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Wiseman, Sam Joshua

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Wiseman

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Sam Joshua

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Wiseman, Sam Joshua

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Now showing 1 - 4 of 4
  • Publication

    Learning Anaphoricity and Antecedent Ranking Features for Coreference Resolution

    (Association for Computational Linguistics, 2015) Wiseman, Sam Joshua; Rush, Alexander Sasha; Goodridge, Andrew; Weston, Jason

    We introduce a simple, non-linear mention-ranking model for coreference resolution that attempts to learn distinct feature representations for anaphoricity detection and antecedent ranking, which we encourage by pre-training on a pair of corresponding subtasks. Although we use only simple, unconjoined features, the model is able to learn useful representations, and we report the best overall score on the CoNLL 2012 English test set to date.

  • Publication

    Discriminatively Reranking Abductive Proofs for Plan Recognition

    (AAAI Publications, 2014) Wiseman, Sam Joshua; Goodridge, Andrew

    We investigate the use of a simple, discriminative reranking approach to plan recognition in an abductive setting. In contrast to recent work, which attempts to model abductive plan recognition using various formalisms that integrate logic and graphical models (such as Markov Logic Networks or Bayesian Logic Programs), we instead advocate a simpler, more flexible approach in which plans found through an abductive beam-search are discriminatively scored based on arbitrary features. We show that this approach performs well even with relatively few positive training examples, and we obtain state-of-the-art results on two abductive plan recognition datasets, outperforming more complicated systems.

  • Publication

    Antecedent Prediction Without a Pipeline

    (Association for Computational Linguistics, 2016) Wiseman, Sam Joshua; Rush, Alexander Sasha; Goodridge, Andrew

    We consider several antecedent prediction models that use no pipelined features generated by upstream systems. Models trained in this way are interesting because they allow for side-stepping the intricacies of upstream models, and because we might expect them to generalize better to situations in which upstream features are unavailable or unreliable. Through quantitative and qualitative error analysis we identify what sorts of cases are particularly difficult for such models, and suggest some directions for further improvement.

  • Publication

    Challenges in Data-to-Document Generation

    (Association for Computational Linguistics, 2017) Wiseman, Sam Joshua; Shieber, Stuart; Rush, Alexander Sasha

    Recent neural models have shown significant progress on the problem of generating short descriptive texts conditioned on a small number of database records. In this work, we suggest a slightly more difficult data-to-text generation task, and investigate how effective current approaches are on this task. In particular, we introduce a new, large-scale corpus of data records paired with descriptive documents, propose a series of extractive evaluation methods for analyzing performance, and obtain baseline results using current neural generation methods. Experiments show that these models produce fluent text, but fail to convincingly approximate human-generated documents. Moreover, even templated baselines exceed the performance of these neural models on some metrics, though copy- and reconstruction-based extensions lead to noticeable improvements.