The Studies on Behavioral Finance with Agent-based Approaches

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The Studies on Behavioral Finance with Agent-based Approaches

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Title: The Studies on Behavioral Finance with Agent-based Approaches


1
The Studies on Behavioral Finance with
Agent-based Approaches
  • Dr. Wei Zhang
  • School of Management, Tianjin University, China
  • Tianjin University of Finance and Economics, China

2
Agenda
  • Introduction
  • Case I Excess volatility and learning frequency
  • Case II Performance under different investment
    strategies
  • Case III Time series predictability from simple
    technical rules perspective
  • Research in the future

3
Introduction
  • At the cross of the century, it was declared that
    Behavioral Finance would be a redundant concept
    in the future because no other finance will exist
    (Thaler, 1999)
  • Though Behavioral Finance has the ability to
    explain a bunch lots of market anomalies and
    improved the theories of financial economics,
    there are still quite a lot questions waiting for
    answers
  • However, it is very difficult to give these
    answers only by the traditional approaches in
    finance

4
Introduction
Common Market Information
Information Feedback
Market Restrictions
Equilibrium Price
Heterogeneous Individual Information
Ex ante Beliefs
Ex post Beliefs
Individual Choice
Objective Function
Individual Restrictions
Risk Preference
Price formation process
5
Introduction
  • Each box of the above chart could be a Hot
    Button.
  • When being pressed to change the standard
    assumptions, it will deliver different price
    dynamics
  • However, by only applying the traditional
    approaches, it is unimaginable to obtain a
    beautiful close-form model when the classical
    assumptions are relaxed
  • We need to try some new approaches

6
Introduction
  • Hopefully, agent-based modeling (ABM) can help us
    out to explore some of these questions
  • As a new approach, ABM is able to compensate for
    the shortcomings of the traditional
  • Since 2000, studies of behavioral finance with
    ABM have achieved great progress in the world
  • Here wed like to share some examples of our
    works in the past three years to show the ability
    and advantages of ABM for behavioral finance
    studies

7
Case I Excess volatility and learning frequency
  • Although learning is a common behavior among
    investors, it is rare in the literature that
    attribute the excess volatility of asset price to
    learning frequency
  • A modified SFI-ASM model is developed with
    different dividend processes to observe the
    impact of learning frequency on the excess
    volatility of asset price.

8
Case I Excess volatility and learning frequency
  • Experimental Design
  • (1) All experiments are without short-sale,
    which imitates the particular regulation in China
    stock market, although this might not quite true
    since the first Monday of Oct., 2008
  • (2) Two kinds dividend processes are applied
  • an AR(1) process with non-negative bounds
  • a bounded geometric Brownian motion process

9
Case I Excess volatility and learning frequency
  • (3) Learning frequency is set as
  • k250 (agents use GA every 250 periods)
  • k 1000 (agents use GA every 1000 periods)
  • Then all experiments are classified into
    four subgroups

k1000 k250
AR(1) ARL ARH
Geometric Brownian Motion GBL GBH
10
Note The abscissa is experiment period, with
origin from the 100,000th period. The ordinate is
difference between price and its average. The
dotted line indicates actual price difference and
the solid one denotes theoretical price
difference by Shiller (1981).
11
Case I Excess volatility and learning frequency
  • The Theoretical Price
  • Shillers (1981) approach is used to calculate
    the theoretical price by discounting the
    dividends every 100 periods
  • where rf is risk-free rate, d denotes the
    dividend, and p represents the price

12
Case I Excess volatility and learning frequency
  • Samples
  • (1) At first, artificial stock market
    operates 100,000 periods per run to ensure GAs
    effect
  • (2) Then recording data of the next 10,000
    periods
  • (3) For each experiment group, 25
    independent runs were done with different random
    seeds

13
Case I Excess volatility and learning frequency
  • Statistical results
  • We use the panel data from the 25 runs for
    each subgroup
  • By applying variance analysis, the F statistics
    shows the significant difference between the
    theoretical and experimental data, which means
    that the equilibrium prices from the experiments
    indicate excess volatility

14
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15
Case I Excess volatility and learning frequency
  • Findings
  • (1) Either dividend process follows AR(1) or
    geometric Brownian motion, the higher the agents
    learning frequency is, the higher volatility of
    price will be
  • (2) Also, it is found from the recorded
    experimental data that when the agents learning
    frequency is lower, more fundamental rules will
    be used while when the frequency is higher, the
    agents are more likely to apply technical rules
    in making decision

16
Case II Performance under Different Investment
Strategies
  • The performance of various investment strategies
    is an interesting topic in behavior finance
  • The works by BSV (Barberis, Shleifer Vishny,
    1998) and DSSW (De Long, Shleifer, Summers
    Waldmann, 1990) are two well-known analytical
    model referring to investment performance. The
    BSV model designed the BSV strategy, and the DSSW
    model provided noise trading strategy and
    rational expectation strategy. Both gave us some
    important theoretical results about price
    dynamics
  • However, when the investors with the strategies
    respectively present in the same market, how each
    of them will perform?

17
Case II Performance under Different Investment
Strategies
  • The Conceptual Model
  • Asset
  • A risk-free asset, which pays a fixed interest
    rate and is in perfectly elastic supply
  • A risky asset, which is available in a limited
    and constant supply across time. This asset pays
    a bounded AR(1) dividend
  • Trading Mechanism
  • A continuous auction mechanism
  • Market Clearing
  • The total bid equals the total askmarket price
    is the equilibrium price at period t

18
Case II Performance under Different Investment
Strategies
  • Investor PreferenceCARA utility function
  • Investor Type
  • BSV investors their trading behavior are
    somewhat similar to chartists in real financial
    markets
  • Noise traders whose trading are unpredictable
  • Rational expectation investors who are smart
    arbitrageurs and always adopt genetic algorithm
    to find and make use of any opportunity in the
    market
  • Passive investors who follow the Buy-and-Hold
    (BaH) strategy and never change their risky
    asset positions.

19
Case II Performance under Different Investment
Strategies
  • The Agent-based Model
  • ASM Platform
  • An ASM model, denoted as s-ASM, was developed
    based on the above conceptual model and SFI-ASM
    2.4, and run it on the open Swarm 2.2 platform in
    Linux
  • The Modifications of SFI-ASM
  • Adding BSV investor, noise trader and passive
    investor
  • New clearing mechanism Calculating equilibrium
    price by bid-ask balance

20
Case II Performance under Different Investment
Strategies
  • Experimental Design
  • 24 experiments are done with different random
    seeds of dividend generation. Each experiment
    consists of 250,000 periods
  • After the rational expectation agents finish
    their training in the initial 150,000 periods,
    the s-ASM model equally resets each agents
    wealth to 1000, and its risky asset position to 1
    unit

21
Case II Performance under Different Investment
Strategies
  • The Results Wealth Descriptive Characteristics

Rational gt BSV gt Passive gt Noise Furthermore, an
ANOVA test is used to detect the significance of
the above differences
22
Case II Performance under Different Investment
Strategies
a
  • Wealth ANOVA
  • Statistical Results
  • (a) Rational BSV
  • (b) Noise lt Passive
  • (c) Noise lt Rational
  • (d) Noise lt BSV

b
d
c
23
Case II Performance under Different Investment
Strategies
  • Further experiment with 500,000 Periods

Wealth Figure
  • Statistical Results
  • Rational BSV
  • Noise lt Passive lt Rational
  • Noise lt Passive lt BSV

24
Case II Performance under Different Investment
Strategies
  • Further experiment (without the Noise) for
    500,000 Periods

Wealth Figure
  • Statistical Results
  • BSV lt Passive lt Rational
  • On this specific situation, the Friedman(1953)
    Hypotheses is correct

25
Case II Performance under Different Investment
Strategies
  • Findings
  • Rational expectation strategy is the best in all
    four
  • Noise traders create living space for all
    irrational investors including themselves
  • Rational arbitrageurs cannot always eliminate
    the irrational investors defined by the BSV
    easily, even in the long run, when the noise
    traders exist in the market

26
Case III The predictability of simple technical
rules
  • The empirical work of Brock et al (1992) found
    that some simple technical rules have the
    predictability for the returns
  • Others (such as Fifield et al, 2005) made further
    investigation on the potential factors which may
    have impact on this ability
  • In this presentation, we try to figure out
    whether exists any factor other than the above
    which may alter the predictability

27
Case III The predictability of simple technical
rules
  • The TA-ASM Model
  • Assets
  • One risky asset, its supply is a positive
    constant
  • One free-risk asset, which pays a fixed
    interest rate and is in
  • perfectly elastic supply
  • Market Clearing Mechanism
  • Call auction market
  • Similar to Arthur, Holland, LeBaron et
    al.(1997)
  • Investors
  • Preference CARA utility function
  • Type informed trader and chartist

28
Case III The predictability of simple technical
rules
  • Informed Traders
  • For representative agent i of informed
    traders, his expected price at period t is
  • where ?t N(0, ?2) and ?t?-?, ?. It is a
    proxy of information on asset price, ?t is noise
    on information.
  • 4 groups of experiments are made. In each
    of them, the information It is set to the closing
    price of A-share index and B-share index of
    Shanghai Stock Exchange, A-share index and
    B-share index of Shenzhen Stock Exchange
    respectively.

29
Case III The predictability of simple technical
rules
  • Chartists
  • For representative agent j, his expected
    price at period t is
  • where s is buy or sell signals according to
    simple technical rules, denotes the k-th
    element of memory array about signal s at period
    t, l is memory length

30
Case III The predictability of simple technical
rules
  • Chartists
  • Simple technical rules are used by
    chartists, as in Brock, Lakonishok
    LeBaron(1992)
  • Variable-length Moving Average (VMA)
  • if smat gt lmat(1b) then sBuy if
    smat lt lmat(1-b) then sSell
  • Fixed-length Moving Average (FMA)
  • if smat-1 lt lmat-1(1-b) and smat gt
    lmat(1b) then sBuy
  • if smat-1 gt lmat-1(1b) and smat lt
    lmat(1-b) then sSell
  • Trading Range Break-out (TRB)
  • if Pt-1 gt Pmax(1b) then sBuy if Pt-1
    lt Pmin(1-b) then sSell
  • sma (or lma) short-period (or
    long-period) moving average price
  • b band width.
  • Pmax (or Pmin) local maximum (or minimum)
    price on the past certain periods

31
Case III The predictability of simple technical
rules
  • Experimental Design
  • Statistic
  • The number of buy (or sell) trading, CB (or CS)
  • The fraction of buy (or sell) returns greater
    than zero, PrbB (or PrbS )
  • Standard t-ratios testing the difference of the
    means of buy return and sell return from the
    unconditional 1-period average for VMA, and
    10-periods average for FMA and TRB
  • Technical Scenarios
  • Ten scenarios for VMA and FMA, (1,50,0)?(1,50,1)?
    (1,150,0)?(1,150,1)?(5,150,0)?(5,150,1)?(1,200,0
    )?(1,200,1)?(2,200,0)?(2,200,1)
  • Six scenarios for TRB, (50,0)?(50,1)?(150,0)?(150
    ,1)?(200,0)?(200,1)

32
Case III The predictability of simple technical
rules
  • Forecasting Ability of Technical Rules
  • Here, we take one example of TRB rules when
    investors proportion is 11 and chartists
    memory length is 50-periods

33
????
scenarios
Experiment 1
Experiment 3
mean
Experiment 2
Experiment 4
mean
34
Case III The predictability of simple technical
rules
  • Findings
  • The difference of mean returns, rB-rS , of almost
    all the trades are positive, and ten of them are
    significantly positive
  • In 20 scenarios of the 24, the number of buy
    trading is larger than the number of sell
  • The fraction of returns greater than zero in buy
    trading is larger than the fraction in sell
    trading, the difference of them is at least
    13.33
  • All these means that the buy suggestion by the
    technical rules are more effective than the
    sell ones.

35
Case III The predictability of simple technical
rules
  • Result Analysis
  • The result shows that these technical scenarios
    can really gain excess returns to certain extent
  • It means that the simple technical rules can
    detect some predictable part of returns series,
    just as Brock et al (1992) revealed in their
    empirical work with real world data

36
Case III The predictability of simple technical
rules
  • After Brock et al (1992), the impact of
    transaction cost, dividend, non-synchronous
    trading on the predictability is considered
    (Bessembinder Chan,1998 Day Wang, 2002
    Fifield, Power Sinclair, 2005), and it is found
    that these factors only have limited influence
  • However, are there any other factors being able
    to alter the predictability of the technical
    rules?

37
Case III The predictability of simple technical
rules
  • According to the setting of our ASM model, there
    are several potential factors that may interfere
    in the VMA, FMA and TRB rules forecasting
    ability.
  • They are market equilibrium mechanism, chartists
    memory length, and the proportion of different
    type of investors

38
Case III The predictability of simple technical
rules
  • Firstly, market equilibrium mechanism hardly
    affects the statistical characteristics, because
    that a lot of empirical researches (such as the
    above listed papers) have had quite similar
    results to our findings

39
Case III The predictability of simple technical
rules
  • Second, the effect of chartists memory length is
    not obvious. The change of average sell returns
    of all rules is not significant in different
    memory zones. In particular, average buy returns
    of all rules are almost invariable

VMA
FMA
TRB
Figure. Returns under different chartists memory
length
40
Case III The predictability of simple technical
rules
  • Third, the effect of investors proportions is
    also not significant. Especially, there is no
    obvious change at some points (such as 19, 15,
    32, 51), which are from real market surveys
    (Frankel Froot, 1987, 1990 Shiller, 1989)

Figure. Returns under different investors
proportions
41
Case III The predictability of simple technical
rules
  • Conclusion
  • Data analysis in this case shows that the
    technical rules can gain excess returns
  • Just as the previous indicated factors which only
    have mild impact on the predictability, it is
    also revealed that equilibrium mechanism, memory
    length, and investors proportions also only have
    limited impact on the predictability, by our ASM
    model.

42
Case III The predictability of simple technical
rules
  • Discussion
  • Brock et al (1992) gave a guess on why the
    predictability exists, based on their empirical
    findings, that it is quite possible that
    technical rules pick up some of the hidden
    patterns
  • Considering all the potential factors indicated
    by the literature, we constructed an ASM, in
    which chartist may really capture some of the
    hidden pattern and does gain excess returns by
    applying the rules

43
Research in the future
  • (1) Multi Asset/Market Research
  • For example, behavioral portfolio (Shiller,
    2000), behavioral option pricing, behavioral
    interest term structure (Shefrin, 2005) are all
    very interesting and useful issues
  • (2) Research under Special Market Condition
  • E.g. China security market has great
    difference with other markets (such as NYSE,
    NASDAQ) in investors behavior and trading
    mechanism. It provides an opportunity to explore
    its price dynamics with ABM

44
Research in the future
  • (3) Dynamics Research under Psychology-based
    Learning
  • Brenner(2006) believes that
    psychology-based learning is an important field
    in economics. In fact, psychology-based learning
    is also much related to behavioral finance.
    However, traditional approaches have difficulty
    in dealing with it.
  • ABM should be a promising tool

45
Thanks for your attention!
  • Email weiz_at_tjufe.edu.cn
  • zhangwei_at_nsfc.gov.cn
  • Tele 86-022-27891308
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