Towards Bangla Named Entity Recognition

S. A. Chowdhury, Firoj Alam, Naira Khan
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引用次数: 13

Abstract

Named Entity Recognition is one of the fundamental problems for Information Extraction and the task is to find the mentioned entities in text. Over the years there has been significant progress in Named Entity Recognition (NER) research for resource-rich languages such as English, Chinese, and Italian. Although, there are a number of studies for Bangla NER, however, most of these studies are conducted almost a decade ago and were focused on a single geographical location (i.e., India). Therefore, in this paper, we present a corpus annotated with seven named entities with a particular focus on Bangladeshi Bangla. It is a part of the development of the Bangla Content Annotation Bank (B-CAB). We also present baseline results, which can be useful for future research. For the baseline results, we employed word-level, POS, gazetteers and contextual features along with Conditional Random Fields (CRFs). Our study also includes the exploration of deep neural networks. Additionally, we investigated another large corpus from a different geographical location (i.e., India) and concluded on the importance of geographic-based NER for a language.
孟加拉语命名实体识别
命名实体识别是信息抽取的基本问题之一,其任务是在文本中找到被提及的实体。多年来,针对资源丰富的语言(如英语、汉语和意大利语)的命名实体识别(NER)研究取得了重大进展。虽然有一些关于孟加拉国国家生态系统的研究,但是,这些研究大多数是在近十年前进行的,并且集中在一个单一的地理位置(即印度)。因此,在本文中,我们提出了一个用七个命名实体注释的语料库,特别关注孟加拉语。它是孟加拉语内容注释库(B-CAB)开发的一部分。我们还提出了基线结果,这可能对未来的研究有用。对于基线结果,我们使用了词级、POS、地名和上下文特征以及条件随机场(CRFs)。我们的研究还包括对深度神经网络的探索。此外,我们调查了另一个来自不同地理位置(即印度)的大型语料库,并得出了基于地理的NER对语言的重要性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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