United we Stand: Improving Sentiment Analysis by Joining Machine Learning and Rule Based Methods
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George A. Vouros | Vangelis Karkaletsis | Manfred Klenner | Stefanos Petrakis | Vassiliki Rentoumi | V. Karkaletsis | M. Klenner | Vassiliki Rentoumi | Stefanos Petrakis | G. Vouros
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