An automated advisor system to suggest response after analyzing user writings in social network

D. M. Abdullah, Sara Binte Zinnat, R. Tasmin, Shibbir Ahmed, M. Hasan
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Abstract

In the field of deep learning persistent research is going on to train the system by applying various algorithms and techniques. With a view to developing a well trained system many language corpus are built and then let the system to recognize the data. In this paper, we have proposed and implemented an automated comment advisor system that suggest emotion for comments after extracting writings (status or comments) from a social networking site (SNS) i.e. Facebook. Our developed system analyzes the sentences in each comment, parses the sentence for tokenize words to match the corpus type and finally makes a decision whether the comment reflects positive, negative or neutral emotion of human thoughts. This system also learns from others comment sentences and finds more appropriate emotion for the neutral sentences with ambiguous words where it is hard to find any emotion from the sentence.
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通过分析用户在社交网络上的留言,提出回应建议的自动顾问系统
在深度学习领域,通过应用各种算法和技术来训练系统的持续研究正在进行。为了开发一个训练有素的系统,建立了许多语言语料库,然后让系统对数据进行识别。在本文中,我们提出并实现了一个自动评论顾问系统,该系统在从社交网站(即Facebook)提取文章(状态或评论)后为评论提供情感建议。我们开发的系统对每条评论中的句子进行分析,对句子进行解析,将单词标记化以匹配语料库类型,最后判断评论是否反映了人类思想的积极、消极或中性情绪。该系统还从其他人的评论句子中学习,并为难以从句子中找到任何情感的带有歧义词的中性句子找到更合适的情感。
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