Abstract
This paper presents an approach for automatically learning reference resolution, which involves using natural language expressions, including spatial language descriptions, to refer to an object in a context. This is useful in conversational systems that need to understand the context of an utterance, like multi-modal or embodied dialogue systems. Markov Logic Networks are explored as a way of jointly inferring a reference object from an utterance with some simple utterance structure, and properties from the real world context. An introduction to mlns, with a small example, is given. Reference resolution and the role of spatial language are introduced. Different aspects of combining an utterance with properties of a context are explored. It is concluded that mlns are promising in resolving a contextual reference object.
Original language | American English |
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Title of host publication | ESSLLI 2012 Student Session Proceedings |
State | Published - 2012 |
Externally published | Yes |
Keywords
- markov logic networks
- reference resolution
- spatial language
EGS Disciplines
- Computer Sciences