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Home / Proceedings / Proceedings of the AAAI Conference on Artificial Intelligence

Corpus Wide Argument Mining—A Working Solution

February 1, 2023

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Authors

Liat Ein-Dor

IBM Research AI


Eyal Shnarch

IBM Research AI


Lena Dankin

IBM Research AI


Alon Halfon

IBM Research AI


Benjamin Sznajder

IBM Research AI


Ariel Gera

IBM research AI


Carlos Alzate

IBM Research AI


Martin Gleize

IBM Research AI


Leshem Choshen

IBM Research AI


Yufang Hou

IBM Research AI


Yonatan Bilu

IBM Research AI


Ranit Aharonov

IBM Research AI


Noam Slonim

IBM Research AI


DOI:

10.1609/aaai.v34i05.6270


Abstract:

One of the main tasks in argument mining is the retrieval of argumentative content pertaining to a given topic. Most previous work addressed this task by retrieving a relatively small number of relevant documents as the initial source for such content. This line of research yielded moderate success, which is of limited use in a real-world system. Furthermore, for such a system to yield a comprehensive set of relevant arguments, over a wide range of topics, it requires leveraging a large and diverse corpus in an appropriate manner. Here we present a first end-to-end high-precision, corpus-wide argument mining system. This is made possible by combining sentence-level queries over an appropriate indexing of a very large corpus of newspaper articles, with an iterative annotation scheme. This scheme addresses the inherent label bias in the data and pinpoints the regions of the sample space whose manual labeling is required to obtain high-precision among top-ranked candidates.

Topics: AAAI

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Liat Ein-Dor||Eyal Shnarch||Lena Dankin||Alon Halfon||Benjamin Sznajder||Ariel Gera||Carlos Alzate||Martin Gleize||Leshem Choshen||Yufang Hou||Yonatan Bilu||Ranit Aharonov||Noam Slonim Corpus Wide Argument Mining—A Working Solution Proceedings of the AAAI Conference on Artificial Intelligence (2020) 7683-7691.

Liat Ein-Dor||Eyal Shnarch||Lena Dankin||Alon Halfon||Benjamin Sznajder||Ariel Gera||Carlos Alzate||Martin Gleize||Leshem Choshen||Yufang Hou||Yonatan Bilu||Ranit Aharonov||Noam Slonim Corpus Wide Argument Mining—A Working Solution AAAI 2020, 7683-7691.

Liat Ein-Dor||Eyal Shnarch||Lena Dankin||Alon Halfon||Benjamin Sznajder||Ariel Gera||Carlos Alzate||Martin Gleize||Leshem Choshen||Yufang Hou||Yonatan Bilu||Ranit Aharonov||Noam Slonim (2020). Corpus Wide Argument Mining—A Working Solution. Proceedings of the AAAI Conference on Artificial Intelligence, 7683-7691.

Liat Ein-Dor||Eyal Shnarch||Lena Dankin||Alon Halfon||Benjamin Sznajder||Ariel Gera||Carlos Alzate||Martin Gleize||Leshem Choshen||Yufang Hou||Yonatan Bilu||Ranit Aharonov||Noam Slonim. Corpus Wide Argument Mining—A Working Solution. Proceedings of the AAAI Conference on Artificial Intelligence 2020 p.7683-7691.

Liat Ein-Dor||Eyal Shnarch||Lena Dankin||Alon Halfon||Benjamin Sznajder||Ariel Gera||Carlos Alzate||Martin Gleize||Leshem Choshen||Yufang Hou||Yonatan Bilu||Ranit Aharonov||Noam Slonim. 2020. Corpus Wide Argument Mining—A Working Solution. "Proceedings of the AAAI Conference on Artificial Intelligence". 7683-7691.

Liat Ein-Dor||Eyal Shnarch||Lena Dankin||Alon Halfon||Benjamin Sznajder||Ariel Gera||Carlos Alzate||Martin Gleize||Leshem Choshen||Yufang Hou||Yonatan Bilu||Ranit Aharonov||Noam Slonim. (2020) "Corpus Wide Argument Mining—A Working Solution", Proceedings of the AAAI Conference on Artificial Intelligence, p.7683-7691

Liat Ein-Dor||Eyal Shnarch||Lena Dankin||Alon Halfon||Benjamin Sznajder||Ariel Gera||Carlos Alzate||Martin Gleize||Leshem Choshen||Yufang Hou||Yonatan Bilu||Ranit Aharonov||Noam Slonim, "Corpus Wide Argument Mining—A Working Solution", AAAI, p.7683-7691, 2020.

Liat Ein-Dor||Eyal Shnarch||Lena Dankin||Alon Halfon||Benjamin Sznajder||Ariel Gera||Carlos Alzate||Martin Gleize||Leshem Choshen||Yufang Hou||Yonatan Bilu||Ranit Aharonov||Noam Slonim. "Corpus Wide Argument Mining—A Working Solution". Proceedings of the AAAI Conference on Artificial Intelligence, 2020, p.7683-7691.

Liat Ein-Dor||Eyal Shnarch||Lena Dankin||Alon Halfon||Benjamin Sznajder||Ariel Gera||Carlos Alzate||Martin Gleize||Leshem Choshen||Yufang Hou||Yonatan Bilu||Ranit Aharonov||Noam Slonim. "Corpus Wide Argument Mining—A Working Solution". Proceedings of the AAAI Conference on Artificial Intelligence, (2020): 7683-7691.

Liat Ein-Dor||Eyal Shnarch||Lena Dankin||Alon Halfon||Benjamin Sznajder||Ariel Gera||Carlos Alzate||Martin Gleize||Leshem Choshen||Yufang Hou||Yonatan Bilu||Ranit Aharonov||Noam Slonim. Corpus Wide Argument Mining—A Working Solution. AAAI[Internet]. 2020[cited 2023]; 7683-7691.


ISSN: 2374-3468


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