Portfolio Optimization Based on Return Prediction and Semi Absolute Deviation (SAD)

Gharyni Nurkhair Mulyono, Deni Saepudin, Aniq Atiqi Rohmawati
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Abstract

A portfolio is a collection of investment financial assets managed by financial institutions or individuals. In investment activities, investors expect minimal loss risk and optimal stock portfolio weight to get maximum profit. Investors can monitor changes in stock index values to compare portfolio performance. This research has discussed how to build a portfolio based on stock datasets with the LQ45 index using return predictions from the artificial neural network (ANN) method with semi-absolute deviation (SAD). Furthermore, the portfolio is optimized by looking for weights that match it. After that, a comparison of portfolio performance was carried out using the Sharpe ratio (SR) method between the semi-absolute deviation (SAD) portfolio and the portfolio resulting from the formation of the equal weight (EW) portfolio. Portfolio performance with ANN prediction and SAD is better than equal-weight portfolios in terms of mean return, standard deviation, and sharpe ratio for portfolios with few stocks, namely 2 and 3 stocks. In addition, a portfolio with a higher number of stocks can make the portfolio value from the ANN close prediction algorithm process and the selection of weights based on SAD is better than portfolios with equal weight for each list of stocks in the portfolio.
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基于收益预测和半绝对偏差的投资组合优化
投资组合是由金融机构或个人管理的投资金融资产的集合。在投资活动中,投资者期望最小的损失风险和最优的股票组合权重以获得最大的利润。投资者可以监测股票指数的变化来比较投资组合的表现。本文讨论了基于LQ45指数的股票数据集,利用半绝对偏差人工神经网络(ANN)方法预测收益的方法来构建投资组合。此外,通过寻找与之匹配的权重来优化投资组合。然后,利用夏普比率(SR)方法对半绝对偏差(SAD)投资组合与等权重(EW)投资组合进行组合绩效比较。对于股票较少的组合,即2只股票和3只股票,采用人工神经网络预测和SAD的组合在平均收益、标准差和夏普比率方面都优于等权组合。此外,股票数量较多的投资组合可以从人工神经网络的密切预测算法过程中获得投资组合的价值,并且基于SAD的权重选择比投资组合中每个股票列表的权重相等的投资组合要好。
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