We introduce Named Entity (NE) Language Modelling, a stochastic finite state machine approach to identifying both words and NE categories from a stream of spoken data. We provide an overview of our approach to NE tagged language model (LM) generation together with results of the application of such a LM to the task of out-of-vocabulary (OOV) word reduction in large vocabulary speech recognition. Using the Wall Street Journal and Broadcast News corpora, it is shown that the tagged LM was able to reduce the overall word error rate by 14%, detecting up to 70% of previously OOV words. We also describe an example of the direct tagging of spoken data with NE categories
Transcribing speech in properly formatted written language presents some challenges for automatic sp...
We propose a new approach to improving named entity recognition (NER) in broadcast news speech data....
We describe a systematic and application-oriented approach to training and evaluating named entity r...
In this paper we describe stochastic finite state model for named entity (NE) identification, based ...
In this paper we present a method of discriminatively training language models for spoken language u...
Statistical language models used in large-vocabulary speech recognition must properly encapsulate th...
International audienceThis paper presents an enhanced approach for adapting a Language Model (LM) to...
The health and life science domains are well known for their wealth of named entities found in large...
The health and life science domains are well known for their wealth of named entities found in large...
This paper presents an analysis of named entity recognition and classification in spontaneous speech...
We have developed two conceptually different systems that are able to identify named entities from s...
We propose a Named Entity (NE) recog-nition method in which word chunks are repeatedly decomposed an...
In almost all applications of automatic speech recognition, especially in spontaneous speech tasks, ...
The output of a speech recognition system is a stream of text features that is overlayed by noise re...
We analyze neural network architectures that yield state of the art results on named entity recognit...
Transcribing speech in properly formatted written language presents some challenges for automatic sp...
We propose a new approach to improving named entity recognition (NER) in broadcast news speech data....
We describe a systematic and application-oriented approach to training and evaluating named entity r...
In this paper we describe stochastic finite state model for named entity (NE) identification, based ...
In this paper we present a method of discriminatively training language models for spoken language u...
Statistical language models used in large-vocabulary speech recognition must properly encapsulate th...
International audienceThis paper presents an enhanced approach for adapting a Language Model (LM) to...
The health and life science domains are well known for their wealth of named entities found in large...
The health and life science domains are well known for their wealth of named entities found in large...
This paper presents an analysis of named entity recognition and classification in spontaneous speech...
We have developed two conceptually different systems that are able to identify named entities from s...
We propose a Named Entity (NE) recog-nition method in which word chunks are repeatedly decomposed an...
In almost all applications of automatic speech recognition, especially in spontaneous speech tasks, ...
The output of a speech recognition system is a stream of text features that is overlayed by noise re...
We analyze neural network architectures that yield state of the art results on named entity recognit...
Transcribing speech in properly formatted written language presents some challenges for automatic sp...
We propose a new approach to improving named entity recognition (NER) in broadcast news speech data....
We describe a systematic and application-oriented approach to training and evaluating named entity r...