Entailment trees have been proposed to simulate the human reasoning process of explanation generation in the context of open--domain textual question answering. However, in practice, manually constructing these explanation trees proves a laborious process that requires active human involvement. Given the complexity of capturing the line of reasoning from question to the answer or from claim to premises, the issue arises of how to assist the user in efficiently constructing multi--level entailment trees given a large set of available facts. In this paper, we frame the construction of entailment trees as a sequence of active premise selection steps, i.e., for each intermediate node in an explanation tree, the expert needs to annotate positive...
To prepare an evaluation dataset for textual entailment (TE) recognition, human annotators label ric...
Building an error-free and high-quality ontology in OWL (Web Ontology Language)---the latest standar...
A growing body of work studies how to answer a question or verify a claim by generating a natural la...
Large language models have achieved high performance on various question answering (QA) benchmarks, ...
In settings from fact-checking to question answering, we frequently want to know whether a collectio...
Debugging OWL ontologies can be aided with automated reasoners that generate entailments, including ...
For debugging OWL-DL ontologies, natural language explanations of inconsistencies and undesirable en...
Typed entailment graphs try to learn the entailment relations between predicates from text and model...
This paper proposes a new architecture for textual inference in which finding a good alignment is se...
Recognizing textual entailment is a key task for many semantic applications, such as Question Answer...
Recent work has shown that inducing a large language model (LLM) to generate explanations prior to o...
We present an approach for systematic reasoning that produces human interpretable proof trees ground...
International audienceThe aim of this paper is to show how we can handle the Recognising Textual Ent...
We discuss two ways of using abduction to explain missing entailments from description logic knowled...
Recognizing textual entailment and paraphrasing is critical to many core natural language processing...
To prepare an evaluation dataset for textual entailment (TE) recognition, human annotators label ric...
Building an error-free and high-quality ontology in OWL (Web Ontology Language)---the latest standar...
A growing body of work studies how to answer a question or verify a claim by generating a natural la...
Large language models have achieved high performance on various question answering (QA) benchmarks, ...
In settings from fact-checking to question answering, we frequently want to know whether a collectio...
Debugging OWL ontologies can be aided with automated reasoners that generate entailments, including ...
For debugging OWL-DL ontologies, natural language explanations of inconsistencies and undesirable en...
Typed entailment graphs try to learn the entailment relations between predicates from text and model...
This paper proposes a new architecture for textual inference in which finding a good alignment is se...
Recognizing textual entailment is a key task for many semantic applications, such as Question Answer...
Recent work has shown that inducing a large language model (LLM) to generate explanations prior to o...
We present an approach for systematic reasoning that produces human interpretable proof trees ground...
International audienceThe aim of this paper is to show how we can handle the Recognising Textual Ent...
We discuss two ways of using abduction to explain missing entailments from description logic knowled...
Recognizing textual entailment and paraphrasing is critical to many core natural language processing...
To prepare an evaluation dataset for textual entailment (TE) recognition, human annotators label ric...
Building an error-free and high-quality ontology in OWL (Web Ontology Language)---the latest standar...
A growing body of work studies how to answer a question or verify a claim by generating a natural la...