Affiliation:
1. School of Management, Northwestern Polytechnical University, Xi’an, Shaanxi, China
Abstract
With the continuous changes and development of financial markets, it has brought many difficulties to investment decision-making. For the multi-objective investment decision-making problem, the improved Ant colony optimization algorithms was used to improve the effectiveness and efficiency of the multi-objective investment decision-making. Therefore, based on intelligent Fuzzy clustering algorithm and Ant colony optimization algorithms, this paper studied a new multi-objective investment decision model, and proved the advantages of this method through comparative analysis of experiments. The experimental results showed that the improved Ant colony optimization algorithms has significantly reduced the system’s construction costs, operating costs and financial costs, all of which were controlled below 41%. Compared with the traditional Ant colony optimization algorithms, this method had lower values in policy risk, technical risk and market risk, and can effectively control risks. Meanwhile, the environmental, economic, and social benefits of this method were all above 58%, and the average absolute return rate and success rate in this experiment were 21.5450% and 69.4083%, respectively. Therefore, from the above point of view, the multi-objective investment decision model based on intelligent Fuzzy clustering algorithm and the improved Ant colony optimization algorithms can effectively help decision-makers to find the best investment decision-making scheme, and can improve the accuracy and stability of decision-making. This research can provide reference significance for other matters in the field of investment decision-making.
Reference19 articles.
1. An Improved SPEA2 Algorithm with Local Search for Multi-Objective Investment Decision-Making;Liu Xi;Applied Sciences,2019
2. Multi-objective decision-making approach for the optimal location of electric vehicle charging facilities;Liu;Computers, Materials and Continua,2019
3. A F K, A B L, B S U, An a posteriori decision support methodology for solving the multi-criteria supplier selection problem –Science Direct, European Journal of Operational Research 272(2) (2019), 505–522.
4. Multi-objective optimization approach for energy efficiency in microgrids;Guliashki;OnLine,2019
5. Picker routing optimization of storage stacker based on improved multi-objective iterative local search algorithm;Wei;Journal of Industrial and Management Optimization,2023