Sentence compression with semantic role constraints
Katsumasa Yoshikawa, Ryu Iida, et al.
ACL 2012
Previous approaches to instruction interpretation have required either extensive domain adaptation or manually annotated corpora. This paper presents a novel approach to instruction interpretation that leverages a large amount of unannotated, easy-to-collect data from humans interacting with a virtual world. We compare several algorithms for automatically segmenting and discretizing this data into (utterance, reaction) pairs and training a classifier to predict reactions given the next utterance. Our empirical analysis shows that the best algorithm achieves 70% accuracy on this task, with no manual annotation required. © 2012 Association for Computational Linguistics.
Katsumasa Yoshikawa, Ryu Iida, et al.
ACL 2012
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