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首页> 外文期刊>Journal of supercomputing >Predicting the customer's opinion on amazon products using selective memory architecture-based convolutional neural network
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Predicting the customer's opinion on amazon products using selective memory architecture-based convolutional neural network

机译:使用基于选择性内存架构的卷积神经网络预测客户对亚马逊产品的看法

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摘要

Opinion mining and sentiment analysis are useful to extract subjective information out of bulk text documents. Predicting the customer's opinion on amazon products has several benefits like reducing customer churn, agent monitoring, handling multiple customers, tracking overall customer satisfaction, quick escalations, and upselling opportunities. Though performing sentiment analysis is a challenging task for the researchers to identify the user's sentiments from the large datasets, it is unstructured in nature, and also includes slangs, misspells, and abbreviations. To address this problem, a new proposed system is developed in this research study. Here, the proposed system comprises of four major phases; they are data collection, pre-processing, keyword extraction, and classification. Initially, the input data were collected from the dataset: amazon customer review. After collecting the data, pre-processing was carried out for enhancing the quality of collected data. The pre-processing phase comprises of three systems: lemmatization, review spam detection, and removal of stop words and URLs. Then, an effective topic modelling approach latent Dirichlet allocation along with modified possibilistic fuzzy C-Means was applied to extract the keywords and also helps in identifying the concerned topics. The extracted keywords were classified into three forms (positive, negative, and neutral) by applying an effective machine learning classifier: Selective memory architecture-based convolutional neural network. The experimental outcome showed that the proposed system enhanced the accuracy in sentiment analysis up to 6-20% related to the existing systems.
机译:意见采矿和情感分析可用于提取批量文本文件中的主观信息。预测客户对亚马逊产品的看法有几个好处,如减少客户流失,代理监控,处理多个客户,跟踪整体客户满意度,快速升级以及抚养机会。虽然表演情感分析是研究人员识别用户从大型数据集的情绪的具有挑战性的任务,但它在自然界中是非结构化的,并且还包括俚语,拼写保存和缩写。为了解决这个问题,在本研究中开发了一个新的建议系统。这里,所提出的系统包括四个主要阶段;它们是数据收集,预处理,关键字提取和分类。最初,从DataSet收集输入数据:Amazon客户审查。收集数据后,进行预处理以提高收集数据的质量。预处理阶段包括三个系统:lemmatization,审查垃圾邮件检测,并删除停止单词和URL。然后,应用有效的主题建模方法潜伏的Dirichlet分配以及修改的可能性模糊C-Meance来提取关键字,并有助于识别有关主题。通过应用有效的机器学习分类器:基于选择性内存架构的卷积神经网络,将提取的关键字分为三种形式(正极,阴性和中性)。实验结果表明,该系统提高了致情绪分析的准确性,高达6-20%与现有系统相关。

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