JSAI2022

Presentation information

General Session

General Session » GS-10 AI application

[2P6-GS-10] AI application: market / game

Wed. Jun 15, 2022 5:20 PM - 6:40 PM Room P (Online P)

座長:西村 光平(ギリア)[現地]

5:40 PM - 6:00 PM

[2P6-GS-10-02] Instability of financial markets by optimizing investment strategies investigated by an agent-based model

〇Takanobu Mizuta1, Isao Yagi2, Kosei Takashima3 (1. SPARX Asset Management Co., Ltd., 2. Faculty of Informatics, Kogakuin University, 3. Faculty of Economics and Business Administration, Nagaoka University)

[[Online]]

Keywords:finance, stock investment, artificial market, multi-agent simulation

Most finance studies are discussed on the basis of several hypotheses, for example, investors rationally optimize their investment strategies. However, the hypotheses themselves are sometimes criticized. Market impacts, where trades of investors can impact and change market prices, making optimization impossible. In this study, we built an artificial market model by adding agents searching one optimized parameter to a whole simulation run to the prior model and investigated whether investors' inability to accurately estimate market impacts in their optimizations leads to optimization instability. In our results, the parameter of investment strategy never converged to a specific value but continued to change. This means that even if all other traders are fixed, only some investors will use backtesting to optimize their strategies, which lead to the time evolution of market prices becoming unstable. Therefore, the time evolution of market prices produced by investment strategies having such unstable parameters is highly unlikely to be predicted and have stable laws written by equations. This nature makes us suspect that financial markets include the principle of natural uniformity and indicates the difficulty of building an equation model explaining the time evolution of prices.

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