Recognizing Textual Entailment (RTE) was proposed as a unified evaluation framework to compare semantic understanding of different NLP systems. In this survey paper, we provide an overview of different approaches for evaluating and understanding the reasoning capabilities of NLP systems. We then focus our discussion on RTE by highlighting prominent RTE datasets as well as advances in RTE dataset that focus on specific linguistic phenomena that can be used to evaluate NLP systems on a fine-grained level. We conclude by arguing that when evaluating NLP systems, the community should utilize newly introduced RTE datasets that focus on specific linguistic phenomena
Since 2005, researchers have worked on a broad task called Recognizing Textual Entailment (RTE), whi...
ii This thesis introduces the applied notion of textual entailment as a generic empiri-cal task that...
International audienceWe focus on textual entailments mediated by syntax and propose a new methodolo...
Recognizing Textual Entailment (RTE) began as a unified framework to evaluate the reasoning capabili...
In the last few years, a number of NLP researchers have developed and participated in the task of Re...
While semantic inference has always been a major focus in Computational Linguistics, the topic has b...
The goal of identifying textual entailment – whether one piece of text can be plausibly inferred fr...
In this paper, we introduce our Recognizing Textual Entailment (RTE) system developed on the basis o...
Applied textual entailment is a newly introduced generic empirical task that captures major semanti...
A key challenge at the core of many NLP tasks is the ability to determine which conclusions can be i...
Textual Entailment (TE) aims at capturing major semantic inference needs across applications in Natu...
Textual Entailment Recognition is a semantic inference task that is required in many natural languag...
International audienceThe aim of this paper is to show how we can handle the Recognising Textual Ent...
What’s the best way to assess the performance of a semantic component in an NLP system? Tradition in...
This paper describes on-going efforts to annotate a corpus of almost 16,000 answer pairs with an est...
Since 2005, researchers have worked on a broad task called Recognizing Textual Entailment (RTE), whi...
ii This thesis introduces the applied notion of textual entailment as a generic empiri-cal task that...
International audienceWe focus on textual entailments mediated by syntax and propose a new methodolo...
Recognizing Textual Entailment (RTE) began as a unified framework to evaluate the reasoning capabili...
In the last few years, a number of NLP researchers have developed and participated in the task of Re...
While semantic inference has always been a major focus in Computational Linguistics, the topic has b...
The goal of identifying textual entailment – whether one piece of text can be plausibly inferred fr...
In this paper, we introduce our Recognizing Textual Entailment (RTE) system developed on the basis o...
Applied textual entailment is a newly introduced generic empirical task that captures major semanti...
A key challenge at the core of many NLP tasks is the ability to determine which conclusions can be i...
Textual Entailment (TE) aims at capturing major semantic inference needs across applications in Natu...
Textual Entailment Recognition is a semantic inference task that is required in many natural languag...
International audienceThe aim of this paper is to show how we can handle the Recognising Textual Ent...
What’s the best way to assess the performance of a semantic component in an NLP system? Tradition in...
This paper describes on-going efforts to annotate a corpus of almost 16,000 answer pairs with an est...
Since 2005, researchers have worked on a broad task called Recognizing Textual Entailment (RTE), whi...
ii This thesis introduces the applied notion of textual entailment as a generic empiri-cal task that...
International audienceWe focus on textual entailments mediated by syntax and propose a new methodolo...