Sentimentalizer:基于云的Docker容器实用程序

Krishan Kumar, M. Kurhekar
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引用次数: 26

摘要

在这个计算机时代,最有趣的事情就是用机器来决定人类的意见。人类用观点向他人传达他们对许多事情的反应。随着个人博客、论坛讨论、在线评论网站和微博客网站(如Twitter)等丰富的意见媒介的日益普及和可用性,使用这些信息来理解和分析他人的情绪出现了新的挑战和机遇。然而,网络文本通常看起来很嘈杂,在词汇和句法层面上都代表着重大问题。在本文中,轻量级Docker容器在云上使用四种流行的分类方法作为情感分析的实用工具。它分析评论者在多个网站上对产品的评论。分析后的信息可以作为向客户推荐产品的依据。在NLTK基准电影评论数据集上进行了准确率、计算成本和资源利用率的评估过程。计算分析表明,本文提出的方法能够满足云上实时应用的要求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sentimentalizer: Docker container utility over Cloud
In this computer era, the most interesting thing is to determine the human opinion using machines. Humans use opinions for conveying their response on a host of things to others. With the increasing popularity and availability of enriching opinion mediums such as personal blogs, forum discussions, online review sites, and micro blogging sites like Twitter, there are new challenges and opportunities for using this information to understand and analyze the sentiments of others. However, web texts usually seem noisy and represent significant issues at the lexical as well as the syntactic level. In this paper, lightweight Docker container is employed over cloud as a utility for sentiment analysis using the four popular classification approaches. It analyzes the reviewer's comment on a product across multiple websites. The analyzed information can be used as a recommendation for the product to a customer. The evaluation process on NLTK benchmark movie review dataset is performed with accuracy, computational cost and resources utilization. The computational analysis shows that our proposed approach meets the requirements of the real time applications over Cloud.
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