Can Machine Learning Outperform the Market? Testing the Weak-form Efficiency Hypothesis of the Indian Stock Market Using Support Vector Machines

Robin Thomas
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Abstract

This article examines the validity of the weak form of the efficient market hypothesis (EMH) in the context of the Nifty stock market index by applying a support vector machine (SVM) model. The aim is to forecast future stock prices using historical data and to evaluate the performance of the SVM model based on accuracy, precision, recall and the area under the receiver operating characteristic (ROC) curve (AUC). The findings offer important implications for the efficiency of the Nifty market and its consequences for investors. The EMH posits that stock prices incorporate all available information, making it impossible to consistently beat the market using historical data. This article tests this proposition by using an SVM model to forecast future stock prices using historical data. The methodology consists of applying the SVM algorithm on historical data of the Nifty stock market index. Performance measures, such as accuracy, precision, recall and AUC, are used to assess the effectiveness of the SVM model. The results show an accuracy of 63.25% in forecasting stock prices, indicating a substantial agreement between predicted and actual labels. The precision score of the model is 97.97%, indicating a high proportion of correctly predicted positive instances. However, the recall score is relatively low at 34.36%, suggesting that some actual positive instances were overlooked. The ROC curve visually illustrates the trade-off between true positive rate and false positive rate for different classification thresholds. This article contributes to the literature on market efficiency by applying a novel SVM model to forecast future stock prices of the Nifty index and finding that the model outperforms random chance, thus challenging the weak form of the EMH.
机器学习能否跑赢市场?使用支持向量机测试印度股市的弱式效率假说
本文通过应用支持向量机(SVM)模型,研究了有效市场假说(EMH)弱形式在 Nifty 股票市场指数中的有效性。其目的是利用历史数据预测未来股票价格,并根据准确度、精确度、召回率和接收者工作特征曲线(ROC)下面积(AUC)评估 SVM 模型的性能。研究结果对 Nifty 市场的效率及其对投资者的影响具有重要意义。EMH 假设股票价格包含了所有可用信息,因此不可能利用历史数据持续战胜市场。本文通过使用 SVM 模型利用历史数据预测未来股票价格来验证这一观点。该方法包括在 Nifty 股票市场指数的历史数据上应用 SVM 算法。准确度、精确度、召回率和 AUC 等性能指标用于评估 SVM 模型的有效性。结果显示,预测股票价格的准确率为 63.25%,表明预测标签和实际标签之间存在很大的一致性。该模型的精确度得分是 97.97%,表明正确预测正实例的比例很高。然而,召回分数相对较低,仅为 34.36%,这表明一些实际的正面实例被忽略了。ROC 曲线直观地说明了不同分类阈值下真阳性率和假阳性率之间的权衡。本文应用新颖的 SVM 模型预测 Nifty 指数的未来股票价格,发现该模型优于随机概率,从而对 EMH 的弱形式提出了挑战,为市场效率方面的文献做出了贡献。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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