The analysis of spoken language is widely considered to be a more challenging task than the analysis of written text. All of the difficulties of written language can generally be found in spoken language as well. Parsing spontaneous speech must, however, also deal with problems such as speech disfluencies, the looser notion of grammaticality, and the lack of clearly marked sentence boundaries. The contamination of the input with errors of a speech recognizer can further exacerbate these problems. Most natural language parsing algorithms are designed to analyze "clean" grammatical input. Because they reject any input which is found to be ungrammatical in even the slightest way, such parsers are unsuitable for parsing spontaneous sp...
In this paper we will present an approach to natural language processing which we define as "hybrid"...
Analysis and renovation of large software portfolios requires syntax analysis of multiple, usually...
In automatic speech recognition, a statistical language model (LM) predicts the probability of the n...
The focus of this thesis proposal is to improve the ability of a computational system to understand ...
We argue that grammatical analysis is a viable alternative to concept spotting for processing spoken...
This paper classifies distinctive phenomena occur-ring in Japanese spontaneous speech, and proposes ...
Grammar-based parsing is a prevalent method for natural language understanding (NLU) and has been in...
htmlabstractThis thesis is about a master's project as part of the one year master study 'Software-...
Analysis and renovation of large software portfolios requires syntax analysis of multiple, usually e...
AbstractWe describe the behaviour of three variants of GLR parsing: (i) Farshi’s original correction...
The rule-based parsing is a prevalent method for the natural language understanding (NLU) and has be...
The Generalized LR (GLR) parsing algorithm is attractive for use in parsing programming languages be...
Abstract. The Generalized LR (GLR) parsing algorithm is attractive for use in parsing programming la...
Language Models (LMs) represent a crucial component in the architecture of Automatic Speech Recognit...
Spoken language 'grammatical error correction' (GEC) is an important mechanism to help learners of a...
In this paper we will present an approach to natural language processing which we define as "hybrid"...
Analysis and renovation of large software portfolios requires syntax analysis of multiple, usually...
In automatic speech recognition, a statistical language model (LM) predicts the probability of the n...
The focus of this thesis proposal is to improve the ability of a computational system to understand ...
We argue that grammatical analysis is a viable alternative to concept spotting for processing spoken...
This paper classifies distinctive phenomena occur-ring in Japanese spontaneous speech, and proposes ...
Grammar-based parsing is a prevalent method for natural language understanding (NLU) and has been in...
htmlabstractThis thesis is about a master's project as part of the one year master study 'Software-...
Analysis and renovation of large software portfolios requires syntax analysis of multiple, usually e...
AbstractWe describe the behaviour of three variants of GLR parsing: (i) Farshi’s original correction...
The rule-based parsing is a prevalent method for the natural language understanding (NLU) and has be...
The Generalized LR (GLR) parsing algorithm is attractive for use in parsing programming languages be...
Abstract. The Generalized LR (GLR) parsing algorithm is attractive for use in parsing programming la...
Language Models (LMs) represent a crucial component in the architecture of Automatic Speech Recognit...
Spoken language 'grammatical error correction' (GEC) is an important mechanism to help learners of a...
In this paper we will present an approach to natural language processing which we define as "hybrid"...
Analysis and renovation of large software portfolios requires syntax analysis of multiple, usually...
In automatic speech recognition, a statistical language model (LM) predicts the probability of the n...