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Gender Prediction From Tweets: Improving Neural Representations With Hand-Crafted Features

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Date

2019

Authors

Tekir, Selma
Sezerer, Erhan

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Cornell University

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Abstract

Author profiling is the characterization of an author through some key attributes such as gender, age, and language. In this paper, a RNN model with Attention (RNNwA) is proposed to predict the gender of a twitter user using their tweets. Both word level and tweet level attentions are utilized to learn ’where to look’. This model1 is improved by concatenating LSA-reduced n-gram features with the learned neural representation of a user. Both models are tested on three languages: English, Spanish, Arabic. The improved version of the proposed model (RNNwA + n-gram) achieves state-of-the-art performance on English and has competitive results on Spanish and Arabic.

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Keywords

RNN Model, Datasets, Model architecture, Neural network-based models, Neural representations

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Citation

Tekir, S., Sezerer, E., Polatbilek, O. (2019). Gender prediction from tweets: Improving neural representations with hand-crafted features. Yayın için başvurusu yapılmış metin.

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arXiv

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694

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235

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