Market forces I: Price Impact J. Doyne Farmer Santa Fe Institute La Sapienza, 8 marzo Research supported by Barclays Bank.

Slides:



Advertisements
Similar presentations
Value-at-Risk: A Risk Estimating Tool for Management
Advertisements

34 INTERNATIONAL FINANCE CHAPTER.
Some recent evolutions in order book modelling Frédéric Abergel Chair of Quantitative Finance École Centrale Paris
Efficient Market Hypothesis (EMH). Premises of An Efficient Market -A large number of competing profit-maximizing participants analyze and value securities,
© 2002 South-Western Publishing 1 Chapter 6 The Black-Scholes Option Pricing Model.
Copyright © 2008 Pearson Addison-Wesley. All rights reserved. Chapter 10 Information and Financial Market Efficiency.
Economic Simulations Using Mathematica Kota Minegishi.
The Market Structure.  Markets are any place where transactions take place.  It is an arrangement between buyers and sellers in order to exchange. 
Fundamentals of Markets © 2011 D. Kirschen and the University of Washington 1.
STAT 497 APPLIED TIME SERIES ANALYSIS
© 2004 South-Western Publishing 1 Chapter 6 The Black-Scholes Option Pricing Model.
© 2002 South-Western Publishing 1 Chapter 6 The Black-Scholes Option Pricing Model.
Duration and Yield Changes
HIA and Multi-Agent Models ●New paradigm of heterogeneous interacting agent models (Reviewed in Markose, Arifovic and Sunder (2007)) ●Zero intelligence.
Ch. 10: The Exchange Rate and the Balance of Payments.
A Heuristic Bidding Strategy for Multiple Heterogeneous Auctions Patricia Anthony & Nicholas R. Jennings Dept. of Electronics and Computer Science University.
COMMON STOCK VALUATION
Macroeconomics Chapter 91 Capital Utilization and Unemployment C h a p t e r 9.
Why Stock Markets Crash. Why stock markets crash? Sornette’s argument in his book/article is as follows: 1.The motion of stock markets are not entirely.
Money, Interest Rates, and Exchange Rates
Part 5 © 2006 Thomson Learning/South-Western Perfect Competition.
The Theory of Aggregate Supply Classical Model. Learning Objectives Understand the determinants of output. Understand how output is distributed. Learn.
1 Robert Engle UCSD and NYU July WHAT IS LIQUIDITY? n A market with low “transaction costs” including execution price, uncertainty and speed n.
Chapter 12 The Foreign Exchange Market. Copyright © 2006 Pearson Addison-Wesley. All rights reserved Chapter Preview We develop a modern view of.
Life’s longing for itself Speculations on propagation, prediction, purpose and progress Amsterdam, October 2004 (Updated version of Ulam Lectures given.
Modeling liquidity, risk and transaction costs in the LSE using low intelligence agents J. Doyne Farmer Santa Fe Institute Institute for Mathematics and.
Yield Curves and Term Structure Theory. Yield curve The plot of yield on bonds of the same credit quality and liquidity against maturity is called a yield.
Chapter 1. Macroeconomic for the long run and the short run ECON320 Prof Mike Kennedy.
Market forces II: Liquidity J. Doyne Farmer Santa Fe Institute La Sapienza March 15, 2006 Research supported by Barclays Bank.
The Behavior of Interest Rates
Dr. Hassan Mounir El-SadyChapter 6 1 Black-Scholes Option Pricing Model (BSOPM)
INVESTMENTS Lecture 2 Security Markets. Security market organization §Markets are meant to allow buyers and sellers to interact. §Good financial markets.
Chapter 07 Stocks & Valuation. Value Stock = D1D1 D2D2 D∞D∞ (1 + r s ) 1 (1 + r s ) ∞ (1 + r s ) 2 Dividends (D t ) Market interest rates Firm’s.
Supply and Demand Chapter 3 Copyright © 2010 by the McGraw-Hill Companies, Inc. All rights reserved. McGraw-Hill/Irwin.
© 2004 South-Western Publishing 1 Chapter 6 The Black-Scholes Option Pricing Model.
Advanced Risk Management I Lecture 6 Non-linear portfolios.
1 Learning by Duopoly Agents Steve Kimbrough Fred Murphy INFORMS, November 7, 2006, 8:00-9:30 File: kimbrough-murphy-informs-2006fm-1.ppt.
A limit order market is a real world institution for characterizing the financial sector, and it is also a paradigm for describing trading mechanisms more.
Chapter 13 The Foreign Exchange Market. 2 Chapter Preview We develop a modern view of exchange rate determination that explains recent behavior in the.
Venture Capital and the Finance of Innovation [Course number] Professor [Name ] [School Name] Chapter 4 The Cost of Capital for VC.
Large events on the stock market: A study of high resolution data Kertész János Institute of Physics, BME with Adam Zawadowski (BME) Tóth Bence (BME) György.
INVESTMENTS | BODIE, KANE, MARCUS Copyright © 2011 by The McGraw-Hill Companies, Inc. All rights reserved. McGraw-Hill/Irwin CHAPTER 19 Futures Markets.
Federico M. Bandi and Jeffrey R. Russell University of Chicago, Graduate School of Business.
Effect of Learning and Market Structure on Price Level and Volatility in a Simple Market Walt Beyeler 1 Kimmo Soramäki 2 Robert J. Glass 1 1 Sandia National.
Online Financial Intermediation. Types of Intermediaries Brokers –Match buyers and sellers Retailers –Buy products from sellers and resell to buyers Transformers.
Lecture 3 Secondary Equity Markets - I. Trading motives Is it a zero-sum game? Building portfolio for a long run. Trading on information. Short-term speculation.
FIN 352 – Professor Dow.  Fama: Test the efficient market hypothesis using different information sets.  Three categories:  Weak  Semi-Strong  Strong.
(Econ 512): Economics of Financial Markets Chapter Two: Asset Market Microstructure Dr. Reyadh Faras Econ 512 Dr. Reyadh Faras.
McGraw-Hill/Irwin Copyright © 2007 by The McGraw-Hill Companies, Inc. All rights reserved. Time Series Forecasting Chapter 13.
19 October 2015All rights reserved, Edward Tsang & Serafin Martinez jaramillo CHASM Co-evolutionary Heterogeneous Artificial Stock Markets Serafín Martínez.
1 Robert Engle and Asger Lunde NYU and UCSD and University of Aarhus May 2001.
The stock market, rational expectations, efficient markets, and random walks The Economics of Money, Banking, and Financial Markets Mishkin, 7th ed. Chapter.
Chapter 14 Supplementary Notes. What is Money? Medium of Exchange –A generally accepted means of payment A Unit of Account –A widely recognized measure.
Copyright © 2010 Pearson Addison-Wesley. All rights reserved. Chapter 5 The Behavior of Interest Rates.
Data Analysis Econ 176, Fall Populations When we run an experiment, we are always measuring an outcome, x. We say that an outcome belongs to some.
1 J. Siaw, G. Warnecke, P. Jain, C. Kenney, D. Gershman, R. Riedi, K. Ensor Dynamics of Electronic Markets Electronic Markets 7 What makes the price Identify.
Copyright © 2010 by Nelson Education Limited 1 PowerPoint Slides to accompany Prepared by Apostolos Serletis University of Calgary.
1 The Capital Markets and Market Efficiency. 2 Role of the Capital Markets Definition Economic Function Continuous Pricing Function Fair Price Function.
1 MT 483 Investments Unit 5: Ch 8 and 9. Copyright © 2011 Pearson Prentice Hall. All rights reserved. 8-2 Steps in Valuing a Company Three steps are necessary.
Toward An Understanding of Self-Organization of Markets Yougui Wang Department of Systems Science, School of Management, Beijing Normal University, Beijing.
1 Lectures 8 and 9 The Behavior of Interest Rates.
Financial Risk Management of Insurance Enterprises
Capital Market Theory: An Overview
An Investigation of Market Dynamics and Wealth Distributions
An Equilibrium Business-Cycle Model
Financial Risk Management of Insurance Enterprises
TOPIC 3.1 CAPITAL MARKET THEORY
Macroeconomics Chapter 9
Lecturer Dr. Veronika Alhanaqtah
AS-AD curves: how natural is the natural rate of unemployment?
Presentation transcript:

Market forces I: Price Impact J. Doyne Farmer Santa Fe Institute La Sapienza, 8 marzo Research supported by Barclays Bank

Market forces Supply and demand are in a loose sense like forces in physics. What determines supply and demand curves? Are they the best approach? –Market dynamics –Observability problems

Standard approach to determining supply and demand Assume agents selfishly maximize utility Make an assumption about optimization algorithm agents use: –Standard: Perfect rationality –Behavioral: One rational, others noise Make an assumption about markets –Market clearing –Price taking Simplifications: (no production, no inter-temporal reasoning, … Economy is at a Nash equilibrium Research since 1980: Modify assumptions

What drives changes in prices? Standard view: expectations about future earnings driven by new information –new information alters expected earnings and changes fundamental value –prices quickly adjust to new fundamental value –prices are unpredictable because new information is by definition random

Rationality?

Elliot waves

Fibonnaci predicts social trends !

Overfitting

Problems with standard view Far too much trading (> 50 x GDP) Volatility is not random –size of price changes is correlated in time Many price changes not information driven Prices deviate from fundamental values Prices have exploitable patterns –weak, difficult to find, but not zero

Volatility

Problems with standard view Far too much trading (> 50 x GDP) Volatility is not random –size of price changes is correlated in time Many price changes not information driven Prices deviate from fundamental values Prices have exploitable patterns –weak, difficult to find, but not zero

Problems with standard view Far too much trading (> 50 x GDP) Volatility is not random –size of price changes is correlated in time Many price changes not information driven Prices deviate from fundamental values Prices have exploitable patterns –weak, difficult to find, but not zero

Prices do not match fundamental values Comparison of pseudo S&P index (solid) to fundamental value estimate based on dividends (dashed)

Problems with standard view Far too much trading (> 50 x GDP) Volatility is not random –size of price changes is correlated in time Many price changes not information driven Prices deviate from fundamental values Prices have exploitable patterns –weak, difficult to find, but not zero

Prediction Company (cofounded in 1991 with Norman Packard) Does fully automated proprietary trading in international stock markets under profit sharing relationship relationship with United Bank of Switzerland (Warburg Dillon Read) Cerebellar approach to market forecasting –empirically search for patterns in historical data –keys are feature extraction, central limit theorem –little understanding of origin of patterns –relies on abundant past data, stationary conditions 50 employees.

Profits? Finding a persistent pattern doesnt mean you can make an infinite amount of money. –(reason is market impact) –depends on timescale How much you can make is sensitively dependent on market impact

Price Impact (also called market impact) Response of price to receipt of an order Related to derivative of aggregate demand function = demand - supply. With a few caveats, has the important advantage of being directly measurable. –No information about price level, only price change

Price impact vs. order size for different market capitalizations With Fabrizio Lillo and Rosario Mantegna

Data collapse Use market capitalization C as liquidity proxy Find empirically to minimize variance

Master price impact curve

Zero intelligence model of price formation Assume agents place orders to buy or sell, make cancellations, at random –make everything a Poisson process –make distributions and rates uniform –equal for buying and selling. What are properties of resulting prices? –Dimensional analysis (price, time, shares) –Scaling laws for spread and volatility in terms of parameters of order flow

Giulia Iori Eric Smith Laszlo Gillemot Supriya Krishnamurthy Limit order collaborators 1 Marcus Daniels Continuous double auction model collaborators

Continuous double auction Continuous: Market operates asynchronously Double: Price adjustment in orders both to buy and to sell Execution priority: Lower priced sell orders or higher priced buy orders have priority First order placed has priority when multiple orders have same price. price ( $ ) SPREAD PRIORITY (BEST) BID (BEST) ASK VOLUME SELL BUY VOLUME LIMIT ORDERS

price ( $ ) BID ASK VOLUME Patient trading Patient traders place non-marketable limit orders that do not lead to an immediate transaction Non-marketable limit orders accumulate Limit order book is a storage device NEW ASK Limit Order BUY / SELL # OF SHARES LIMIT PRICE Patient trading Patient traders place non-marketable limit orders that do not lead to an immediate transaction Non-marketable limit orders accumulate

price ( $ ) Impatient trading Market order: An order to buy or sell up to a given volume No limit price is defined Executed immediately Often causes unfavorable price impact Market Order BUY / SELL # OF SHARES BID ASK BID NEW ASK VOLUME Impatient trading

Order cancellation price ( $ ) Limit order cancellations: Limit orders can be cancelled by the owner Market defined expiration price ( $ ) VOLUME

ZI model (Unrealistic but somewhat tractable) u Limit order arrival: Poisson process in time & price; Market order arrival: Poisson process in time; Cancellation: random in time (like radioactive decay); Separate processes for buying and selling, with same parameters. Depth profile n p,t : Number of shares in limit order book at price p, time t. BID SELL LIMIT ORDERS ASK BUY LIMIT ORDERS SELL MARKET ORDERS BUY MARKET ORDERS 0

Parameters of model Order flow rates Discreteness parameters Three fundamental dimensional quantities: shares S, price P, time T

Price impact from ZI model Real data shows less variation with epsilon than theory predicts

Market impact fn- non dim units Market impact function (non-dimensional units)

Testing prediction of spread Equation of state from mean field theory

From top 10 Russian jokes, Oct. 23, 2003 с сайта "Немецкая волна" Ученые-экономисты давно стараются понять закономерности, которым подчиняются биржевые курсы, и используют для этого математические модели. На протяжении многих десятилетий такие модели исходили из представлений о брокерах как об аналитиках с выдающимися умственными способностями, обладающих исчерпывающей информацией о рынке и действующих исключительно рационально. Однако удовлетворительно описать реальные изменения биржевых курсов эти модели оказались не в состоянии. Значительно успешнее справляется с этой задачей новая модель, предложенная Дойном Фармером (J. Doyne Farmer), сотрудником Института Санта-Фе в штате Нью-Мексико. Она базируется на предположении, что брокеры Ц полные Ђидиотыї, действующие совершенно случайно и к тому же лишенные какой бы то ни было информации. Сравнив данные, рассчитанные на основе этой модели, с реальными курсами лондонской фондовой биржи за период с 1998-го по 2000-й годы, ученые выявили очень высокую степень совпадения

Price impact on longer timescales Aggregate signed volumes for N successive transactions. Aggregate signed price return for N successive transactions. Vary N. Normalize x and y axis according to mean value of absolute aggregate signed volume.

Price impact on longer time scales

Statistical model

Decomposition of price impact Price impact has two parts: Mechanical (direct) impact –When an order enters the book, it alters the state of the book, which alters future prices even if nothing else changes. Indirect impact –Placement of the order may alter placement of future orders -- this measures interaction of agents. –Change can be due to direct impact or to other factors (e.g. direct observation of order placement) Is it possible to separate direct and indirect impacts?

Measurement of direct impact Any allowed sequence of orders and cancellations yields a unique price series –Cannot cancel an order that doesnt exist Can remove an order and then compute new series of prices –Can also partially remove an order –Can add orders Difference in prices measures mechanical (direct) impact