A Dataset for Direct Quotation Extraction and Attribution in News Articles.

Overview

DirectQuote - A Dataset for Direct Quotation Extraction and Attribution in News Articles

DirectQuote is a corpus containing 19,760 paragraphs and 10,353 direct quotations manually annotated from online news media.

A quotation is a general notion that covers different kinds of speech, thought, and writing in text (Semino and Short,2004). It is a prominent linguistic device for expressing opinions, statements, and assessments attributed to the speaker (Cappelen and Lepore, 2012). Among all kinds of quotations, the entire content of the direct quotation (O’Keefe et al.,2013) is in quotation marks, which means that what the speaker said is transcribed verbatim.

Task Definition

Quotation extractionis defined as extracting reported speech from a third party in the text, also known as reportedspeech extraction. Quotation attribution refers to determining the speaker of the quotation. When annotating speakers, we ensure that valid speakers should be able to belinked to a person entity in a named entity library. Among them, simple patterns are removed to increase the diversity of the corpus.

Data

Region Name Numbers
U.S. Associated Press 438
Cable News Network 627
American Broadcasting Company 240
New York Times 5,642
CBS Broadcasting 4,890
UK British Broadcasting Corporation 926
Reuters 5,836
The Guardian 4,302
Canada The Globe and Mail 1,955
The Star 13,769
New Zealand NZ Herald 115
Australia Australian Broadcasting Corporation 312
Sydney Morning Herald 93

We select representative and multiple news sources across the political spectrum, including 13 well-known online news media from five major English-speaking countries. The corpus adopts the format consistent with CoNLL 2003. We use IOB1 format in the corpus. Raw texts are tokenized by whitespace tokenizer. Every word is classified into the following lables:

  • LeftSpeaker Quotation, the corresponding speaker is in the preceding text
  • RightSpeaker Quotation, the corresponding speaker is in the following text
  • Unknown Quotation, no corresponding speaker
  • Speaker Speaker
  • Out Neither

Statistics

Numbers
News Article 39,153
Paragraph 19,760
Quotation 10,353
Time 2020.09-2021.03

Reference

DirectQuote: A Dataset for Direct Quotation Extraction and Attribution in News Articles, Yuanchi Zhang, Yang Liu

Owner
THUNLP-MT
Machine Translation Group, Natural Language Processing Lab at Tsinghua University (THUNLP). Please refer to https://github.com/thunlp for more NLP resources.
THUNLP-MT
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