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Chinese Gigaword

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DataCite Commons2021-07-01 更新2025-04-16 收录
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https://catalog.ldc.upenn.edu/LDC2003T09
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<h3>Introduction</h3> <p>Chinese Gigaword was produced by Linguistic Data Consortium (LDC) catalog number LDC2003T09 and ISBN 1-58563-230-9. This is a comprehensive archive of newswire text data that has been acquired from Chinese news sources by the LDC over several years. </p><p>Two distinct international sources of Chinese newswire are represented here: </p><table> <tr> <td colspan="60%">Central News Agency of Taiwan</td> <td colspan="20%">(cna)</td> </tr> <tr> <td colspan="60%">Xinhua News Agency of Beijing</td> <td colspan="20%">(xin)</td> </tr> </table><p>Some of the Xinhua content in this collection has been published previously by the LDC in other, older corpora, particularly Mandarin Chinese News Text (<a href="http://catalog.ldc.upenn.edu/LDC95T13" rel="nofollow">LDC95T13</a>), TREC Mandarin (<a href="http://catalog.ldc.upenn.edu/LDC2000T52" rel="nofollow">LDC2000T52</a>), and the various TDT Multilanguage Text corpora. But all of the CNA data and a significant amount of Xinhua material is being released here for the first time. </p><h3>Data</h3> <p>There are 286 files, totalling approximately 1.5GB in compressed form. </p><p>The table below presents the following categories of information: source of the data, number of files per source, Gzip-MB shows totals for compressed file sizes, Totl-MB shows totals for uncompressed file sizes (nearly four gigabytes, total), K-wrds are actually the number of Chinese characters (there is no notion of "space-separated word tokens" in Chinese), and number of documents. </p><table><tr> <td colspan="80%"> <table> <tr> <th>Source</th> <th>#Files</th> <th>Gzip-MB</th> <th>Totl-MB</th> <th>K-wrds</th> <th>#DOCs</th> </tr> <tr> <td>CNA</td> <td>144</td> <td>1018</td> <td>2606</td> <td>735499</td> <td>1649492</td> </tr> <tr> <td>XIE</td> <td>142</td> <td>548</td> <td>1331</td> <td>382881</td> <td>817348</td> </tr> <tr> <td>TOTAL</td> <td>286</td> <td>1566</td> <td>3937</td> <td>1118380</td> <td>2466840</td> </tr> </table> </td> </tr></table><p>The original data archives received by the LDC from Xinhua were encoded in GB-2312, whereas those from CNA were encoded in Big-5. To avoid the problems and confusion that could result from differences in character-set specifications, all text files in this corpus have been converted to UTF-8 character encoding. With some exceptions described in the <a href="./docs/0readme.txt" rel="nofollow">0readme.txt</a> file, all characters in the text are either single-byte ASCII or multi-byte Chinese. </p><p>Each data file name consists of a three-letter prefix, followed by a six-digit date (representing the year and month during which the file contents were generated by the respective news source), followed by a ".gz" file extension, indicating that the file contents have been compressed using the GNU "gzip" compression utility (RFC 1952). So, each file contains all the usable data received by LDC for the given month from the given news source. </p><p>All text data are presented in SGML form, using a very simple, minimal markup structure. The corpus has been fully validated by a standard SGML parser utility (nsgmls), using a DTD file provided in the corpus. </p><p>Unlike older corpora, the present corpus uses only the information structure that is common to all sources and serves a clear function: headline, dateline, and core news content (usually containing paragraphs). </p><p>All sources have received a uniform treatment in terms of quality control and have been categorized into four distinct "types": </p><table> <tr> <td colspan="40%"><b>story</b></td> <td colspan="60%">this type of DOC represents a coherent report on a particular topic or event, consisting of paragraphs and full sentences</td> </tr> <tr> <td colspan="40%"><b>multi</b></td> <td colspan="60%">this type of DOC contains a series of unrelated "blurbs," each of which briefly describes a particular topic or event: "summaries of today's news," "news briefs in ..." (some general area like finance or sports), and so on</td> </tr> <tr> <td colspan="40%"><b>advis</b></td> <td colspan="60%">these are DOCs which the news service addresses to news editors, they are not intended for publication to the "end users"</td> </tr> <tr> <td colspan="40%"><b>other</b></td> <td colspan="60%">these DOCs clearly do not fall into any of the above types; these are things like lists of sports scores, stock prices, temperatures around the world, and so on</td> </tr> </table><p>The general strategy for categorizing DOCs into these four classes was, for each source, to discover the most common and frequent clues in the text stream that correlated with the three "non-story" types. When none of the known clues was in evidence, the DOC was classified as a "story." </p><h3>Updates</h3> There are no updates at this time. </br> Portions © 1991-2002 Central News Agency of Taiwan, © 1990-2002 Xinhua News Agency
提供机构:
Linguistic Data Consortium
创建时间:
2020-11-30
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