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Titlebook: Computational Linguistics and Intelligent Text Processing; 16th International C Alexander Gelbukh Conference proceedings 2015 Springer Inte

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0302-9743 utational Linguistics and Intelligent Text Processing, CICLing 2015, held in Cairo, Egypt, in April 2015. .The total of 95 full papers presented was carefully reviewed and selected from 329 submissions. They were organized in topical sections on grammar formalisms and lexical resources; morphology a
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https://doi.org/10.1007/978-3-8348-9050-4g these two tree kernels. We also proposed a new model for sentiment analysis on aspects. Our model can identify polarity of a given aspect based on the aspect-opinion relation extraction. It outperformed the model without relation extraction by 5.8% on accuracy and 4.6% on F-measure.
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,Grundlagen der Strömungsmechanik,ances supervised learning for polarity classification by leveraging on linguistic rules and sentic computing resources. The proposed method is evaluated on two publicly available Twitter corpora to illustrate its effectiveness.
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,Grundgleichungen der Strömungsmechanik,all number of features connected by a set of paths. The experiments on sentiment classification demonstrate our proposed method can get better results comparing with other methods. Qualitative discussion also shows that our proposed method with graph-based representation is interpretable and effective in sentiment classification task.
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Das methodische Konzept dieses Buches,ins with the help of dependency based sentiment analysis techniques and several Sentiment lexicons. We have achieved the maximum accuracy of 75.38% and 65.06% in identifying the temporal and sentiment information, respectively.
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,Methoden der Strömungsmechanik,ts. Our algorithm offers better precision than existing methods, and handles previously unseen language well. We show competitive results on a set of opinionated sentences about laptops and restaurants from a SemEval-2014 Task 4 challenge.
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Modelling Public Sentiment in Twitter: Using Linguistic Patterns to Enhance Supervised Learningances supervised learning for polarity classification by leveraging on linguistic rules and sentic computing resources. The proposed method is evaluated on two publicly available Twitter corpora to illustrate its effectiveness.
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