nepalese Business Studies Vol. V No. 1 Dec. 008 Volatility Analysis of Nepalese Stock Market Surya Bahadur G.C. Abstract Modeling and forecasting volatility of capital markets has been important

More information

Amath 546/Econ 589 Univariate GARCH Models

Amath 546/Econ 589 Univariate GARCH Models Amath 546/Econ 589 Univariate GARCH Models Eric Zivot April 24, 2013 Lecture Outline Conditional vs. Unconditional Risk Measures Empirical regularities of asset returns Engle s ARCH model Testing for ARCH

More information

Financial Engineering. Craig Pirrong Spring, 2006

Financial Engineering. Craig Pirrong Spring, 2006 Financial Engineering Craig Pirrong Spring, 2006 March 8, 2006 1 Levy Processes Geometric Brownian Motion is very tractible, and captures some salient features of speculative price dynamics, but it is

More information

Absolute Return Volatility. JOHN COTTER* University College Dublin

Absolute Return Volatility. JOHN COTTER* University College Dublin Absolute Return Volatility JOHN COTTER* University College Dublin Address for Correspondence: Dr. John Cotter, Director of the Centre for Financial Markets, Department of Banking and Finance, University

More information

Modelling of Long-Term Risk

Modelling of Long-Term Risk Modelling of Long-Term Risk Roger Kaufmann Swiss Life roger.kaufmann@swisslife.ch 15th International AFIR Colloquium 6-9 September 2005, Zurich c 2005 (R. Kaufmann, Swiss Life) Contents A. Basel II B.

More information

Forecasting the Volatility in Financial Assets using Conditional Variance Models

Forecasting the Volatility in Financial Assets using Conditional Variance Models LUND UNIVERSITY MASTER S THESIS Forecasting the Volatility in Financial Assets using Conditional Variance Models Authors: Hugo Hultman Jesper Swanson Supervisor: Dag Rydorff DEPARTMENT OF ECONOMICS SEMINAR

More information

Beyond the Black-Scholes-Merton model

Beyond the Black-Scholes-Merton model Econophysics Lecture Leiden, November 5, 2009 Overview 1 Limitations of the Black-Scholes model 2 3 4 Limitations of the Black-Scholes model Black-Scholes model Good news: it is a nice, well-behaved model

More information

Data Analysis and Statistical Methods Statistics 651

Data Analysis and Statistical Methods Statistics 651 Data Analysis and Statistical Methods Statistics 651 http://www.stat.tamu.edu/~suhasini/teaching.html Lecture 10 (MWF) Checking for normality of the data using the QQplot Suhasini Subba Rao Checking for

More information

Booth School of Business, University of Chicago Business 41202, Spring Quarter 2010, Mr. Ruey S. Tsay. Solutions to Midterm

Booth School of Business, University of Chicago Business 41202, Spring Quarter 2010, Mr. Ruey S. Tsay. Solutions to Midterm Booth School of Business, University of Chicago Business 41202, Spring Quarter 2010, Mr. Ruey S. Tsay Solutions to Midterm Problem A: (30 pts) Answer briefly the following questions. Each question has

More information

Lecture 1: The Econometrics of Financial Returns

Lecture 1: The Econometrics of Financial Returns Lecture 1: The Econometrics of Financial Returns Prof. Massimo Guidolin 20192 Financial Econometrics Winter/Spring 2016 Overview General goals of the course and definition of risk(s) Predicting asset returns:

More information

Relations between Prices, Dividends and Returns. Present Value Relations (Ch7inCampbell et al.) Thesimplereturn:

Relations between Prices, Dividends and Returns. Present Value Relations (Ch7inCampbell et al.) Thesimplereturn: Present Value Relations (Ch7inCampbell et al.) Consider asset prices instead of returns. Predictability of stock returns at long horizons: There is weak evidence of predictability when the return history

More information

A Non-Random Walk Down Wall Street

A Non-Random Walk Down Wall Street A Non-Random Walk Down Wall Street Andrew W. Lo A. Craig MacKinlay Princeton University Press Princeton, New Jersey list of Figures List of Tables Preface xiii xv xxi 1 Introduction 3 1.1 The Random Walk

More information

Risky asset valuation and the efficient market hypothesis

Risky asset valuation and the efficient market hypothesis Risky asset valuation and the efficient market hypothesis IGIDR, Bombay May 13, 2011 Pricing risky assets Principle of asset pricing: Net Present Value Every asset is a set of cashflow, maturity (C i,

More information

ARCH and GARCH Models vs. Martingale Volatility of Finance Market Returns

ARCH and GARCH Models vs. Martingale Volatility of Finance Market Returns ARCH and GARCH Models vs. Martingale Volatility of Finance Market Returns Joseph L. McCauley Physics Department University of Houston Houston, Tx. 77204-5005 jmccauley@uh.edu Abstract ARCH and GARCH models

More information

Trends in currency s return

Trends in currency s return IOP Conference Series: Materials Science and Engineering PAPER OPEN ACCESS Trends in currency s return To cite this article: A Tan et al 2018 IOP Conf. Ser.: Mater. Sci. Eng. 332 012001 View the article

More information

Fin285a:Computer Simulations and Risk Assessment Section 3.2 Stylized facts of financial data Danielson,

Fin285a:Computer Simulations and Risk Assessment Section 3.2 Stylized facts of financial data Danielson, Fin285a:Computer Simulations and Risk Assessment Section 3.2 Stylized facts of financial data Danielson, 1.3-1.7 Blake LeBaron Fall 2016 1 Overview Autocorrelations and predictability Fat tails Volatility

More information

INFORMATION EFFICIENCY HYPOTHESIS THE FINANCIAL VOLATILITY IN THE CZECH REPUBLIC CASE

INFORMATION EFFICIENCY HYPOTHESIS THE FINANCIAL VOLATILITY IN THE CZECH REPUBLIC CASE INFORMATION EFFICIENCY HYPOTHESIS THE FINANCIAL VOLATILITY IN THE CZECH REPUBLIC CASE Abstract Petr Makovský If there is any market which is said to be effective, this is the the FOREX market. Here we

More information

Conditional Heteroscedasticity

Conditional Heteroscedasticity 1 Conditional Heteroscedasticity May 30, 2010 Junhui Qian 1 Introduction ARMA(p,q) models dictate that the conditional mean of a time series depends on past observations of the time series and the past

More information

12. Conditional heteroscedastic models (ARCH) MA6622, Ernesto Mordecki, CityU, HK, 2006.

12. Conditional heteroscedastic models (ARCH) MA6622, Ernesto Mordecki, CityU, HK, 2006. 12. Conditional heteroscedastic models (ARCH) MA6622, Ernesto Mordecki, CityU, HK, 2006. References for this Lecture: Robert F. Engle. Autoregressive Conditional Heteroscedasticity with Estimates of Variance

More information

Financial Econometrics Jeffrey R. Russell. Midterm 2014 Suggested Solutions. TA: B. B. Deng

Financial Econometrics Jeffrey R. Russell. Midterm 2014 Suggested Solutions. TA: B. B. Deng Financial Econometrics Jeffrey R. Russell Midterm 2014 Suggested Solutions TA: B. B. Deng Unless otherwise stated, e t is iid N(0,s 2 ) 1. (12 points) Consider the three series y1, y2, y3, and y4. Match

More information

Graduate School of Business, University of Chicago Business 41202, Spring Quarter 2007, Mr. Ruey S. Tsay. Solutions to Final Exam

Graduate School of Business, University of Chicago Business 41202, Spring Quarter 2007, Mr. Ruey S. Tsay. Solutions to Final Exam Graduate School of Business, University of Chicago Business 41202, Spring Quarter 2007, Mr. Ruey S. Tsay Solutions to Final Exam Problem A: (30 pts) Answer briefly the following questions. 1. Suppose that

More information

Volatility in the Indian Financial Market Before, During and After the Global Financial Crisis

Volatility in the Indian Financial Market Before, During and After the Global Financial Crisis Volatility in the Indian Financial Market Before, During and After the Global Financial Crisis Praveen Kulshreshtha Indian Institute of Technology Kanpur, India Aakriti Mittal Indian Institute of Technology

More information

Data Analysis and Statistical Methods Statistics 651

Data Analysis and Statistical Methods Statistics 651 Data Analysis and Statistical Methods Statistics 651 http://www.stat.tamu.edu/~suhasini/teaching.html Lecture 10 (MWF) Checking for normality of the data using the QQplot Suhasini Subba Rao Review of previous

More information

Occasional Paper. Risk Measurement Illiquidity Distortions. Jiaqi Chen and Michael L. Tindall

Occasional Paper. Risk Measurement Illiquidity Distortions. Jiaqi Chen and Michael L. Tindall DALLASFED Occasional Paper Risk Measurement Illiquidity Distortions Jiaqi Chen and Michael L. Tindall Federal Reserve Bank of Dallas Financial Industry Studies Department Occasional Paper 12-2 December

More information

Chapter IV. Forecasting Daily and Weekly Stock Returns

Chapter IV. Forecasting Daily and Weekly Stock Returns Forecasting Daily and Weekly Stock Returns An unsophisticated forecaster uses statistics as a drunken man uses lamp-posts -for support rather than for illumination.0 Introduction In the previous chapter,

More information

Financial Econometrics

Financial Econometrics Financial Econometrics Volatility Gerald P. Dwyer Trinity College, Dublin January 2013 GPD (TCD) Volatility 01/13 1 / 37 Squared log returns for CRSP daily GPD (TCD) Volatility 01/13 2 / 37 Absolute value

More information

Financial Models with Levy Processes and Volatility Clustering

Financial Models with Levy Processes and Volatility Clustering Financial Models with Levy Processes and Volatility Clustering SVETLOZAR T. RACHEV # YOUNG SHIN ICIM MICHELE LEONARDO BIANCHI* FRANK J. FABOZZI WILEY John Wiley & Sons, Inc. Contents Preface About the

More information

Volatility Clustering of Fine Wine Prices assuming Different Distributions

Volatility Clustering of Fine Wine Prices assuming Different Distributions Volatility Clustering of Fine Wine Prices assuming Different Distributions Cynthia Royal Tori, PhD Valdosta State University Langdale College of Business 1500 N. Patterson Street, Valdosta, GA USA 31698

More information

FMS161/MASM18 Financial Statistics Lecture 1, Introduction and stylized facts. Erik Lindström

FMS161/MASM18 Financial Statistics Lecture 1, Introduction and stylized facts. Erik Lindström FMS161/MASM18 Financial Statistics Lecture 1, Introduction and stylized facts Erik Lindström People and homepage Erik Lindström:, 222 45 78, MH:221 (Lecturer) Carl Åkerlindh:, 222 04 85, MH:223 (Computer

More information

Financial Time Series Analysis (FTSA)

Financial Time Series Analysis (FTSA) Financial Time Series Analysis (FTSA) Lecture 6: Conditional Heteroscedastic Models Few models are capable of generating the type of ARCH one sees in the data.... Most of these studies are best summarized

More information

ARCH and GARCH models

ARCH and GARCH models ARCH and GARCH models Fulvio Corsi SNS Pisa 5 Dic 2011 Fulvio Corsi ARCH and () GARCH models SNS Pisa 5 Dic 2011 1 / 21 Asset prices S&P 500 index from 1982 to 2009 1600 1400 1200 1000 800 600 400 200

More information

Lecture 5: Univariate Volatility

Lecture 5: Univariate Volatility Lecture 5: Univariate Volatility Modellig, ARCH and GARCH Prof. Massimo Guidolin 20192 Financial Econometrics Spring 2015 Overview Stepwise Distribution Modeling Approach Three Key Facts to Remember Volatility

More information

The Analysis of ICBC Stock Based on ARMA-GARCH Model

The Analysis of ICBC Stock Based on ARMA-GARCH Model Volume 04 - Issue 08 August 2018 PP. 11-16 The Analysis of ICBC Stock Based on ARMA-GARCH Model Si-qin LIU 1 Hong-guo SUN 1* 1 (Department of Mathematics and Finance Hunan University of Humanities Science

More information

The University of Chicago, Booth School of Business Business 41202, Spring Quarter 2012, Mr. Ruey S. Tsay. Solutions to Final Exam

The University of Chicago, Booth School of Business Business 41202, Spring Quarter 2012, Mr. Ruey S. Tsay. Solutions to Final Exam The University of Chicago, Booth School of Business Business 41202, Spring Quarter 2012, Mr. Ruey S. Tsay Solutions to Final Exam Problem A: (40 points) Answer briefly the following questions. 1. Consider

More information

Universal Properties of Financial Markets as a Consequence of Traders Behavior: an Analytical Solution

Universal Properties of Financial Markets as a Consequence of Traders Behavior: an Analytical Solution Universal Properties of Financial Markets as a Consequence of Traders Behavior: an Analytical Solution Simone Alfarano, Friedrich Wagner, and Thomas Lux Institut für Volkswirtschaftslehre der Christian

More information

Model Construction & Forecast Based Portfolio Allocation:

Model Construction & Forecast Based Portfolio Allocation: QBUS6830 Financial Time Series and Forecasting Model Construction & Forecast Based Portfolio Allocation: Is Quantitative Method Worth It? Members: Bowei Li (303083) Wenjian Xu (308077237) Xiaoyun Lu (3295347)

More information

Chapter 4 Level of Volatility in the Indian Stock Market

Chapter 4 Level of Volatility in the Indian Stock Market Chapter 4 Level of Volatility in the Indian Stock Market Measurement of volatility is an important issue in financial econometrics. The main reason for the prominent role that volatility plays in financial

More information

Amath 546/Econ 589 Univariate GARCH Models: Advanced Topics

Amath 546/Econ 589 Univariate GARCH Models: Advanced Topics Amath 546/Econ 589 Univariate GARCH Models: Advanced Topics Eric Zivot April 29, 2013 Lecture Outline The Leverage Effect Asymmetric GARCH Models Forecasts from Asymmetric GARCH Models GARCH Models with

More information

Portfolio Optimization. Prof. Daniel P. Palomar

Portfolio Optimization. Prof. Daniel P. Palomar Portfolio Optimization Prof. Daniel P. Palomar The Hong Kong University of Science and Technology (HKUST) MAFS6010R- Portfolio Optimization with R MSc in Financial Mathematics Fall 2018-19, HKUST, Hong

More information

The University of Chicago, Booth School of Business Business 41202, Spring Quarter 2010, Mr. Ruey S. Tsay Solutions to Final Exam

The University of Chicago, Booth School of Business Business 41202, Spring Quarter 2010, Mr. Ruey S. Tsay Solutions to Final Exam The University of Chicago, Booth School of Business Business 410, Spring Quarter 010, Mr. Ruey S. Tsay Solutions to Final Exam Problem A: (4 pts) Answer briefly the following questions. 1. Questions 1

More information

Some Simple Stochastic Models for Analyzing Investment Guarantees p. 1/36

Some Simple Stochastic Models for Analyzing Investment Guarantees p. 1/36 Some Simple Stochastic Models for Analyzing Investment Guarantees Wai-Sum Chan Department of Statistics & Actuarial Science The University of Hong Kong Some Simple Stochastic Models for Analyzing Investment

More information

Modelling Joint Distribution of Returns. Dr. Sawsan Hilal space

Modelling Joint Distribution of Returns. Dr. Sawsan Hilal space Modelling Joint Distribution of Returns Dr. Sawsan Hilal space Maths Department - University of Bahrain space October 2011 REWARD Asset Allocation Problem PORTFOLIO w 1 w 2 w 3 ASSET 1 ASSET 2 R 1 R 2

More information

STAT758. Final Project. Time series analysis of daily exchange rate between the British Pound and the. US dollar (GBP/USD)

STAT758. Final Project. Time series analysis of daily exchange rate between the British Pound and the. US dollar (GBP/USD) STAT758 Final Project Time series analysis of daily exchange rate between the British Pound and the US dollar (GBP/USD) Theophilus Djanie and Harry Dick Thompson UNR May 14, 2012 INTRODUCTION Time Series

More information

Exploring Financial Instability Through Agent-based Modeling Part 2: Time Series, Adaptation, and Survival

Exploring Financial Instability Through Agent-based Modeling Part 2: Time Series, Adaptation, and Survival Mini course CIGI-INET: False Dichotomies Exploring Financial Instability Through Agent-based Modeling Part 2: Time Series, Adaptation, and Survival Blake LeBaron International Business School Brandeis

More information

Carbon trading thickness and market efficiency: A non-parametric test

Carbon trading thickness and market efficiency: A non-parametric test Carbon trading thickness and market efficiency: A non-parametric test Alberto Montagnoli Frans de Vries Stirling Economics Discussion Paper 29-22 October 29 Online at http://www.economics.stir.ac.uk Carbon

More information

STOCK MARKET EFFICIENCY, NON-LINEARITY AND THIN TRADING EFFECTS IN SOME SELECTED COMPANIES IN GHANA

STOCK MARKET EFFICIENCY, NON-LINEARITY AND THIN TRADING EFFECTS IN SOME SELECTED COMPANIES IN GHANA STOCK MARKET EFFICIENCY, NON-LINEARITY AND THIN TRADING Abstract EFFECTS IN SOME SELECTED COMPANIES IN GHANA Wiredu Sampson *, Atopeo Apuri Benjamin and Allotey Robert Nii Ampah Department of Statistics,

More information

Financial Data Analysis, WS08/09. Roman Liesenfeld, University of Kiel 1

Financial Data Analysis, WS08/09. Roman Liesenfeld, University of Kiel 1 Financial Data Analysis, WS08/09. Roman Liesenfeld, University of Kiel 1 Data sets used in the following sections can be downloaded from http://faculty.chicagogsb.edu/ruey.tsay/teaching/fts/ Exercise Sheet

More information

Econometria dei mercati nanziari c.a. A.A Scopes of Part I. 1.a. Prices and returns of nancial assets: denitions

Econometria dei mercati nanziari c.a. A.A Scopes of Part I. 1.a. Prices and returns of nancial assets: denitions Econometria dei mercati nanziari c.a. A.A. 2015-2016 1. Scopes of Part I 1.a. Prices and returns of nancial assets: denitions 1.b. Three stylized facts about asset returns 1.c. Which (time series) model

More information

Indian Institute of Management Calcutta. Working Paper Series. WPS No. 797 March Implied Volatility and Predictability of GARCH Models

Indian Institute of Management Calcutta. Working Paper Series. WPS No. 797 March Implied Volatility and Predictability of GARCH Models Indian Institute of Management Calcutta Working Paper Series WPS No. 797 March 2017 Implied Volatility and Predictability of GARCH Models Vivek Rajvanshi Assistant Professor, Indian Institute of Management

More information

Valuing Investments A Statistical Perspective. Bob Stine Department of Statistics Wharton, University of Pennsylvania

Valuing Investments A Statistical Perspective. Bob Stine Department of Statistics Wharton, University of Pennsylvania Valuing Investments A Statistical Perspective Bob Stine, University of Pennsylvania Overview Principles Focus on returns, not cumulative value Remove market performance (CAPM) Watch for unseen volatility

More information

Financial Time Series and Their Characteristics

Financial Time Series and Their Characteristics Financial Time Series and Their Characteristics Egon Zakrajšek Division of Monetary Affairs Federal Reserve Board Summer School in Financial Mathematics Faculty of Mathematics & Physics University of Ljubljana

More information

Assessing Regime Switching Equity Return Models

Assessing Regime Switching Equity Return Models Assessing Regime Switching Equity Return Models R. Keith Freeland Mary R Hardy Matthew Till January 28, 2009 In this paper we examine time series model selection and assessment based on residuals, with

More information

Financial Risk Forecasting Chapter 1 Financial markets, prices and risk

Financial Risk Forecasting Chapter 1 Financial markets, prices and risk Financial Risk Forecasting Chapter 1 Financial markets, prices and risk Jon Danielsson 2017 London School of Economics To accompany Financial Risk Forecasting www.financialriskforecasting.com Published

More information

Midterm Exam. b. What are the continuously compounded returns for the two stocks?

Midterm Exam. b. What are the continuously compounded returns for the two stocks? University of Washington Fall 004 Department of Economics Eric Zivot Economics 483 Midterm Exam This is a closed book and closed note exam. However, you are allowed one page of notes (double-sided). Answer

More information

This homework assignment uses the material on pages ( A moving average ).

This homework assignment uses the material on pages ( A moving average ). Module 2: Time series concepts HW Homework assignment: equally weighted moving average This homework assignment uses the material on pages 14-15 ( A moving average ). 2 Let Y t = 1/5 ( t + t-1 + t-2 +

More information

FMS161/MASM18 Financial Statistics Lecture 1, Introduction and stylized facts. Erik Lindström

FMS161/MASM18 Financial Statistics Lecture 1, Introduction and stylized facts. Erik Lindström FMS161/MASM18 Financial Statistics Lecture 1, Introduction and stylized facts Erik Lindström People and homepage Erik Lindström:, 222 45 78, MH:221 (Lecturer) Carl Åkerlindh:, 222 04 85, MH:223 (Computer

More information

Booth School of Business, University of Chicago Business 41202, Spring Quarter 2012, Mr. Ruey S. Tsay. Solutions to Midterm

Booth School of Business, University of Chicago Business 41202, Spring Quarter 2012, Mr. Ruey S. Tsay. Solutions to Midterm Booth School of Business, University of Chicago Business 41202, Spring Quarter 2012, Mr. Ruey S. Tsay Solutions to Midterm Problem A: (34 pts) Answer briefly the following questions. Each question has

More information

Testing for Weak Form Efficiency of Stock Markets

Testing for Weak Form Efficiency of Stock Markets Testing for Weak Form Efficiency of Stock Markets Jonathan B. Hill 1 Kaiji Motegi 2 1 University of North Carolina at Chapel Hill 2 Kobe University The 3rd Annual International Conference on Applied Econometrics

More information

Chapter 6 Forecasting Volatility using Stochastic Volatility Model

Chapter 6 Forecasting Volatility using Stochastic Volatility Model Chapter 6 Forecasting Volatility using Stochastic Volatility Model Chapter 6 Forecasting Volatility using SV Model In this chapter, the empirical performance of GARCH(1,1), GARCH-KF and SV models from

More information

Rescaled Range(R/S) analysis of the stock market returns

Rescaled Range(R/S) analysis of the stock market returns Rescaled Range(R/S) analysis of the stock market returns Prashanta Kharel, The University of the South 29 Aug, 2010 Abstract The use of random walk/ Gaussian distribution to model financial markets is

More information

AN INTRODUCTION TO RISK AND RETURN. Chapter 7

AN INTRODUCTION TO RISK AND RETURN. Chapter 7 1 AN INTRODUCTION TO RISK AND RETURN Chapter 7 Learning Objectives 2 1. Calculate realized and expected rates of return and risk. 2. Describe the historical pattern of financial market returns. 3. Compute

More information

Are Market Neutral Hedge Funds Really Market Neutral?

Are Market Neutral Hedge Funds Really Market Neutral? Are Market Neutral Hedge Funds Really Market Neutral? Andrew Patton London School of Economics June 2005 1 Background The hedge fund industry has grown from about $50 billion in 1990 to $1 trillion in

More information

Predictability in finance

Predictability in finance Predictability in finance Two techniques to discuss predicability Variance ratios in the time dimension (Lo-MacKinlay)x Construction of implementable trading strategies Predictability, Autocorrelation

More information

Modelling financial data with stochastic processes

Modelling financial data with stochastic processes Modelling financial data with stochastic processes Vlad Ardelean, Fabian Tinkl 01.08.2012 Chair of statistics and econometrics FAU Erlangen-Nuremberg Outline Introduction Stochastic processes Volatility

More information

Modeling Volatility Clustering of Bank Index: An Empirical Study of BankNifty

Modeling Volatility Clustering of Bank Index: An Empirical Study of BankNifty Review of Integrative Business and Economics Research, Vol. 6, no. 1, pp.224-239, January 2017 224 Modeling Volatility Clustering of Bank Index: An Empirical Study of BankNifty Ashok Patil * Kirloskar

More information

A gentle introduction to the RM 2006 methodology

A gentle introduction to the RM 2006 methodology A gentle introduction to the RM 2006 methodology Gilles Zumbach RiskMetrics Group Av. des Morgines 12 1213 Petit-Lancy Geneva, Switzerland gilles.zumbach@riskmetrics.com Initial version: August 2006 This

More information

VOLATILITY. Time Varying Volatility

VOLATILITY. Time Varying Volatility VOLATILITY Time Varying Volatility CONDITIONAL VOLATILITY IS THE STANDARD DEVIATION OF the unpredictable part of the series. We define the conditional variance as: 2 2 2 t E yt E yt Ft Ft E t Ft surprise

More information

Statistical methods for financial models driven by Lévy processes

Statistical methods for financial models driven by Lévy processes Statistical methods for financial models driven by Lévy processes José Enrique Figueroa-López Department of Statistics, Purdue University PASI Centro de Investigación en Matemátics (CIMAT) Guanajuato,

More information

Estimating Historical Volatility via Dynamical System

Estimating Historical Volatility via Dynamical System American Journal of Mathematics and Statistics, (): - DOI:./j.ajms.. Estimating Historical Volatility via Dynamical System Onyeka-Ubaka J. N.,*, Okafor R. O., Adewara J. A. Department of Mathematics, University

More information

Application of Conditional Autoregressive Value at Risk Model to Kenyan Stocks: A Comparative Study

Application of Conditional Autoregressive Value at Risk Model to Kenyan Stocks: A Comparative Study American Journal of Theoretical and Applied Statistics 2017; 6(3): 150-155 http://www.sciencepublishinggroup.com/j/ajtas doi: 10.11648/j.ajtas.20170603.13 ISSN: 2326-8999 (Print); ISSN: 2326-9006 (Online)

More information

A Compound-Multifractal Model for High-Frequency Asset Returns

A Compound-Multifractal Model for High-Frequency Asset Returns A Compound-Multifractal Model for High-Frequency Asset Returns Eric M. Aldrich 1 Indra Heckenbach 2 Gregory Laughlin 3 1 Department of Economics, UC Santa Cruz 2 Department of Physics, UC Santa Cruz 3

More information

A Study of Stock Return Distributions of Leading Indian Bank s

A Study of Stock Return Distributions of Leading Indian Bank s Global Journal of Management and Business Studies. ISSN 2248-9878 Volume 3, Number 3 (2013), pp. 271-276 Research India Publications http://www.ripublication.com/gjmbs.htm A Study of Stock Return Distributions

More information

2009/2010 CAIA Prerequisite Diagnostic Review (PDR) And Answer Key

2009/2010 CAIA Prerequisite Diagnostic Review (PDR) And Answer Key 2009/2010 CAIA Prerequisite Diagnostic Review (PDR) And Answer Key Form B --------------------------------------------------------------------------------- Candidates registered for the program are assumed

More information

Linda Allen, Jacob Boudoukh and Anthony Saunders, Understanding Market, Credit and Operational Risk: The Value at Risk Approach

Linda Allen, Jacob Boudoukh and Anthony Saunders, Understanding Market, Credit and Operational Risk: The Value at Risk Approach P1.T4. Valuation & Risk Models Linda Allen, Jacob Boudoukh and Anthony Saunders, Understanding Market, Credit and Operational Risk: The Value at Risk Approach Bionic Turtle FRM Study Notes Reading 26 By

More information

Volatility Models and Their Applications

Volatility Models and Their Applications HANDBOOK OF Volatility Models and Their Applications Edited by Luc BAUWENS CHRISTIAN HAFNER SEBASTIEN LAURENT WILEY A John Wiley & Sons, Inc., Publication PREFACE CONTRIBUTORS XVII XIX [JQ VOLATILITY MODELS

More information

FINANCIAL ECONOMETRICS AND EMPIRICAL FINANCE MODULE 2

FINANCIAL ECONOMETRICS AND EMPIRICAL FINANCE MODULE 2 MSc. Finance/CLEFIN 2017/2018 Edition FINANCIAL ECONOMETRICS AND EMPIRICAL FINANCE MODULE 2 Midterm Exam Solutions June 2018 Time Allowed: 1 hour and 15 minutes Please answer all the questions by writing

More information

Graduate School of Business, University of Chicago Business 41202, Spring Quarter 2007, Mr. Ruey S. Tsay. Midterm

Graduate School of Business, University of Chicago Business 41202, Spring Quarter 2007, Mr. Ruey S. Tsay. Midterm Graduate School of Business, University of Chicago Business 41202, Spring Quarter 2007, Mr. Ruey S. Tsay Midterm GSB Honor Code: I pledge my honor that I have not violated the Honor Code during this examination.

More information

FE570 Financial Markets and Trading. Stevens Institute of Technology

FE570 Financial Markets and Trading. Stevens Institute of Technology FE570 Financial Markets and Trading Lecture 6. Volatility Models and (Ref. Joel Hasbrouck - Empirical Market Microstructure ) Steve Yang Stevens Institute of Technology 10/02/2012 Outline 1 Volatility

More information

Business Statistics 41000: Probability 3

Business Statistics 41000: Probability 3 Business Statistics 41000: Probability 3 Drew D. Creal University of Chicago, Booth School of Business February 7 and 8, 2014 1 Class information Drew D. Creal Email: dcreal@chicagobooth.edu Office: 404

More information

Ho Ho Quantitative Portfolio Manager, CalPERS

Ho Ho Quantitative Portfolio Manager, CalPERS Portfolio Construction and Risk Management under Non-Normality Fiduciary Investors Symposium, Beijing - China October 23 rd 26 th, 2011 Ho Ho Quantitative Portfolio Manager, CalPERS The views expressed

More information