Some Salient Issues in the Unsupervised Learning of Igbo Morphology

Abstract

The issue of automatic learning of the morphology of natural language is an important topic in computational linguistics. This owes to the fact that morphology is foundational to the study of linguistics. In addition, the emerging information society demands the application of Information and Communication Technologies (ICT) to languages in ways that demand human-like analysis of language and this depends to a large extent on the ability to undertake computational analysis of morphology. Even though rule-based and supervised learning approaches to the modeling of morphology have been found to be productive, they have also been discovered to be costly, cumbersome and sucseptible to human errors. Contrarily, unsupervised learning methods do not require the expensive human intervention but as in everything statistical, they demand large volumes of linguistic data. This poses a challenge to resource scarce languages such as Igbo. Furthermore, being a highly agglutinative language, Igbo features certain morphological processes that may not be easily accommodated by most of the frequency-driven unsupervised learning models available. this paper takes a critical look at some of the identified challenges of inducing Igbo morphology as a first step in devising methods by which they can be addressed

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