Many NLP tasks can be regarded as a selection problem from a set of options, such as classification tasks, multi-choice question answering, etc. Textual entailment (TE) has been shown as the state-of-the-art (SOTA) approach to dealing with those selection problems. TE treats input texts as premises (P), options as hypotheses (H), then handles the selection problem by modeling (P, H) pairwise. Two limitations: first, the pairwise modeling is unaware of other options, which is less intuitive since humans often determine the best options by comparing competing candidates; second, the inference process of pairwise TE is time-consuming, especially when the option space is large. To deal with the two issues, this work first proposes a contextuali...
Textual Entailment (TE) aims at capturing major semantic inference needs across applications in Natu...
We present the architecture and the evaluation of a new system for recognizing textual entailment (R...
A core problem in Machine Learning (ML) is the definition of meaningful representations of input ob...
Many NLP tasks can be regarded as a selection problem from a set of options, such as classification ...
This paper proposes a new architecture for textual inference in which finding a good alignment is se...
This paper advocates a new architecture for textual inference in which finding a good alignment is s...
Traditional approaches to Natural Language Text Processing limit performance and flexibility by comm...
In this paper, we focus on multiple-choice reading comprehension which aims to answer a question giv...
A key challenge at the core of many NLP tasks is the ability to determine which conclusions can be i...
The ability to reason with natural language is a fundamental prerequisite for many NLP tasks such as...
We present a new dataset and model for textual entailment, derived from treating multiple-choice que...
We combine two methods to tackle the textual entailment challenge: a shallow method based on word ov...
Textual entailment among sentences is an important part of applied semantic inference. In this paper...
International audienceThis paper investigates the use of neural networks for the acquisition of sele...
To prepare an evaluation dataset for textual entailment (TE) recognition, human annotators label ric...
Textual Entailment (TE) aims at capturing major semantic inference needs across applications in Natu...
We present the architecture and the evaluation of a new system for recognizing textual entailment (R...
A core problem in Machine Learning (ML) is the definition of meaningful representations of input ob...
Many NLP tasks can be regarded as a selection problem from a set of options, such as classification ...
This paper proposes a new architecture for textual inference in which finding a good alignment is se...
This paper advocates a new architecture for textual inference in which finding a good alignment is s...
Traditional approaches to Natural Language Text Processing limit performance and flexibility by comm...
In this paper, we focus on multiple-choice reading comprehension which aims to answer a question giv...
A key challenge at the core of many NLP tasks is the ability to determine which conclusions can be i...
The ability to reason with natural language is a fundamental prerequisite for many NLP tasks such as...
We present a new dataset and model for textual entailment, derived from treating multiple-choice que...
We combine two methods to tackle the textual entailment challenge: a shallow method based on word ov...
Textual entailment among sentences is an important part of applied semantic inference. In this paper...
International audienceThis paper investigates the use of neural networks for the acquisition of sele...
To prepare an evaluation dataset for textual entailment (TE) recognition, human annotators label ric...
Textual Entailment (TE) aims at capturing major semantic inference needs across applications in Natu...
We present the architecture and the evaluation of a new system for recognizing textual entailment (R...
A core problem in Machine Learning (ML) is the definition of meaningful representations of input ob...