消费者投诉处理机构

G. Shobana, S. Sanjay, V. Saran, G. K. Vardan
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引用次数: 0

摘要

无数的消费者投诉面临着难以对消费者的不满进行分类的问题。申诉通常由冗长的文本组成,需要花费大量的人力和时间。投诉可能会被划入错误的类别。要解决难于处理每一项投诉并将其引向有关部门的问题。为了解决这些问题,我们有一个想法,使用机器学习算法来学习并将投诉分类到各自的类别中,并对客户投诉进行情感分析,以获得每个投诉的优先级。Python FLASK API用于启用应用程序交互。用户在应用程序中输入消费者投诉,对消费者投诉进行情感分析和分类,并显示分类投诉的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Consumer Grievance Handler
Myriad of consumer complaints has subjected to the difficulty in classifying consumer's grievances. Grievances usually comprises of lengthy texts which takes lots of manpower and time. Complaints can be filed into wrong categories. Difficulty in going through every sole grievance and directing them to relevant departments is to be dealt. To solve these issues, we have an idea of using machine learning algorithms to learn and classify the complaints into their respective categories and perform sentimental analysis on the customer complaints to obtain the priority of each complaint. Python FLASK API is used to enable application interaction. The user should enter the consumer complaint in the application, and the sentimental analysis and categorization of consumer complaints is done and the accuracy of the complaint classified is displayed.
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