Semantic Relatedness and Textual Entailment via Corpus Patterns
نویسندگان
چکیده
We present a system for resolving both semantic relatedness (SR) and textual entailment (TE) tasks. There are two major contributions the method proposed here brings to the field:(1) it shows that there is a correlation between the SR scores and TE judgments which can be used to improve the accuracy of both of these tasks and (2) it shows that we can handle the structural information via patterns extracted from corpora and that this approach brings a substantial improvement to distributional systems. The system attains a new state of the art for TE and reaches a correlation score within 1.5% percent to the SR state of the art.
منابع مشابه
Corpora for Learning the Mutual Relationship between Semantic Relatedness and Textual Entailment
In this paper we present the creation of a corpora annotated with both semantic relatedness (SR) scores and textual entailment (TE) judgments. In building this corpus we aimed at discovering, if any, the relationship between these two tasks for the mutual benefit of resolving one of them by relying on the insights gained from the other. We considered a corpora already annotated with TE judgment...
متن کاملUoW: NLP techniques developed at the University of Wolverhampton for Semantic Similarity and Textual Entailment
This paper presents the system submitted by University of Wolverhampton for SemEval-2014 task 1. We proposed a machine learning approach which is based on features extracted using Typed Dependencies, Paraphrasing, Machine Translation evaluation metrics, Quality Estimation metrics and Corpus Pattern Analysis. Our system performed satisfactorily and obtained 0.711 Pearson correlation for the sema...
متن کاملECNU: One Stone Two Birds: Ensemble of Heterogenous Measures for Semantic Relatedness and Textual Entailment
This paper presents our approach to semantic relatedness and textual entailment subtasks organized as task 1 in SemEval 2014. Specifically, we address two questions: (1) Can we solve these two subtasks together? (2) Are features proposed for textual entailment task still effective for semantic relatedness task? To address them, we extracted seven types of features including text difference meas...
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 کاملBUAP: Evaluating Compositional Distributional Semantic Models on Full Sentences through Semantic Relatedness and Textual Entailment
The results obtained by the BUAP team at Task 1 of SemEval 2014 are presented in this paper. The run submitted is a supervised version based on two classification models: 1) We used logistic regression for determining the semantic relatedness between a pair of sentences, and 2) We employed support vector machines for identifying textual entailment degree between the two sentences. The behaviour...
متن کامل