This paper presents an empirical method for mapping speech input to shallow semantic representation. Semantic parsing is realized through a bottom-up type parsing paradigm where the operators are based on semantic concepts, obtained from a lexicon. A statistically trained model specializes the parser, by guiding the runtime beam-like search of possible parses. The semantic representation is a logical form equivalent to a Discourse Representation Structure (DRS). Each output of the parser is given a probability according to how similar, given a contextual word similarity measure, the parsing process for the input was to those collected during the training phase. Contextual information during parsing allows for better coverage of large domain...
The paper presents the IWCS 2019 shared task on semantic parsing where the goal is to produce Discou...
In this thesis, we investigate an approach for grammar induction that relies on se-mantics to drive ...
Humans are born with the ability to learn to perceive, comprehend and communicate with language. Co...
This paper presents a deep learning architecture for the semantic decoder component of a Statistical...
Semantic parsing is the task of translating natural language utterances into machine-readable meanin...
Most Spoken Dialog Systems are based on speech grammars and frame/slot semantics. The semantic descr...
How do we build a semantic parser in a new domain starting with zero training ex-amples? We introduc...
Semantic parsing is the task of translating natural language utterances onto machine-interpretable p...
Automatic speech recognition system (ASR) contains three main parts: an acoustic model, a lexicon a...
In this paper, a statistical framework for semantic parsing is described. The statistical model uses...
Thesis (Master's)--University of Washington, 2020Spoken language understanding entails both the auto...
Neural methods have had several recent successes in semantic parsing, though they have yet to face t...
Simulating human language understanding on the computer is a great challenge. A way to approach it i...
Robust spoken language understanding in large-scale conversational dialog applications is usually pe...
This paper shows results from the application of a novel variant of Random Forests to the shallow se...
The paper presents the IWCS 2019 shared task on semantic parsing where the goal is to produce Discou...
In this thesis, we investigate an approach for grammar induction that relies on se-mantics to drive ...
Humans are born with the ability to learn to perceive, comprehend and communicate with language. Co...
This paper presents a deep learning architecture for the semantic decoder component of a Statistical...
Semantic parsing is the task of translating natural language utterances into machine-readable meanin...
Most Spoken Dialog Systems are based on speech grammars and frame/slot semantics. The semantic descr...
How do we build a semantic parser in a new domain starting with zero training ex-amples? We introduc...
Semantic parsing is the task of translating natural language utterances onto machine-interpretable p...
Automatic speech recognition system (ASR) contains three main parts: an acoustic model, a lexicon a...
In this paper, a statistical framework for semantic parsing is described. The statistical model uses...
Thesis (Master's)--University of Washington, 2020Spoken language understanding entails both the auto...
Neural methods have had several recent successes in semantic parsing, though they have yet to face t...
Simulating human language understanding on the computer is a great challenge. A way to approach it i...
Robust spoken language understanding in large-scale conversational dialog applications is usually pe...
This paper shows results from the application of a novel variant of Random Forests to the shallow se...
The paper presents the IWCS 2019 shared task on semantic parsing where the goal is to produce Discou...
In this thesis, we investigate an approach for grammar induction that relies on se-mantics to drive ...
Humans are born with the ability to learn to perceive, comprehend and communicate with language. Co...