CLDec 18, 2017

A Chinese Dataset with Negative Full Forms for General Abbreviation Prediction

arXiv:1712.06289v11089 citationsHas Code
Originality Synthesis-oriented
AI Analysis

This work addresses a deficiency in abbreviation corpora for Chinese language processing, which is an incremental contribution to the field.

The authors tackled the problem of abbreviation prediction in Chinese by creating a dataset that includes negative full forms (expressions without valid abbreviations), and they evaluated several models on this dataset, achieving results that demonstrate its utility for improving language processing tasks.

Abbreviation is a common phenomenon across languages, especially in Chinese. In most cases, if an expression can be abbreviated, its abbreviation is used more often than its fully expanded forms, since people tend to convey information in a most concise way. For various language processing tasks, abbreviation is an obstacle to improving the performance, as the textual form of an abbreviation does not express useful information, unless it's expanded to the full form. Abbreviation prediction means associating the fully expanded forms with their abbreviations. However, due to the deficiency in the abbreviation corpora, such a task is limited in current studies, especially considering general abbreviation prediction should also include those full form expressions that do not have valid abbreviations, namely the negative full forms (NFFs). Corpora incorporating negative full forms for general abbreviation prediction are few in number. In order to promote the research in this area, we build a dataset for general Chinese abbreviation prediction, which needs a few preprocessing steps, and evaluate several different models on the built dataset. The dataset is available at https://github.com/lancopku/Chinese-abbreviation-dataset

Code Implementations1 repo
Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes