一种基于查询的改进LDA产品评论Summerizer模型

Sangramjit Hazarika, A. M. Senthil Kumar
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引用次数: 0

摘要

在这个数字时代,必须有一种系统能够对海量的数据进行总结,并对特定主题下的文档进行分类,而不脱离其语义意义。在需要的时候,可以从这些文件中提取出一些重要的信息。该系统可以简化许多在其他时候可能需要大量手工工作的繁琐流程。此外,浏览文档的摘要版本变得很容易,而不是调查大量内容。效率提高了,体力劳动减少了。该系统基本上是主题建模和问题回答与合适的机器学习算法的集成版本。因此,简而言之,该系统可以简化一些传统的工作,也可以解决一些与存储和处理相关的技术问题,因为作为输入的文档的摘要版本只被存储和进一步处理,以便为用户提出的查询提供具体的答案。
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A Novel Query Based Summerizer Model Of Product Reviews Using Modified LDA
In this digital era, there must be a system which can summarize huge lot of data and categorize the documents under specific topic without its semantic meaning being detached. Some important information can be extracted out of these documents as and when it is needed. The system can ease out many cumbersome processes which in other times might require a lot of manual work. Additionally, it becomes easy to navigate through a summarized version of a document rather than investigating a huge lot. The efficiency gets increased and manual work gets decreased. The system is basically an integrated version of both topic modelling and question answering with suitable machine learning algorithms. So, in short, the system works out to ease out some traditional work and can also be a solution to some technical problems related to storage and processing since a summarized version of the document given as input is only stored and further processed to give specific answers to the queries raised by the users.
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