Shallow Recurrent Neural Network for Personality Recognition in Source Code

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http://hdl.handle.net/2183/19312Colecciones
- Investigación (FFIL) [877]
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Shallow Recurrent Neural Network for Personality Recognition in Source CodeFecha
2016-12Cita bibliográfica
Yerai Doval, Carlos Gómez-Rodríguez and Jesús Vilares, Shallow Recurrent Neural Network for Personality Recognition in Source Code, in Prasenjit Majumder, Mandar Mitra, Parth Mehta, Jainisha Sankhavara and Kripabandhu Ghosh (eds.), Working notes of FIRE 2016 - Forum for Information Retrieval Evaluation, CEUR Workshop Proceedings, Vol. 1737, pp. 33-37, 2016.
Resumen
[Abstract] Personality recognition in source code constitutes a novel task in the field of author profiling on written text. In this paper we describe our proposal for the PR-SOCO shared task in FIRE 2016, which is based on a shallow recurrent LSTM neural network that tries to predict five personalityaits of the author given a source code fragment. Our preliminary results show that it should be possible to tackle the problem at hand with our approach but also that there is still room for improvement through more complex network architectures and training processes
Palabras clave
Personality recognition
Source code
Recurrent neural net- work
LSTM
Source code
Recurrent neural net- work
LSTM
Versión del editor
ISSN
1613-0073