Abstract

Stochasticity and ambiguity are two aspects of uncertainty in economic problems. In the case of investments in risky assets, this uncertainty is manifested in the uncertainty of future returns. On the contrary, the complexity of the economic phenomenon itself and the ambiguity inherent in human thinking and judgment are characterized by indistinct boundaries. For the same problem, research from different perspectives can often provide us with more comprehensive and systematic information. Currently, the expected value of return or the variance representing risk is still used as a rational investment criterion for both single-stage portfolios and multistage portfolios. However, in general, the greater the expected return of an investor, the greater the risk he should take. Different investors have different requirements for profitability, but regardless of their expected return, they always hope to find a set of portfolios that maximize the probability of achieving the expected rate of return. In this paper, after analyzing the development of portfolio investment theory research, we take fuzzy information processing as the entry point and systematically discuss the theory and methods of fuzzy modeling of portfolio investment decision-making from the perspective of fuzziness around the portfolio investment decision-making process. The results of the empirical analysis show that the existence of basis constraints affects investors’ investment strategies as well as their final returns, but there is a limit to the influence of basis constraints on portfolio performance, and investors can obtain optimal investment returns by selecting a reasonable number of securities to form a portfolio based on the characteristics of different securities.

Highlights

  • Stochasticity and ambiguity are two aspects of uncertainty in economic problems

  • After analyzing the development of portfolio investment theory research, we take fuzzy information processing as the entry point and systematically discuss the theory and methods of fuzzy modeling of portfolio investment decision-making from the perspective of fuzziness around the portfolio investment decision-making process. e results of the empirical analysis show that the existence of basis constraints affects investors’ investment strategies as well as their final returns, but there is a limit to the influence of basis constraints on portfolio performance, and investors can obtain optimal investment returns by selecting a reasonable number of securities to form a portfolio based on the characteristics of different securities

  • How to use portfolio optimization models to obtain high-yield, low-risk investment strategies in the financial market is an important direction of modern financial theory research [2]. e basic idea of the portfolio is to diversify assets to hedge some of the risks and to study how to allocate limited assets to maximize returns and minimize risks in the face of future uncertainty

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Summary

Introduction

Stochasticity and ambiguity are two aspects of uncertainty in economic problems. In the case of investments in risky assets, this uncertainty is manifested in the uncertainty of future returns. How to use portfolio optimization models to obtain high-yield, low-risk investment strategies in the financial market is an important direction of modern financial theory research [2]. Complexity done in a case by case, in addition to being dependent on average and variance At this stage, it is not desirable for the investment activity to include a lot of securities assets in the portfolio with the related expenses such as stamp tax and fees [8]. With the development of the market, the fuzzy uncertainty in the securities market has been gradually paid attention to, and researchers have started to pay attention to the fuzziness in the securities market and use the methodological theory of fuzzy mathematics to study portfolio models, and fuzzy investment decision-making is becoming a frontier direction with extreme research significance [14]. When the investment scale is large, the computational efficiency of these exact algorithms will be greatly reduced, while intelligent algorithms have the advantages of high computational efficiency and better accuracy in solving this kind of quadratic programming problems, so many scholars focus on the study of solving this. erefore, many scholars focus on intelligent algorithms to solve this type of nonlinear programming, such as genetic algorithms and particle swarm optimization algorithms

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