A semantic parser maps natural language commands (NLs) from the users to executable meaning representations (MRs), which are later executed in certain environment to obtain user-desired results. The fully-supervised training of such parser requires NL/MR pairs, annotated by domain experts, which makes them expensive to collect. However, weakly-supervised semantic parsers are learnt only from pairs of NL and expected execution results, leaving the MRs latent. While weak supervision is cheaper to acquire, learning from this input poses difficulties. It demands that parsers search a large space with a very weak learning signal and it is hard to avoid spurious MRs that achieve the correct answer in the wrong way. These factors lead to a perform...
How do we build a semantic parser in a new domain starting with zero training ex-amples? We introduc...
We present a novel statistical approach to semantic parsing, WASP, for constructing a complete, form...
Gaspers J, Cimiano P, Wrede B. Semantic parsing of speech using grammars learned with weak supervisi...
We present a method for training a semantic parser using only a knowledge base and an unlabeled text...
Neural semantic parsing has achieved impressive results in recent years, yet its success relies on t...
Neural semantic parsers usually generate meaning representation tokens from natural language tokens ...
Open-text semantic parsers are designed to interpret any statement in natural language by inferring ...
Machine Learning and Inference methods have become ubiquitous in our attempt to induce more abstract...
Semantic parsing is the task of mapping a natural language sentence into a complete, formal meaning ...
Semantic parsing is the task of translating natural language utterances onto machine-interpretable p...
This paper focuses on a system, Wolfie (WOrd Learning From Interpreted Examples), that acquires a se...
Semantic parsing is a technique aimed at constructing a structured representation of the meaning of ...
Semantic parsing is an important NLP problem, particularly for voice assistants such as Alexa and Go...
The problem of spurious programs is a longstanding challenge when training a semantic parser from we...
The best performing NLP models to date are learned from large volumes of manually-annotated data. Fo...
How do we build a semantic parser in a new domain starting with zero training ex-amples? We introduc...
We present a novel statistical approach to semantic parsing, WASP, for constructing a complete, form...
Gaspers J, Cimiano P, Wrede B. Semantic parsing of speech using grammars learned with weak supervisi...
We present a method for training a semantic parser using only a knowledge base and an unlabeled text...
Neural semantic parsing has achieved impressive results in recent years, yet its success relies on t...
Neural semantic parsers usually generate meaning representation tokens from natural language tokens ...
Open-text semantic parsers are designed to interpret any statement in natural language by inferring ...
Machine Learning and Inference methods have become ubiquitous in our attempt to induce more abstract...
Semantic parsing is the task of mapping a natural language sentence into a complete, formal meaning ...
Semantic parsing is the task of translating natural language utterances onto machine-interpretable p...
This paper focuses on a system, Wolfie (WOrd Learning From Interpreted Examples), that acquires a se...
Semantic parsing is a technique aimed at constructing a structured representation of the meaning of ...
Semantic parsing is an important NLP problem, particularly for voice assistants such as Alexa and Go...
The problem of spurious programs is a longstanding challenge when training a semantic parser from we...
The best performing NLP models to date are learned from large volumes of manually-annotated data. Fo...
How do we build a semantic parser in a new domain starting with zero training ex-amples? We introduc...
We present a novel statistical approach to semantic parsing, WASP, for constructing a complete, form...
Gaspers J, Cimiano P, Wrede B. Semantic parsing of speech using grammars learned with weak supervisi...