STOCK PRICE PREDICTION USING GRID HYPER PARAMETER TUNING IN GATED RECURRENT UNIT

Shachi Bhavsar, Ravi Gor
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Abstract

Nowadays people are using social media to show their talent, to voice their viewpoint to society, etc. The use of social media has drastically grown during and after pandemic. Since, the power of social media is known to us, it would be beneficial to invest in such trending companies. But, understanding market pattern will be required to get maximum benefit from stock market, otherwise it may lead to losses. Machine learning is an essential tool for predicting such tasks. Here deep learning based Gated Recurrent Unit neural network is used for prediction. To develop optimized model, grid search algorithm is used for Gated Recurrent Unit hyper parameter tuning. Also, the hyper parameter values obtained by the model was used to verify and predict stock prices for other companies.
基于栅格超参数整定的门控循环单元股票价格预测
现在人们使用社交媒体来展示他们的才能,向社会表达他们的观点等等。在大流行期间和之后,社交媒体的使用急剧增加。既然我们知道社交媒体的力量,那么投资这些热门公司将是有益的。但是,要想从股票市场中获得最大的收益,就必须了解市场规律,否则就可能导致亏损。机器学习是预测此类任务的重要工具。这里使用基于深度学习的门控循环单元神经网络进行预测。为了建立优化模型,采用网格搜索算法对门控循环单元进行超参数整定。同时,利用模型得到的超参数值对其他公司的股价进行验证和预测。
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