Linguistic disparity in the NLP world is a problem that has been widely acknowledged recently. However, different facets of this problem, or the reasons behind this disparity are seldom discussed within the NLP community. This paper provides a comprehensive analysis of the disparity that exists within the languages of the world. We show that simply categorising languages considering data availability may not be always correct. Using an existing language categorisation based on speaker population and vitality, we analyse the distribution of language data resources, amount of NLP/CL research, inclusion in multilingual web-based platforms and the inclusion in pre-trained multilingual models. We show that many languages do not get covered in these resources or platforms, and even within the languages belonging to the same language group, there is wide disparity. We analyse the impact of family, geographical location, GDP and the speaker population of languages and provide possible reasons for this disparity, along with some suggestions to overcome the same.
翻译:然而,这个问题的不同方面,或造成这种差异的原因,很少在国家语言方案社区内讨论。本文全面分析了世界语言中存在的差异。我们表明,考虑到数据提供情况,仅仅对语言进行分类可能并不总是正确。我们利用现有的语言分类,根据语言人口和活力,分析语言数据资源的分配情况、国家语言方案/CL研究的数量、纳入多语言网络平台的情况以及纳入经过培训的多语言模式的情况。我们表明,许多语言没有在这些资源或平台中得到覆盖,甚至在属于同一语言群体的语言中也没有被覆盖。我们分析了家庭、地理位置、国内生产总值和语言语言人口的影响,并提出了一些克服这种差异的建议。