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Sentiment analysis on bangla and romanized bangla text using deep recurrent models

机译:使用深度递归模型对孟加拉语和罗马化孟加拉语文本进行情感分析

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Sentiment Analysis (SA) is an opinion mining study analyzing people's opinions, sentiments, evaluations and appraisals towards societal entities such as products, services, individuals, organizations, events, etc. Of late, most of the research works on SA in natural language processing (NLP) are focused on English language. However, it is noted that Bangla does not have a proper dataset that is both large and standard. As a result, recent research works with Bangla in SA have fallen short to produce results that can be both comparable to works done by others in other languages and reusable for further prospective research. In this work, a substantial textual dataset of both Bangla and Romanized Bangla texts have been provided which is first of this kind and post-processed, multiple validated, and ready for SAimplementation and experiments. Further, this dataset have been tested in Deep Recurrent model, specifically, Long Short Term Memory (LSTM), using two types of loss functions - binary cross-entropy and categorical cross-entropy, and also some experimental pre-training were conducted by using data from one validation to pre-train the other and vice versa. Lastly, the results along with analysis are presented in this research.
机译:情感分析(SA)是一种观点挖掘研究,用于分析人们对诸如产品,服务,个人,组织,事件等社会实体的观点,情感,评估和评估。最近,大多数有关SA在自然语言处理中的研究工作(NLP)专注于英语。但是,请注意,孟加拉邦没有适当的大型和标准数据集。结果,最近与孟加拉邦的Bangla进行的研究工作不足以产生既可以与其他语言的研究成果相媲美的结果,又可以用于进一步的前瞻性研究。在这项工作中,已经提供了孟加拉语和罗马化孟加拉语文本的大量文本数据集,该数据集是此类的首个,经过后处理,多次验证并准备进行SA实现和实验。此外,该数据集已在深​​度递归模型(即长期短期记忆(LSTM))中使用两种类型的损失函数(二进制交叉熵和分类交叉熵)进行了测试,并且还通过使用进行了一些实验性预训练来自一个验证的数据来预训练另一个验证,反之亦然。最后,结果与分析一起在本研究中给出。

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