AbstractVery few natural language understanding applications employ methods from automated deduction. This is mainly because (i) a high level of interdisciplinary knowledge is required, (ii) there is a huge gap between formal semantic theory and practical implementation, and (iii) statistical rather than symbolic approaches dominate the current trends in natural language processing. Moreover, abduction rather than deduction is generally viewed as a promising way to apply reasoning in natural language understanding. We describe three applications where we show how first-order theorem proving and finite model construction can efficiently be employed in language understanding.The first is a text understanding system building semantic represent...
The paper presents a model for natural reasoning that combines theorem proving techniques with natur...
Investigating the reasoning abilities of transformer models, and discovering new challenging tasks f...
Mechanical theorem provers are becoming increasingly more powerful, and we believe that it is time t...
Tackling Natural Language Inference with a logic-based method is becoming less and less common. Whil...
Deductive reasoning is an area related to argumentation where machine-based techniques, notably th...
Constructing a logical argument to support a claim entails selecting relevant evidence from a collec...
Abstract. The LogAnswer system is an application of automated rea-soning to the field of open domain...
We present a theorem prover for natural language and show how it processes various types of textual ...
This paper outlines an implemented system called PROVERB that explains machine -found natural deduct...
This book introduces fundamental techniques for computing semantic representations for fragments of ...
Thesis (Ph. D.)--University of Rochester. Department of Computer Science, 2018.This dissertation exp...
In this paper, we introduce the system for inferring implicit computable knowledge from textual data...
Do state-of-the-art models for language understanding already have, or can they easily learn, abilit...
Natural language understanding (NLU) of text is a fundamental challenge in AI, and it has received s...
Natural language understanding (NLU) of text is a fundamental challenge in AI, and it has received s...
The paper presents a model for natural reasoning that combines theorem proving techniques with natur...
Investigating the reasoning abilities of transformer models, and discovering new challenging tasks f...
Mechanical theorem provers are becoming increasingly more powerful, and we believe that it is time t...
Tackling Natural Language Inference with a logic-based method is becoming less and less common. Whil...
Deductive reasoning is an area related to argumentation where machine-based techniques, notably th...
Constructing a logical argument to support a claim entails selecting relevant evidence from a collec...
Abstract. The LogAnswer system is an application of automated rea-soning to the field of open domain...
We present a theorem prover for natural language and show how it processes various types of textual ...
This paper outlines an implemented system called PROVERB that explains machine -found natural deduct...
This book introduces fundamental techniques for computing semantic representations for fragments of ...
Thesis (Ph. D.)--University of Rochester. Department of Computer Science, 2018.This dissertation exp...
In this paper, we introduce the system for inferring implicit computable knowledge from textual data...
Do state-of-the-art models for language understanding already have, or can they easily learn, abilit...
Natural language understanding (NLU) of text is a fundamental challenge in AI, and it has received s...
Natural language understanding (NLU) of text is a fundamental challenge in AI, and it has received s...
The paper presents a model for natural reasoning that combines theorem proving techniques with natur...
Investigating the reasoning abilities of transformer models, and discovering new challenging tasks f...
Mechanical theorem provers are becoming increasingly more powerful, and we believe that it is time t...