Slot filling is a challenging task in Spoken Language Understanding (SLU). Supervised methods usually require large amounts of annotation to maintain desirable performance. A solution to relieve the heavy dependency on labeled data is to employ bootstrapping, which leverages unlabeled data. However, bootstrapping is known to suffer from semantic drift. We argue that semantic drift can be tackled by exploiting the correlation between slot values (phrases) and their respective types. By using some particular weakly labeled data, namely the plain phrases included in sentences, we propose a weakly-supervised slot filling approach. Our approach trains two models, namely a classifier and a tagger, which can effectively learn from each other on ...
The lack of publicly available evaluation data for low-resource languages limits progress in Spoken ...
When building spoken dialogue systems for a new domain, a major bottleneck is developing a spoken la...
© 2014 IEEE. In this paper, a spoken command and control interface that acquires spoken language thr...
Slot filling is a crucial task in the Natural Language Understanding (NLU) component of a dialogue s...
Slot filling is a core operation for utterance understanding in task-oriented dialogue systems. Slot...
We introduce a novel approach that jointly learns slot filling and delexicalized sentence generation...
This paper addresses the problem of learning multiple spoken language understanding (SLU) tasks that...
Slot filling techniques are often adopted in language understanding components for task-oriented dia...
Bootstrapping is a minimally supervised machine learning algorithm used in natural language processi...
A key challenge of designing coherent seman-tic ontology for spoken language understand-ing is to co...
This paper investigates several approaches to bootstrapping a new spoken language understanding (SLU...
In this paper, we present a bootstrap training approach for lan-guage model (LM) classifiers. Traini...
Markov Logic (ML) is a novel approach to Natural Language Processing tasks [Richardson and Domingos,...
Finding the right representations for words is critical for building accurate NLP systems when domai...
We introduce a simple and novel method for the weakly supervised problem of Part-Of-Speech tagging w...
The lack of publicly available evaluation data for low-resource languages limits progress in Spoken ...
When building spoken dialogue systems for a new domain, a major bottleneck is developing a spoken la...
© 2014 IEEE. In this paper, a spoken command and control interface that acquires spoken language thr...
Slot filling is a crucial task in the Natural Language Understanding (NLU) component of a dialogue s...
Slot filling is a core operation for utterance understanding in task-oriented dialogue systems. Slot...
We introduce a novel approach that jointly learns slot filling and delexicalized sentence generation...
This paper addresses the problem of learning multiple spoken language understanding (SLU) tasks that...
Slot filling techniques are often adopted in language understanding components for task-oriented dia...
Bootstrapping is a minimally supervised machine learning algorithm used in natural language processi...
A key challenge of designing coherent seman-tic ontology for spoken language understand-ing is to co...
This paper investigates several approaches to bootstrapping a new spoken language understanding (SLU...
In this paper, we present a bootstrap training approach for lan-guage model (LM) classifiers. Traini...
Markov Logic (ML) is a novel approach to Natural Language Processing tasks [Richardson and Domingos,...
Finding the right representations for words is critical for building accurate NLP systems when domai...
We introduce a simple and novel method for the weakly supervised problem of Part-Of-Speech tagging w...
The lack of publicly available evaluation data for low-resource languages limits progress in Spoken ...
When building spoken dialogue systems for a new domain, a major bottleneck is developing a spoken la...
© 2014 IEEE. In this paper, a spoken command and control interface that acquires spoken language thr...