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Featured researches published by Asher Stern.


meeting of the association for computational linguistics | 2014

The Excitement Open Platform for Textual Inferences

Bernardo Magnini; Roberto Zanoli; Ido Dagan; Kathrin Eichler; Guenter Neumann; Tae-Gil Noh; Sebastian Padó; Asher Stern; Omer Levy

This paper presents the Excitement Open Platform (EOP), a generic architecture and a comprehensive implementation for textual inference in multiple languages. The platform includes state-of-art algorithms, a large number of knowledge resources, and facilities for experimenting and testing innovative approaches. The EOP is distributed as an open source software.


Natural Language Engineering | 2015

Design and realization of a modular architecture for textual entailment

Sebastian Padó; Tae-Gil Noh; Asher Stern; Rui Wang; Roberto Zanoli

A key challenge at the core of many Natural Language Processing (NLP) tasks is the ability to determine which conclusions can be inferred from a given natural language text. This problem, called the Recognition of Textual Entailment (RTE) , has initiated the development of a range of algorithms, methods, and technologies. Unfortunately, research on Textual Entailment (TE), like semantics research more generally, is fragmented into studies focussing on various aspects of semantics such as world knowledge, lexical and syntactic relations, or more specialized kinds of inference. This fragmentation has problematic practical consequences. Notably, interoperability among the existing RTE systems is poor, and reuse of resources and algorithms is mostly infeasible. This also makes systematic evaluations very difficult to carry out. Finally, textual entailment presents a wide array of approaches to potential end users with little guidance on which to pick. Our contribution to this situation is the novel EXCITEMENT architecture, which was developed to enable and encourage the consolidation of methods and resources in the textual entailment area. It decomposes RTE into components with strongly typed interfaces. We specify (a) a modular linguistic analysis pipeline and (b) a decomposition of the ‘core’ RTE methods into top-level algorithms and subcomponents. We identify four major subcomponent types, including knowledge bases and alignment methods. The architecture was developed with a focus on generality, supporting all major approaches to RTE and encouraging language independence. We illustrate the feasibility of the architecture by constructing mappings of major existing systems onto the architecture. The practical implementation of this architecture forms the EXCITEMENT open platform. It is a suite of textual entailment algorithms and components which contains the three systems named above, including linguistic-analysis pipelines for three languages (English, German, and Italian), and comprises a number of linguistic resources. By addressing the problems outlined above, the platform provides a comprehensive and flexible basis for research and experimentation in textual entailment and is available as open source software under the GNU General Public License.


meeting of the association for computational linguistics | 2014

Recognizing Implied Predicate-Argument Relationships in Textual Inference

Asher Stern; Ido Dagan

We investigate recognizing implied predicate-argument relationships which are not explicitly expressed in syntactic structure. While prior works addressed such relationships as an extension to semantic role labeling, our work investigates them in the context of textual inference scenarios. Such scenarios provide prior information, which substantially eases the task. We provide a large and freely available evaluation dataset for our task setting, and propose methods to cope with it, while obtaining promising results in empirical evaluations. 1 Motivation and Task


recent advances in natural language processing | 2011

A Confidence Model for Syntactically-Motivated Entailment Proofs

Asher Stern; Ido Dagan


meeting of the association for computational linguistics | 2012

BIUTEE: A Modular Open-Source System for Recognizing Textual Entailment

Asher Stern; Ido Dagan


north american chapter of the association for computational linguistics | 2013

TruthTeller: Annotating Predicate Truth

Amnon Lotan; Asher Stern; Ido Dagan


Theory and Applications of Categories | 2009

Addressing Discourse and Document Structure in the RTE Search Task.

Shachar Mirkin; Roy Bar-Haim; Ido Dagan; Eyal Shnarch; Asher Stern; Idan Szpektor; Jonathan Berant


mexican international conference on artificial intelligence | 2012

Semantic annotation for textual entailment recognition

Assaf Toledo; Sophia Katrenko; Stavroula Alexandropoulou; Heidi Klockmann; Asher Stern; Ido Dagan; Yoad Winter


meeting of the association for computational linguistics | 2012

Efficient Search for Transformation-based Inference

Asher Stern; Roni Stern; Ido Dagan; Ariel Felner


Theory and Applications of Categories | 2010

Rule Chaining and Approximate Match in textual inference

Asher Stern; Eyal Shnarch; Shachar Mirkin; Lili Kotlerman; Naomi Zeichner; Ido Dagan; Amnon Lotan; Jonathan Berant

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Roberto Zanoli

fondazione bruno kessler

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Tae-Gil Noh

Kyungpook National University

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Ariel Felner

Ben-Gurion University of the Negev

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