Journal of Data Science and Its Applications
Vol 2 No 2 (2019): Journal of Data Science and Its Applications

Visualizing Language Lexical Similarity Clusters: A Case Study of Indonesian Ethnic Languages

Arbi Haza Nasution (Universitas Islam Riau)
Yohei Murakami (Ritsumeikan University)



Article Info

Publish Date
15 Nov 2019

Abstract

Language similarity clusters are useful for computational linguistic researches that rely on language similarity or cognate recognition. The existing language similarity clustering approach which utilizes hierarchical clustering and k-means clustering has difficulty in creating clusters with a middle range of language similarity. Moreover, it lacks an interactive visualization that user can explore. To address these issues, we formalize a graph-based approach of creating and visualizing language lexical similarity clusters by utilizing ASJP database to generate the language similarity matrix, then formalize the data as an undirected graph. To create the clusters, we apply a connected components algorithm with a threshold of language similarity range. Our interactive online tool allows a user to dynamically create new clusters by changing the threshold of language similarity range and explore the data based on language similarity range and number of speakers. We provide an implementation example of our approach to 119 Indonesian ethnic languages. The experiment result shows that for the case of low system execution burden, the system performance was quite stable. For the case of high system execution burden, despite the fluctuated performance, the response times were still below 25 seconds, which is considered acceptable.

Copyrights © 2019






Journal Info

Abbrev

jdsa

Publisher

Subject

Computer Science & IT Decision Sciences, Operations Research & Management

Description

JDSA welcomes all topics that are relevant to data science, computational linguistics, and information sciences. The listed topics of interest are as follows: Big Data Analytics Computational Linguistics Data Clustering and Classifications Data Mining and Data Analytics Data Visualization ...