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Voutilainen a 1999 handcrafted rules in van hal teren

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Voutilainen, A. (1999). Handcrafted rules. In van Hal- teren, H. (Ed.), Syntactic Wordclass Tagging , pp. 217–246. Kluwer.
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482 Bibliography Wade, E., Shriberg, E., and Price, P. J. (1992). User behav- iors affecting speech recognition. In ICSLP-92 , pp. 995– 998. Wagner, R. A. and Fischer, M. J. (1974). The string-to-string correction problem. Journal of the Association for Comput- ing Machinery , 21 , 168–173. Walker, M. A. (2000). An application of reinforcement learn- ing to dialogue strategy selection in a spoken dialogue sys- tem for email. Journal of Artificial Intelligence Research , 12 , 387–416. Walker, M. A., Fromer, J. C., and Narayanan, S. S. (1998). Learning optimal dialogue strategies: A case study of a spoken dialogue agent for email. In COLING/ACL-98 , Montreal, Canada, pp. 1345–1351. Walker, M. A., Kamm, C. A., and Litman, D. J. (2001). To- wards developing general models of usability with PAR- ADISE. Natural Language Engineering: Special Issue on Best Practice in Spoken Dialogue Systems , 6 (3), 363–377. Walker, M. A. and Whittaker, S. (1990). Mixed initiative in dialogue: An investigation into discourse segmentation. In ACL-90 , Pittsburgh, PA, pp. 70–78. Wang, H., Lu, Z., Li, H., and Chen, E. (2013). A dataset for research on short-text conversations.. In EMNLP 2013 , pp. 935–945. Wang, S. and Manning, C. D. (2012). Baselines and bigrams: Simple, good sentiment and topic classification. In ACL 2012 , pp. 90–94. Ward, N. and Tsukahara, W. (2000). Prosodic features which cue back-channel feedback in English and Japanese. Jour- nal of Pragmatics , 32 , 1177–1207. Ward, W. and Issar, S. (1994). Recent improvements in the CMU spoken language understanding system. In ARPA Human Language Technologies Workshop , Plains- boro, N.J. Warriner, A. B., Kuperman, V., and Brysbaert, M. (2013). Norms of valence, arousal, and dominance for 13,915 En- glish lemmas. Behavior Research Methods , 45 (4), 1191– 1207. Weaver, W. (1949/1955). Translation. In Locke, W. N. and Boothe, A. D. (Eds.), Machine Translation of Languages , pp. 15–23. MIT Press. Reprinted from a memorandum written by Weaver in 1949. Weinschenk, S. and Barker, D. T. (2000). Designing Effec- tive Speech Interfaces . Wiley. Weischedel, R., Hovy, E., Marcus, M., Palmer, M., Belvin, R., Pradhan, S., Ramshaw, L., and Xue, N. (2011). Ontonotes: A large training corpus for enhanced pro- cessing. In Joseph Olive, Caitlin Christianson, J. M. (Ed.), Handbook of Natural Language Processing and Ma- chine Translation: DARPA Global Automatic Language Exploitation , pp. 54–63. Springer. Weischedel, R., Meteer, M., Schwartz, R., Ramshaw, L. A., and Palmucci, J. (1993). Coping with ambiguity and un- known words through probabilistic models. Computational Linguistics , 19 (2), 359–382. Weizenbaum, J. (1966). ELIZA – A computer program for the study of natural language communication between man and machine. Communications of the ACM , 9 (1), 36–45. Weizenbaum, J. (1976). Computer Power and Human Rea- son: From Judgement to Calculation . W.H. Freeman and Company. Wen, T.-H., Gasic, M., Kim, D., Mrkˇsi´c, N., Su, P.-H., Vandyke, D., and Young, S. J. (2015a). Stochastic lan- guage generation in dialogue using recurrent neural net- works with convolutional sentence reranking. In SIGDIAL 2015 , pp. 275––284.
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