Robust Graph Alignment Methods for Textual Inference and Machine Reading
نویسندگان
چکیده
This paper presents our work on textual inference and situates it within the context of the larger goals of machine reading. The textual inference task is to determine if the meaning of one text can be inferred from the meaning of another combined with background knowledge. Most existing work either provides only very limited text understanding by using bag-of-words lexical similarity models or suffers from the brittleness typical of complex natural language understanding systems. Our system generates semantic graphs as a representation of the meaning of a text. This paper presents new results for aligning pairs of semantic graphs, and proposes the application of natural logic to derive inference decisions from those aligned pairs. We consider this work as first steps toward a system able to demonstrate broad-coverage text understanding and learning
منابع مشابه
Aligning Semantic Graphs for Textual Inference and Machine Reading
This paper presents our work on textual inference and situates it within the context of the larger goals of machine reading. The textual inference task is to determine if the meaning of one text can be inferred from the meaning of another and from background knowledge. Our system generates semantic graphs as a representation of the meaning of a text. This paper presents new results for aligning...
متن کاملRecognizing Textual Entailment Using Description Logic and Semantic Relatedness
Recognizing Textual Entailment using Description Logic and Semantic Relatedness Reda Siblini, Ph.D. Concordia University, 2014 Textual entailment (TE) is a relation that holds between two pieces of text where one reading the first piece can conclude that the second is most likely true. Accurate approaches for textual entailment can be beneficial to various natural language processing (NLP) appl...
متن کاملRobust Textual Inference using Diverse Knowledge Sources
We present a machine learning approach to robust textual inference, in which parses of the text and the hypothesis sentences are used to measure their asymmetric “similarity”, and thereby to decide if the hypothesis can be inferred. This idea is realized in two different ways. In the first, each sentence is represented as a graph (extracted from a dependency parser) in which the nodes are words...
متن کاملSemantic Parsing for Textual Entailment
In this paper we gauge the utility of general-purpose, open-domain semantic parsing for textual entailment recognition by combining graph-structured meaning representations with semantic technologies and formal reasoning tools. Our approach achieves high precision, and in two case studies we show that when reasoning over n-best analyses from the parser the performance of our system reaches stat...
متن کاملXdisease occur in Ycountry Xdisease common in Ycountry Xdisease frequent in Ycountry Xdisease begin in Ycountry Xdisease epidemic in Ycountry
The goal of my research is to develop natural language understanding algorithms, that is, algorithms that induce a representation of meaning from natural language, and allow machines to understand text and reason over it. I focus on developing methods that learn to predict such meaning representations from data, rather than hand-coding meaning translation rules, as is common for instance in com...
متن کامل