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Social Media Content Categorization Using Supervised Based Machine Learning Methods and Natural Language Processing in Bangla Language

机译:社交媒体内容分类使用孟加拉语程的基于监督的机器学习方法和自然语言处理

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Social media has acquired the primary platform for people to connect. Millions of posts generate from social media consistently. The people of Bangladesh are habitually comfortable sharing their opinion on social media in the Bangla language. It is often arduous to place them in distinct categories relying on textual information. Classifying social media posts are challenging. It tends to be complicated to scrutinize when scripted in Bangla language. Our aspiration is to categorize these opinions from social platforms to enable searching, filtering, and organizing based on post sentiment. We employed the Sentiment Analysis to interpret the persuasion of the posts. We introduced a model that will classify the Bangla posts in several categories by using Support Vector Machine (SVM), K-Nearest Neighbor (KNN), Decision Tree, Random Forest, Logistic regression algorithms. We adopted the algorithm that provides the most reliable performance to classify the social media post with quite proficient in Bangla Language.
机译:社交媒体已经获得了人们连接的主要平台。数百万帖子始终如一地从社交媒体产生。孟加拉国人民习惯性地舒适地分享了孟加拉语中的社交媒体的意见。将它们放在依赖文本信息的不同类别中经常艰巨。分类社交媒体帖子是挑战性的。在孟加拉语言脚本时,它往往很复杂。我们的愿望是将这些意见从社交平台上归类为基于后情绪进行搜索,过滤和组织。我们雇用了情绪分析来解释员工的说服。我们推出的一款机型,将通过使用支持向量机(SVM),K近邻(KNN),决策树,随机森林,Logistic回归算法在几类孟加拉职位分类。我们采用了算法,提供最可靠的性能,以庞大庞大的语言分类社交媒体帖子。

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