On the dynamic adaptation of language models based on dialogue information
نویسندگان
چکیده
We present an approach to adapt dynamically the language models (LMs) used by a speech recognizer that is part of a spoken dialogue system. We have developed a grammar generation strategy that automatically adapts the LMs using the semantic information that the user provides (represented as dialogue concepts), together with the information regarding the intentions of the speaker (inferred by the dialogue manager, and represented as dialogue goals). We carry out the adaptation as a linear interpolation between a background LM, and one or more of the LMs associated to the dialogue elements (concepts or goals) addressed by the user. The interpolation weights between those models are automatically estimated on each dialogue turn, using measures such as the posterior probabilities of concepts and goals, estimated as part of the inference procedure to determine the actions to be carried out. We propose two approaches to handle the LMs related to concepts and goals. Whereas in the first one we estimate a LM for each one of them, in the second one we apply several clustering strategies to group together those elements that share some common properties, and estimate a LM for each cluster. Our evaluation shows how the system can estimate a dynamic model adapted to each dialogue turn, which helps to significantly improve the performance of the speech recognition, which leads to an improvement in both the language understanding and the dialogue management tasks.
منابع مشابه
Mutual Information and Perplexity Based Clustering of Dialogue Information for Dynamic Adaptation of Language Models
We present two approaches to cluster dialogue-based information obtained by the speech understanding module and the dialogue manager of a spoken dialogue system. The purpose is to estimate a language model related to each cluster, and use them to dynamically modify the model of the speech recognizer at each dialogue turn. In the first approach we build the cluster tree using local decisions bas...
متن کاملThe Inscience of Translation
Drawing on Henri Meschonnic’s notion of an “inscient ethics,” and putting “inscience” into dialogue with the old ideal of a “science” of translation, the article explores the collective socio-affective ecologies that organize and regulate social and professional norms and values of translation below the level of conscious awareness—as the true underlying structure not only of “subjectivity” (so...
متن کاملClustering of syntactic and discursive information for the dynamic adaptation of Language Models
In this paper we present an approach for clustering dialogue items, both semantic and discursive. We use Latent Semantic Analysis (LSA) to cluster the different dialogue items according to a correlation-based distance. After building a set of groups that make up a partition of the semantic or discursive space, we train a stochastic Language Model (LM) for each group. We use these LM to dynamica...
متن کاملThe Effect of Oral Dialogue Journals on Iranian EFL Learners'Communicative Competence
This study investigated the effect of oral dialogue journals on communicative competence of Iranian EFL learners. Participants of this study were 80 students of two Payam-e-Noor Universities who were proved to be homogenous in the communicative competence based on TSE (Test of Spoken English) interview. The participants of one of these universities were considered as the experimental group. The...
متن کاملAuthorization models for secure information sharing: a survey and research agenda
This article presents a survey of authorization models and considers their 'fitness-for-purpose' in facilitating information sharing. Network-supported information sharing is an important technical capability that underpins collaboration in support of dynamic and unpredictable activities such as emergency response, national security, infrastructure protection, supply chain integration and emerg...
متن کاملذخیره در منابع من
با ذخیره ی این منبع در منابع من، دسترسی به آن را برای استفاده های بعدی آسان تر کنید
عنوان ژورنال:
- Expert Syst. Appl.
دوره 40 شماره
صفحات -
تاریخ انتشار 2013