The task of mapping natural language expressions to logical forms is referred to as semantic parsing. The syntax of logical forms that are based on programming or query languages, such as Python or SQL, is defined by a formal grammar. In this thesis, we present an efficient neural semantic parser that exploits the underlying grammar of logical forms to enforce well-formed expressions. We use an encoder-decoder model for sequence prediction. Syntactically valid programs are guaranteed by means of a bottom-up shift-reduce parser, that keeps track of the set of viable tokens at each decoding step. We show that the proposed model outperforms the standard encoder-decoder model across datasets and is competitive with comparable grammar-guided sem...
Semantic parsing is more popular than ever. One reason is that we have a rising number of semantical...
In this thesis, we investigate an approach for grammar induction that relies on se-mantics to drive ...
Neural methods have had several recent successes in semantic parsing, though they have yet to face t...
Humans are born with the ability to learn to perceive, comprehend and communicate with language. Co...
Target meaning representations for semantic parsing tasks are often based on programming or query la...
This is the memory of an exploratory research project on techniques for reasoning on text with Deep ...
Querying a database to retrieve an answer, telling a robot to perform an action, or teaching a comp...
International audienceWe propose an approach for semantic parsing that uses a recurrent neural netwo...
Research in semantic parsing has focused on developing computational systems capable of simultaneous...
This thesis investigates the role of linguistically-motivated generative models of syntax and semant...
Semantic parsing is the task of mapping a natural language sentence into a complete, formal meaning ...
Our goal in this thesis is to build a system that answers a natural language question (NL) by repres...
textNatural language understanding is a sub-field of natural language processing, which builds autom...
We propose a neural graphical model for parsing natural language sentences into their logical repres...
Computational systems that learn to transform natural-language sentences into semantic representatio...
Semantic parsing is more popular than ever. One reason is that we have a rising number of semantical...
In this thesis, we investigate an approach for grammar induction that relies on se-mantics to drive ...
Neural methods have had several recent successes in semantic parsing, though they have yet to face t...
Humans are born with the ability to learn to perceive, comprehend and communicate with language. Co...
Target meaning representations for semantic parsing tasks are often based on programming or query la...
This is the memory of an exploratory research project on techniques for reasoning on text with Deep ...
Querying a database to retrieve an answer, telling a robot to perform an action, or teaching a comp...
International audienceWe propose an approach for semantic parsing that uses a recurrent neural netwo...
Research in semantic parsing has focused on developing computational systems capable of simultaneous...
This thesis investigates the role of linguistically-motivated generative models of syntax and semant...
Semantic parsing is the task of mapping a natural language sentence into a complete, formal meaning ...
Our goal in this thesis is to build a system that answers a natural language question (NL) by repres...
textNatural language understanding is a sub-field of natural language processing, which builds autom...
We propose a neural graphical model for parsing natural language sentences into their logical repres...
Computational systems that learn to transform natural-language sentences into semantic representatio...
Semantic parsing is more popular than ever. One reason is that we have a rising number of semantical...
In this thesis, we investigate an approach for grammar induction that relies on se-mantics to drive ...
Neural methods have had several recent successes in semantic parsing, though they have yet to face t...