Mohamed Houcine Haddoud


2016

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Word Embeddings and Convolutional Neural Network for Arabic Sentiment Classification
Abdelghani Dahou | Shengwu Xiong | Junwei Zhou | Mohamed Houcine Haddoud | Pengfei Duan
Proceedings of COLING 2016, the 26th International Conference on Computational Linguistics: Technical Papers

With the development and the advancement of social networks, forums, blogs and online sales, a growing number of Arabs are expressing their opinions on the web. In this paper, a scheme of Arabic sentiment classification, which evaluates and detects the sentiment polarity from Arabic reviews and Arabic social media, is studied. We investigated in several architectures to build a quality neural word embeddings using a 3.4 billion words corpus from a collected 10 billion words web-crawled corpus. Moreover, a convolutional neural network trained on top of pre-trained Arabic word embeddings is used for sentiment classification to evaluate the quality of these word embeddings. The simulation results show that the proposed scheme outperforms the existed methods on 4 out of 5 balanced and unbalanced datasets.