Hussam Hamdan
Aix-Marseille University
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Publication
Featured researches published by Hussam Hamdan.
north american chapter of the association for computational linguistics | 2015
Hussam Hamdan; Patrice Bellot; Frédéric Béchet
This paper describes our sentiment analysis systems which have been built for SemEval2015 Task 10 Subtask B and E. For subtask B, a Logistic Regression classifier has been trained after extracting several groups of features including lexical, syntactic, lexiconbased, Z score and semantic features. A weighting schema has been adapted for positive and negative labels in order to take into account the unbalanced distribution of tweets between the positive and negative classes. This system is ranked third over 40 participants, it achieves average F1 64.27 on Twitter data set 2015 just 0.57% less than the first system. We also present our participation in Subtask E in which our system has got the second rank with Kendall metric but the first one with Spearman for ranking twitter terms according to their association with the positive sentiment.
north american chapter of the association for computational linguistics | 2015
Hussam Hamdan; Patrice Bellot; Frédéric Béchet
This paper describes our contribution in Opinion Target Extraction OTE and Sentiment Polarity sub tasks of SemEval 2015 ABSA task. A CRF model with IOB notation has been adopted for OTE with several groups of features including syntactic, lexical, semantic, sentiment lexicon features. Our submission for OTE is ranked fifth over twenty submissions. A Logistic Regression model with a weighting schema of positive and negative labels have been used for sentiment polarity; several groups of features (lexical, syntactic, semantic, lexicon and Z score) are extracted. Our submission for Sentiment Polarity is ranked third over ten submissions on the restaurant data set, third over thirteen on the laptops data set, but the first over eleven on the hotel data set that is out-of-domain set.
international conference on computational linguistics | 2014
Hussam Hamdan; Patrice Bellot; Frédéric Béchet
In this paper, we present our contribution in SemEval2014 ABSA task, some supervised methods for Aspect-Based Sentiment Analysis of restaurant and laptop reviews are proposed, implemented and evaluated. We focus on determining the aspect terms existing in each sentence, finding out their polarities, detecting the categories of the sentence and the polarity of each category. The evaluation results of our proposed methods exhibit a significant improvement in terms of accuracy and f-measure over all four subtasks regarding to the baseline proposed by SemEval organisers.
north american chapter of the association for computational linguistics | 2016
Hussam Hamdan
This paper describes our sentiment analysis system which has been built for Sentiment Analysis in Twitter Task of SemEval-2016. We have used a Logistic Regression classifier with different groups of features. This system is an improvement to our previous system Lsislif in Semeval-2015 after removing some features and adding new features extracted from a new automatic constructed sentiment lexicon.
international conference on computational linguistics | 2014
Hussam Hamdan; Patrice Bellot; Frédéric Béchet
Twitter has become more and more an important resource of user-generated data. Sentiment Analysis in Twitter is interesting for many applications and objectives. In this paper, we propose to exploit some features which can be useful for this task; the main contribution is the use of Z-scores as features for sentiment classification in addition to pre-polarity and POS tags features. Our experiments have been evaluated using the test data provided by SemEval 2013 and 2014. The evaluation demonstrates that Z_scores features can significantly improve the prediction performance.
north american chapter of the association for computational linguistics | 2016
Hussam Hamdan
This paper describes our contribution in Opinion Target Extraction and Sentiment Polarity sub-tasks of SemEval 2016 ABSA task. A Conditional Random Field model has been adopted for opinion target extraction. A Logistic Regression model with a weighting schema of positive and negative labels has been used for sentiment polarity. Our submission for opinion target extraction is ranked second among the constrained systems which do not use additional resources and sixth over 19 submissions among the constrained and unconstrained systems in English restaurant reviews. Our submission for Sentiment Polarity is ranked eighth over 22 submissions on the laptop reviews.
joint conference on lexical and computational semantics | 2013
Hussam Hamdan; Frédéric Béchet; Patrice Bellot
Research on computing science | 2015
Hussam Hamdan; Patrice Bellot; Frédéric Béchet
CLEF (Working Notes) | 2014
Chahinez Benkoussas; Hussam Hamdan; Shereen Albitar; Anaïs Ollagnier; Patrice Bellot
meeting of the association for computational linguistics | 2017
Hussam Hamdan