B. Y. Ducharme-r and . Vincent-p, A neural probabilistic language model, NIPS'00, 2000.

B. J. and D. M. Pereira-f, Biographies, Bollywood, boom-boxes and blenders : Domain adaptation for sentiment classification, ACL, 2007.

B. L. Le, The backpropagation cookbook, NIPS workshop : Trick of the Trade, 1996.

C. R. Weston, A unified architecture for natural language processing : Deep neural networks with multitask learning, International Conference on Machine Learning, ICML, 2008.

D. M. and K. A. Crammer-k, Multi-domain learning by confidence-weighted parameter combination, Machine Learning Jour, vol.79, issue.12, pp.123-149, 2010.

F. R. Clérot-f, A methodology to explain neural network classification, Neural Networks, vol.15, issue.2, pp.237-246, 2002.

G. S. Blei-d, Predicting legislative roll calls from text, ICML, pp.489-496, 2011.

G. X. Bordes-a and . Bengio-y, Domain adaptation for largescale sentiment classification : A deep learning approach, ICML, 2011.

J. N. Liu-b, Review spam detection, WWW, 2007.

M. J. Selouani-s.-a, A hybrid subspace-connectionist data mining approach for sales forecasting in the video game industry, Computer Science and Information Engineering, vol.5, pp.666-670, 2009.

P. S. Ni-x, S. , and Y. Q. Chen-z, Cross-domain sentiment classification via spectral feature alignment, WWW, 2010.

P. B. Lee-l, A sentimental education : Sentiment analysis using subjectivity summarization based on minimum cuts, ACL, 2004.

P. B. Lee-l, Opinion mining and sentiment analysis, Information Retrieval, vol.2, pp.1-135, 2008.

P. B. and L. L. Vaithyanathan-s, Thumbs up ? : sentiment classification using machine learning techniques, ACL-Empirical Methods in NLP, pp.79-86, 2002.

P. F. and D. G. Verstiggel-j, Le traitement des expressions idiomatiques : Intérêt d'un corpus et de l'analyse sémantique latente, IPMU, pp.1481-1484, 2002.

R. A. and G. V. Gallinari-p, Réseau de neurones profond et svm pour la classification de sentiments, CORIA, 2011.

W. M. Yaeger-l, Building a general purpose crossdomain sentiment mining model, IEEE World Congress on Computer Science and Information Engineering, pp.472-476, 2009.

Y. J. Niblack-w, Sentiment mining in webfountain, ICDE, pp.1073-1083, 2005.

Z. Z. Liu-b, . Zhang-l, . Xu-h, and . Jia-p, Identifying evaluative opinions in online discussions, AAAI, 2011.

Z. L. Liu-b, Identifying noun product features that imply opinions, ACL, 2011.