Learning and applying contextual constraints in sentence comprehension

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A parallel distributed processing model is described that learns to comprehend single clause sentences. Specifically, it assigns thematic roles to sentence constituents, disambiguates ambiguous words, instantiates vague words, and elaborates implied roles. The sentences are pre-segmented into constituent phrases. Each constituent is processed in turn to update an evolving representation of the event described by the sentence. The model uses the information derived from each constituent to revise its ongoing interpretation of the sentence and to anticipate additional constituents. The network learns to perform these tasks through practice on processing example sentence/event pairs. The learning procedure allows the model to take a statistical approach to solving the bootstrapping problem of learning the syntax and semantics of a language from the same data. The model performs very well on the corpus of sentences on which it was trained, and generalizes to sentences on which it was not trained, but learns slowly.

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论文评审过程:Available online 19 February 2003.

论文官网地址:https://doi.org/10.1016/0004-3702(90)90008-N