Deep Learning Approach for Sentimental Analysis of Hotel Review on Bengali text

Jannatul Jahan Bonny, Nuzhat Jabeen Haque, Md. Rohmat Ulla, P. Kanungoe, Zahid Hassan Ome, Mohd. Istiaq Hossain Junaid
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引用次数: 3

Abstract

We live in an age of technology. Technology is advancing day by day. People in India (Kolkata), Bangladesh, who use the Bengali language as a communication language, use the internet daily. Internet users are increasing day by day. Moreover, people like to visit many tourist places. So, they have to stay in a hotel or resort. They give various reviews on websites and many social media. But not everybody gives thoughts in the English language. People in Bangladesh, India (Kolkata) give reviews in Bengali. So, this is hard to detect for the hotel management system. So, in this paper, we are planning to build a model that can analyze the Bengali text and detect whether the reviews are bad or good since there is no work on Bengali text in this particular area. The datas are collected by surveys, various social media reviews, ratings, etc., and then label those data. After cleaning and extracting multiple features, the datas were trained into DL(Deep Learning) and ML(Machine Learning) models. At the end, it is found that the Long Term Short Term (LSTM) comparatively gives better results than other models. This work will create a significant effect on the hotel and tourism industries.
基于深度学习的孟加拉语酒店评论情感分析
我们生活在一个科技时代。科技日新月异。在印度(加尔各答)和孟加拉国,人们使用孟加拉语作为交流语言,每天都使用互联网。互联网用户日益增多。此外,人们喜欢参观许多旅游景点。所以,他们必须住在酒店或度假胜地。他们在网站和许多社交媒体上给出各种评论。但不是每个人都用英语思考。孟加拉国、印度(加尔各答)的人们用孟加拉语进行评论。所以,这对于酒店管理系统来说是很难察觉的。因此,在本文中,我们计划建立一个模型,可以分析孟加拉语文本,并检测评论是好是坏,因为在这个特定领域没有关于孟加拉语文本的工作。这些数据是通过调查、各种社交媒体评论、评级等方式收集的,然后给这些数据贴上标签。在清洗和提取多个特征后,将数据训练成DL(深度学习)和ML(机器学习)模型。最后,我们发现长期-短期(Long - Term - Short Term, LSTM)模型相对于其他模型具有更好的效果。这项工作将对酒店和旅游业产生重大影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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