Traditional semantic parsers map language onto compositional, executable queries in a fixed schema. This mapping allows them to effectively leverage the information contained in large, formal knowledge bases (KBs, e.g., Freebase) to answer questions, but it is also fundamentally limiting---these semantic parsers can only assign meaning to language that falls within the KB's manually-produced schema. Recently proposed methods for open vocabulary semantic parsing overcome this limitation by learning execution models for arbitrary language, essentially using a text corpus as a kind of knowledge base. However, all prior approaches to open vocabulary semantic parsing replace a formal KB with textual information, making no use of the KB in the...
A central challenge in semantic parsing is handling the myriad ways in which knowl-edge base predica...
How do we build a semantic parser in a new domain starting with zero training ex-amples? We introduc...
Querying a database to retrieve an answer, telling a robot to perform an action, or teaching a comp...
Answering natural language questions us-ing the Freebase knowledge base has re-cently been explored ...
We consider the challenge of learning seman-tic parsers that scale to large, open-domain problems, s...
For building question answering systems and natural lan-guage interfaces, semantic parsing has emerg...
Open-text semantic parsers are designed to interpret any statement in natural language by inferring ...
International audienceWe propose the use of controlled natural language as a target for knowledge gr...
Semantic parsing is the task of translating natural language utterances onto machine-interpretable p...
In this paper we introduce a novel semantic parsing approach to query Freebase in natu-ral language ...
Most recent question answering (QA) systems query large-scale knowledge bases (KBs) to answer a ques...
We present an approach to learning a model-theoretic semantics for natural language tied to Freebase...
In this paper, we train a semantic parser that scales up to Freebase. Instead of relying on annotate...
One of the limitations of semantic parsing approaches to open-domain question answering is the lexic...
A central challenge in semantic parsing is handling the myriad ways in which knowl-edge base predica...
A central challenge in semantic parsing is handling the myriad ways in which knowl-edge base predica...
How do we build a semantic parser in a new domain starting with zero training ex-amples? We introduc...
Querying a database to retrieve an answer, telling a robot to perform an action, or teaching a comp...
Answering natural language questions us-ing the Freebase knowledge base has re-cently been explored ...
We consider the challenge of learning seman-tic parsers that scale to large, open-domain problems, s...
For building question answering systems and natural lan-guage interfaces, semantic parsing has emerg...
Open-text semantic parsers are designed to interpret any statement in natural language by inferring ...
International audienceWe propose the use of controlled natural language as a target for knowledge gr...
Semantic parsing is the task of translating natural language utterances onto machine-interpretable p...
In this paper we introduce a novel semantic parsing approach to query Freebase in natu-ral language ...
Most recent question answering (QA) systems query large-scale knowledge bases (KBs) to answer a ques...
We present an approach to learning a model-theoretic semantics for natural language tied to Freebase...
In this paper, we train a semantic parser that scales up to Freebase. Instead of relying on annotate...
One of the limitations of semantic parsing approaches to open-domain question answering is the lexic...
A central challenge in semantic parsing is handling the myriad ways in which knowl-edge base predica...
A central challenge in semantic parsing is handling the myriad ways in which knowl-edge base predica...
How do we build a semantic parser in a new domain starting with zero training ex-amples? We introduc...
Querying a database to retrieve an answer, telling a robot to perform an action, or teaching a comp...