We introduce a learning semantic parser, SCISSOR, that maps natural-language sen-tences to a detailed, formal, meaning-representation language. It first uses an integrated statistical parser to pro-duce a semantically augmented parse tree, in which each non-terminal node has both a syntactic and a semantic label. A compositional-semantics procedure is then used to map the augmented parse tree into a final meaning representation. We evaluate the system in two domains, a natural-language database interface and an interpreter for coaching instructions in robotic soccer. We present experimental results demonstrating that SCISSOR pro-duces more accurate semantic representa-tions than several previous approaches.
This paper focuses on a system, Wolfie (WOrd Learning From Interpreted Examples), that acquires a se...
Semantic parsing offers many opportunities to improve natural language understanding. We present a s...
Syntactic parsing is one of the best understood language processing applications. Since language and...
We introduce a learning semantic parser, SCISSOR, that maps natural-language sentences to a detailed...
textNatural language understanding is a sub-field of natural language processing, which builds autom...
For building question answering systems and natural lan-guage interfaces, semantic parsing has emerg...
Semantic parsing is the task of mapping a natural language sentence into a complete, formal meaning ...
We present a novel statistical approach to semantic parsing, WASP, for constructing a complete, form...
Computational systems that learn to transform natural-language sentences into semantic representatio...
Semantic parsing aims at mapping natural language text into meaning representations, which have the ...
Querying a database to retrieve an answer, telling a robot to perform an action, or teaching a comp...
In this report, the semantic information in parse selection is analyzed. A Python software model wa...
This paper describes a system, Wolfie (WOrd Learning From Interpreted Examples), that acquires a sem...
In this thesis, we investigate an approach for grammar induction that relies on se-mantics to drive ...
This paper describes a system, Wolfie (WOrd Learning From Interpreted Examples), that acquires a sem...
This paper focuses on a system, Wolfie (WOrd Learning From Interpreted Examples), that acquires a se...
Semantic parsing offers many opportunities to improve natural language understanding. We present a s...
Syntactic parsing is one of the best understood language processing applications. Since language and...
We introduce a learning semantic parser, SCISSOR, that maps natural-language sentences to a detailed...
textNatural language understanding is a sub-field of natural language processing, which builds autom...
For building question answering systems and natural lan-guage interfaces, semantic parsing has emerg...
Semantic parsing is the task of mapping a natural language sentence into a complete, formal meaning ...
We present a novel statistical approach to semantic parsing, WASP, for constructing a complete, form...
Computational systems that learn to transform natural-language sentences into semantic representatio...
Semantic parsing aims at mapping natural language text into meaning representations, which have the ...
Querying a database to retrieve an answer, telling a robot to perform an action, or teaching a comp...
In this report, the semantic information in parse selection is analyzed. A Python software model wa...
This paper describes a system, Wolfie (WOrd Learning From Interpreted Examples), that acquires a sem...
In this thesis, we investigate an approach for grammar induction that relies on se-mantics to drive ...
This paper describes a system, Wolfie (WOrd Learning From Interpreted Examples), that acquires a sem...
This paper focuses on a system, Wolfie (WOrd Learning From Interpreted Examples), that acquires a se...
Semantic parsing offers many opportunities to improve natural language understanding. We present a s...
Syntactic parsing is one of the best understood language processing applications. Since language and...