Title
Probabilistic dialogue models with prior domain knowledge
Abstract
Probabilistic models such as Bayesian Networks are now in widespread use in spoken dialogue systems, but their scalability to complex interaction domains remains a challenge. One central limitation is that the state space of such models grows exponentially with the problem size, which makes parameter estimation increasingly difficult, especially for domains where only limited training data is available. In this paper, we show how to capture the underlying structure of a dialogue domain in terms of probabilistic rules operating on the dialogue state. The probabilistic rules are associated with a small, compact set of parameters that can be directly estimated from data. We argue that the introduction of this abstraction mechanism yields probabilistic models that are easier to learn and generalise better than their unstructured counterparts. We empirically demonstrate the benefits of such an approach learning a dialogue policy for a human-robot interaction domain based on a Wizard-of-Oz data set.
Year
Venue
Keywords
2012
SIGDIAL Conference
prior domain knowledge,limited training data,probabilistic model,complex interaction domain,dialogue domain,dialogue state,probabilistic rule,probabilistic dialogue model,compact set,dialogue system,wizard-of-oz data,dialogue policy
Field
DocType
Citations 
Abstraction,Domain knowledge,Computer science,Compact space,Bayesian network,Artificial intelligence,Natural language processing,Probabilistic logic,Estimation theory,State space,Machine learning,Scalability
Conference
5
PageRank 
References 
Authors
0.61
29
1
Name
Order
Citations
PageRank
Pierre Lison114612.35