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Surveying stock market portfolio optimization techniques

机译:调查股市组合优化技术

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Optimizing a stock market portfolio requires decision making at two distinct stages, first is to select the stocks and second is to assign distribution of investment amount among these selected stocks. Given the historical data of stocks, the role of optimization models is to select stocks and assign portfolio proportion to the selected stocks. Selection and weight assignment to stocks are co-occurring activities. Investors prime motive is to maximize the return and minimize the risk of portfolio. Stock market is uncertain and volatile and therefore, Artificial Intelligence, Machine Learning and Soft Computing techniques are viable candidates which can help in optimization and making decisions using such data. This paper surveys the research carried out in the domain of stock market portfolio optimization. Paper compares research efforts in the domain on the basis of techniques used, risk models and stock markets considered. It is observed from the surveyed papers that Artificial Intelligence, Machine Learning and Soft Computing techniques are widely accepted for studying and evaluating stock market behavior and optimizing portfolios.
机译:优化股票市场投资组合需要在两个不同的阶段进行决策,首先是选择股票,其次是在这些选择的股票之间分配投资额的分配。给定股票的历史数据,优化模型的作用是选择股票并为所选股票分配投资组合比例。股票的选择和权重分配是同时发生的活动。投资者的主要动机是最大程度地获得回报,并最大程度地降低投资组合的风险。股市是不确定的且易变的,因此,人工智能,机器学习和软计算技术是可行的候选者,它们可以帮助优化和使用此类数据做出决策。本文对在股票市场投资组合优化领域进行的研究进行了调查。本文根据所使用的技术,风险模型和所考虑的股票市场比较了该领域的研究成果。从被调查的论文中可以看出,人工智能,机器学习和软计算技术被广泛用于研究和评估股票市场行为以及优化投资组合。

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