The Way to Invest: Trading Strategies Based on ARIMA and Investor Personality

Author:

Tang XiaoyuORCID,Xu Sijia,Ye HuiORCID

Abstract

In the field of financial investment, accurate prediction of financial market values can increase investor profits. Investor personality affects specific portfolio solutions, which keeps them symmetrical in the process of investment competition. However, information is often asymmetric in financial markets, and this information bias often results in different future returns for investors. Nowadays, machine learning algorithms are widely used in the field of financial investment. Many advanced machine learning algorithms can effectively predict future market changes and provide a scientific basis for investor decisions. The purpose of this paper is to study the problem of optimal matching of financial investment by using machine learning algorithms combined with finance and to reduce the impact of information asymmetry for investors effectively. Moreover, based on the model results, we study the effects of different investor personalities on factors such as expected investment returns and the number of transactions. Based on the time-series characteristics of price data, through multi-model comparison, we select the ARIMA model combined with particle swarm algorithm to determine the optimal prediction model and introduce the concepts of mean-variance model, Sharpe ratio, and efficient frontier to find the balance point of risk and return. In this study, we use gold and bitcoin price data from 2016–2021 to develop optimal investment strategies and study the impact of investor behavior on trading strategies.

Funder

National Natural Science Foundation of China

the National natural sciences fund youth fund project

Jiangsu University of science and technology

Publisher

MDPI AG

Subject

Physics and Astronomy (miscellaneous),General Mathematics,Chemistry (miscellaneous),Computer Science (miscellaneous)

Reference35 articles.

1. Kannan, K.S., Sekar, P.S., Sathik, M., and Arumugam, P. Financial stock market forecast using data mining techniques. Proc. Int. Multiconference Eng. Comput. Sci., 2010. 1.

2. Tyson, E. Investing for Dummies, 2011.

3. Gold versus stock investment: An econometric analysis;Mulyadi;Int. J. Dev. Sustain.,2012

4. Financial market risk and gold investment in an emerging market: The case of Malaysia;Ibrahim;Int. J. Islam. Middle East. Financ. Manag.,2012

5. Synthetic commodity money;Selgin;J. Financ. Stab.,2015

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