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Discourse-Based Modeling for AAC

机译:基于话语的AAC建模

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摘要

This paper presents a method for an AAC system to predict a whole response given features of the previous utterance from the interlocutor. It uses a large corpus of scripted dialogs, computes a variety of lexical, syntactic and whole phrase features for the previous utterance, and predicts features that the response should have, using an entropy-based measure. We evaluate the system on a held-out portion of the corpus. We find that for about 3.5% of cases in the held-out corpus, we are able to predict a response, and among those, over half are either exact or at least reasonable substitutes for the actual response. We also present some results on keystroke savings. Finally we compare our approach to a state-of-the-art chatbot, and show (not surprisingly) that a system like ours, tuned for a particular style of conversation, outperforms one that is not. Predicting possible responses automatically by mining a corpus of dialogues is a novel contribution to the literature on whole utterance-based methods in AAC. Also useful, we believe, is our estimate that about 3.5-4.0% of utterances in dialogs are in principle predictable given previous context.
机译:本文提出了一种系统AAC来预测给定从对话者先前发音的特征的整个响应的方法。它采用了大量的语料库脚本对话框,计算各种词法,句法和整个短语特征为以前的话语,并预测功能的响应应该有,使用基于熵的措施。我们评估对语料库的持有了部分系统。我们发现,在持有了语料库病例的3.5%,我们能够预测的响应,而那些中,超过一半或者是准确或有实际响应至少合理的替代品。我们还提出击键积蓄了一定的成效。最后,我们比较了我们国家的最先进的聊天机器人的方法,并显示(这并不奇怪),像我们这样的一个系统,调整为谈话的一个特定的风格,胜过一个不是。通过挖掘对话的语料库自动预测可能的响应是在整个AAC基于发声方法的文献的新颖的贡献。也有用,我们相信,我们的估计,约3.5-4.0对话中的话语%的原则给予预知之前的上下文。

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