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Stock Price Change Rate Prediction by Utilizing Social Network Activities

机译:利用社交网络活动预测股价变化率

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摘要

Predicting stock price change rates for providing valuable information to investors is a challenging task. Individual participants may express their opinions in social network service (SNS) before or after their transactions in the market; we hypothesize that stock price change rate is better predicted by a function of social network service activities and technical indicators than by a function of just stock market activities. The hypothesis is tested by accuracy of predictions as well as performance of simulated trading because success or failure of prediction is better measured by profits or losses the investors gain or suffer. In this paper, we propose a hybrid model that combines multiple kernel learning (MKL) and genetic algorithm (GA). MKL is adopted to optimize the stock price change rate prediction models that are expressed in a multiple kernel linear function of different types of features extracted from different sources. GA is used to optimize the trading rules used in the simulated trading by fusing the return predictions and values of three well-known overbought and oversold technical indicators. Accumulated return and Sharpe ratio were used to test the goodness of performance of the simulated trading. Experimental results show that our proposed model performed better than other models including ones using state of the art techniques.
机译:预测股价变化率以向投资者提供有价值的信息是一项艰巨的任务。个体参与者可以在市场交易之前或之后在社交网络服务(SNS)中表达意见;我们假设,通过社交网络服务活动和技术指标的预测比通过股票市场活动的预测能更好地预测股票价格的变化率。该假设通过预测的准确性以及模拟交易的表现进行检验,因为通过投资者获得或遭受的利润或损失可以更好地衡量预测的成功或失败。在本文中,我们提出了一种混合模型,该模型结合了多核学习(MKL)和遗传算法(GA)。采用MKL优化股票价格变化率预测模型,该模型以从不同来源提取的不同类型特征的多核线性函数表示。通过将收益预测和三个众所周知的超买和超卖技术指标的值融合在一起,可以使用GA优化模拟交易中使用的交易规则。累积的收益率和夏普比率被用来检验模拟交易的绩效。实验结果表明,我们提出的模型比包括使用最新技术的模型在内的其他模型表现更好。

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