Undoubtedly, social media are brainstormed by a tremendous volume of stories, feedback, reviews, and reactions expressed in various languages and idioms, even though some are factually incorrect. These motifs make assessing such data challenging, time-consuming, and vulnerable to misinterpretation. This paper describes a classification model for movie reviews founded on deep learning approaches. Almost 500KB pairs of balanced data from the IMDb movie review databases are employed to train the model. People's perspectives regarding movies were classified using both the long short-term memory (LSTM) and convolutional neural network (CNN) strategies. According to the findings, the CNN algorithm's prediction accuracy rate would be almost 97.4%. Furthermore, the model trained by LSTM resulted in accuracies of around and applying 99.2% within the Keras library. The model is investigated more by modification of model parameters. According to the outcomes, LTSM outperforms CNN in assessing IMDb movie reviews and is computationally less costly than LSTM.
翻译:毫无疑问,社交媒体被大量以各种语言和语言表达的故事、反馈、评论和反应所驱散,尽管有些是事实不正确。 这些概念使得评估这类数据具有挑战性、耗时和容易被误解。本文描述了基于深层学习方法的电影审查分类模式。使用IMDb电影审查数据库的近500千B对平衡数据来培训模型。人们关于电影的观点通过长期短期记忆(LSTM)和共生神经网络(CNN)战略进行分类。根据调查结果,CNN算法预测准确率将接近97.4%。此外,LSTM所培训的模式导致Keras图书馆内部的近乎理解和应用99.2%。模型通过修改模型参数来进行更多的调查。根据结果,LTSM在评估IMDb电影审查时超越CNN的功能,计算成本低于LSTM。