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A Comparative Analysis of Sentiment Analysis Using RNN-LSTM and Logistic Regression

机译:使用RNN-LSTM和Logistic回归的情感分析对比分析

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Social media analytics makes a big difference in the success or failure of an organization. The data gathered from social media can be used to get a hit type product by analyzing the data and getting important information about the need of the people. This can be done by implementing sentiment analysis on the available data and then accessing the feelings of the customers about the product or service and knowing if it is actually being liked by them or not. Tracking data of the customers helps the organization in many ways. This study was done to get familiarized with the concept of data analytics and how social media plays an important role in it. Furthermore, Web scraping of Twitter and YouTube data was done following which a standard dataset was selected to do the other analytics. The field of sentiment analysis was used to get the emotions of the people. Logistic regression and RNN-LSTM models were used to perform the same, and then, the results were compared.
机译:社交媒体分析在组织的成败中产生了很大的差异。 从社交媒体收集的数据可用于通过分析数据并获得有关人民需求的重要信息来获取命中类型产品。 这可以通过在可用数据上实施情绪分析来完成,然后访问客户的感受,并知道它是否实际上是由它们所喜好的。 跟踪客户的数据以多种方式帮助组织。 这项研究是为了熟悉数据分析的概念以及社交媒体如何在其中发挥重要作用。 此外,完成了Twitter和YouTube数据的Web缩写,后面选择了标准数据集进行了执行其他分析。 情绪分析领域用于获得人民的情绪。 Logistic回归和RNN-LSTM模型用于执行相同,然后进行比较结果。

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