TY - JOUR
T1 - Trading profitability from learning and adaptation on the Tokyo stock exchange
AU - Yamamoto, Ryuichi
N1 - Publisher Copyright:
© 2015 Informa UK Limited, trading as Taylor & Francis Group.
PY - 2016/6/2
Y1 - 2016/6/2
N2 - This study proposes unexamined technical trading rules, which are dynamically switching strategies among filter, moving average and trading-range breakout rules. The dynamically switching strategy is formulated based on a discrete choice theory consistent with the concept of myopic utility maximization. We utilize the transaction data of the individual stocks listed on the Nikkei 225 from September 1, 2005 to August 31, 2007. We demonstrate that switching strategies produce positive returns and their performance is better than those from the buy-and-hold and non-switching strategies over our sample periods. We also demonstrate equivalent performance for switching with different learning horizons, implying that behavioural heterogeneity of stock investors arises from the coexistence of different strategies with varying degrees of learning horizons. Our result supports several research assumptions and results on agent-based theoretical models that successfully replicate empirical features in financial markets, such as fat tails of return distributions and volatility clustering. However, upon considering the effects of data-snooping bias superior performance disappears.
AB - This study proposes unexamined technical trading rules, which are dynamically switching strategies among filter, moving average and trading-range breakout rules. The dynamically switching strategy is formulated based on a discrete choice theory consistent with the concept of myopic utility maximization. We utilize the transaction data of the individual stocks listed on the Nikkei 225 from September 1, 2005 to August 31, 2007. We demonstrate that switching strategies produce positive returns and their performance is better than those from the buy-and-hold and non-switching strategies over our sample periods. We also demonstrate equivalent performance for switching with different learning horizons, implying that behavioural heterogeneity of stock investors arises from the coexistence of different strategies with varying degrees of learning horizons. Our result supports several research assumptions and results on agent-based theoretical models that successfully replicate empirical features in financial markets, such as fat tails of return distributions and volatility clustering. However, upon considering the effects of data-snooping bias superior performance disappears.
KW - Adaptation
KW - Agent-based model
KW - Learning
KW - Technical analysis
KW - Tokyo stock exchange
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U2 - 10.1080/14697688.2015.1091941
DO - 10.1080/14697688.2015.1091941
M3 - Article
AN - SCOPUS:84946615574
SN - 1469-7688
VL - 16
SP - 969
EP - 996
JO - Quantitative Finance
JF - Quantitative Finance
IS - 6
ER -