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Deep Learning-based Sentiment Analysis of Facebook Data: The Case of Turkish Users

机译:基于深度学习的Facebook数据的情感分析:土耳其用户的案例

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摘要

Sentiment analysis (SA) is an essential task for many domains where it is crucial to know users' public opinion about events, products, brands, politicians and so on. Existing works on SA have concentrated on English texts including Twitter feeds and user reviews on hotels, movies and products. On the other hand, Facebook, as an online social network (OSN), has attracted quite limited attention from the research community. Among these, SA work on Turkish text obtained from OSNs are extremely scarce. In this paper, our aim is to perform SA on public Facebook data collected from Turkish user accounts. Our study differs from existing studies in terms of the data set scale, the natural language of the texts in the data set and the extent of experimental analyses that include both machine learning and deep learning techniques. We extensively report not only the results of different learning models involving SA but also statistical distribution of metadata of user activities across various user attributes (e.g. gender and age). Our experimental results indicate that recurrent neural networks achieve the best accuracy (i.e. 0.916) with word embeddings. To the best of our knowledge, this is the best result for SA on Facebook data in the context of the Turkish language.
机译:情绪分析(SA)对于许多域名来说至关重要,以了解用户对事件,产品,品牌,政治家等知识至关重要的重要任务。 SA的现有工程集中在英文文本上,包括Twitter Feeds和用户评论,包括酒店,电影和产品。另一方面,Facebook作为在线社交网络(OSN),从研究界引起了相当有限的关注。其中,从奥斯人获得的土耳其文本上的SA工作非常稀缺。在本文中,我们的目标是在从土耳其用户帐户收集的公共Facebook数据上执行SA。我们的研究与数据集规模的现有研究不同,数据集中文本的自然语言以及包括机器学习和深度学习技术的实验分析的程度。我们不仅会报告涉及SA的不同学习模型的结果,还涉及SA,而且还跨各种用户属性(例如性别和年龄)的用户活动元数据的统计分布。我们的实验结果表明,经常性的神经网络通过单词嵌入来实现最佳准确性(即0.916)。据我们所知,这是在土耳其语背景下为Facebook数据的最佳结果。

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