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Unsupervised user intent modeling by feature-enriched matrix factorization

机译:通过功能丰富的矩阵分解实现无监督的用户意图建模

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Spoken language interfaces are being incorporated into various devices such as smart phones and TVs. However, dialogue systems may fail to respond correctly when users' request functionality is not supported by currently installed apps. This paper proposes a feature-enriched matrix factorization (MF) approach to model open domain intents, which allows a system to dynamically add unexplored domains according to users' requests. First we leverage the structured knowledge from Wikipedia and Freebase to automatically acquire domain-related semantics to enrich features of input utterances, and then MF is applied to model automatically acquired knowledge, published app textual descriptions and users' spoken requests in a joint fashion; this generates latent feature vectors for utterances and user intents without need of prior annotations. Experiments show that the proposed MF models incorporated with rich features significantly improve intent prediction, achieving about 34% of mean average precision (MAP) for both ASR and manual transcripts.
机译:口语界面已集成到各种设备中,例如智能手机和电视。但是,当当前安装的应用程序不支持用户的请求功能时,对话系统可能无法正确响应。本文提出了一种功能丰富的矩阵分解(MF)方法来对开放域意图进行建模,该方法允许系统根据用户的请求动态添加未开发的域。首先,我们利用Wikipedia和Freebase的结构化知识来自动获取与域相关的语义,以丰富输入语音的功能,然后将MF应用于以联合方式对自动获取的知识,已发布的应用文字说明和用户的语音请求进行建模;这样就无需事先注释即可生成语音和用户意图的潜在特征向量。实验表明,所提出的具有丰富功能的MF模型显着改善了意图预测,对于ASR和手动成绩单,均达到了约34%的平均平均精度(MAP)。

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