RST Discourse Treebank LDC2002T07
Lynn Carlson and Daniel Marcu and Mary Ellen Okurowski

LDC2002T07_RST_discourse_penn_treebank.tar.zst2.71MB
Type: Dataset
Tags: nlp, natural language, semantic, corpus, news, text, newswire, Treebank, corpora, Penn Treebank, PTB, RST, Discourse, PTB3, analysis, understanding, LDC2002T07

Bibtex:
@article{,
title= {RST Discourse Treebank LDC2002T07},
journal= {},
author= {Lynn Carlson and Daniel Marcu and Mary Ellen Okurowski},
year= {2002},
url= {https://doi.org/10.35111/4w31-m996},
doi= {10.35111/4w31-m996},
isbn= {1-58563-223-6},
islrn= {299-735-991-930-2},
ldc= {LDC2002T07},
dcmi= {text},
abstract= {# RST Discourse Treebank

## Metadata

* Item Name:	RST Discourse Treebank
* Author(s):	Lynn Carlson, Daniel Marcu, Mary Ellen Okurowski
* LDC Catalog No.:	LDC2002T07
* ISBN:	1-58563-223-6
* ISLRN:	299-735-991-930-2
* DOI:	https://doi.org/10.35111/4w31-m996
* Release Date:	February 21, 2002
* Member Year(s):	2002
* DCMI Type(s):	Text
* Data Source(s):	newswire
* Application(s):	message understanding, discourse analysis
* Language(s):	English
* Language ID(s):	eng
* Citation: Marcus, Mitchell P., et al. Treebank-3 LDC99T42. Web Download. Philadelphia: Linguistic Data Consortium, 1999.


## Introduction

Rhetorical Structure Theory (RST) Discourse Treebank was developed by researchers at the Information Sciences Institute (University of Southern California), the US Department of Defense and the Linguistic Data Consortium (LDC). It consists of 385 Wall Street Journal articles from the [Penn Treebank](http://catalog.ldc.upenn.edu/LDC99T42) annotated with discourse structure in the RST framework along with human-generated extracts and abstracts associated with the source documents.

In the RST framework (Mann and Thompson, 1988), a text's discourse structure can be represented as a tree in four aspects: (1) the leaves correspond to text fragments called _elementary discourse units_ (the mininal discourse units); (2) the internal nodes of the tree correspond to contiguous text _spans_; (3) each node is characterized by its _nuclearity_, or essential unit of information; and (4) each node is also characterized by a _rhetorical relation_ between two or more non-overlapping, adjacent text spans. 

## Data

The data in this release is divided into a training set (347 documents) and a test set (38 documents). All annotations were produced using a discourse annotation tool that can be downloaded from [http://www.isi.edu/~marcu/discourse](http://www.isi.edu/~marcu/discourse).

Human-generated material in the corpus includes (1) long and short abstracts for 30 documents that were intended to convey the essential information and the main topic of the article, respectively; and (2) long, short and informative extracts for 180 documents, some of which were created from scratch and some of which were derived from the humanly-producted abstracts indicated above.

## Samples

Please view this [sample](https://catalog.ldc.upenn.edu/desc/addenda/LDC2002T07.txt).

## Updates

There are no updates at this time.

## Related Works

* isAnnotationOf
	* LDC99T42 Treebank-3: https://academictorrents.com/details/504381e9ebabbdd41e1611b543a6ce0d2dde7695
* hasAnnotation
	* LDC2013T22 The ARRAU Corpus of Anaphoric Information
	* LDC2015T10 RST Signalling Corpus
	* LDC2021T16 DiscAlign for Penn and RST Discourse Treebanks
* isCreatedBy
	* ISI RST Annotation Tool https://www.isi.edu/~marcu/discourse/
},
keywords= {RST, Discourse, Treebank, PTB, Penn Treebank, PTB3, corpus, corpora, nlp, natural language, text, news, newswire, semantic, analysis, understanding, LDC2002T07},
terms= {},
license= {},
superseded= {}
}


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