A. Aljanaki, Y. Yang, and M. Soleymani, Emotion in music task at mediaeval 2015, Working Notes Proceedings of the MediaEval 2015 Workshop, 2015.

J. Bergstra, O. Breuleux, F. Bastien, P. Lamblin, R. Pascanu et al., Theano: a cpu and gpu math expression compiler, Proc. of the Python for scientific computing conference (SciPy), p.3, 2010.

D. Bogdanov, N. Wack, E. Gómez, S. Gulati, P. Herrera et al., ESSENTIA, Proceedings of the 21st ACM international conference on Multimedia, MM '13, pp.493-498, 2013.
DOI : 10.1145/2502081.2502229

E. Coutinho, F. Weninger, B. Schuller, and K. Scherer, The Munich LSTM-RNN Approach to the MediaEval 2014â2014â ? AIJEmotion in Musicâ ? A ? I Task, Working Notes Proceedings of the MediaEval, 2014.

J. Elman, Finding Structure in Time, Cognitive Science, vol.49, issue.2, 1990.
DOI : 10.1207/s15516709cog1402_1

V. Imbrasaite and P. Robinson, Music emotion tracking with continuous conditional neural fields and relative representation, 2014.

. Cai, Music type classification by spectral contrast feature, Proc. ICME, pp.113-116, 2002.

Y. Kim, E. Schmidt, R. Igneco, O. Morton, P. Richardson et al., Emotion recognition: a state of the art review, 11th International Society for Music Information and Retrieval Conference, 2010.

B. C. Moore and B. R. Glasberg, Suggested formulae for calculating auditory???filter bandwidths and excitation patterns, The Journal of the Acoustical Society of America, vol.74, issue.3, pp.750-753, 1983.
DOI : 10.1121/1.389861

Y. Yang and H. H. Chen, Music emotion recognition, Proceedings of the international workshop on Human-centered multimedia , HCM '07, 2011.
DOI : 10.1145/1290128.1290132