Graph clustering based size varying rules for lifelong topic modelling
Main Article Content
Abstract
Lifelong learning topic models identify the hidden concepts discussed in the collection of documents. Lifelong learning models have an automatic learning mechanism. In the learning process, the model gets more knowledgeable with experience as it learns from the past in the form of rules. It carries rules to the future and utilises them when a similar scenario arise in the future. The existing lifelong learning topic models heavily rely on statistical measures to learn rules that lead to two limitations. In this research work, we introduce complex networks analysis for learning rules. The rules are obtained through hierarchical clustering of the complex network that has different number of words within a rule and has directed orientation. The proposed approach improves the utilisation of rules for improved quality of topics at higher performance with unidirectional rules on the standard lifelong learning dataset.
Keywords: networks, lifelong, models, networks analysis
Downloads
Article Details
This work is licensed under a Creative Commons Attribution 4.0 International License.
Global Journal of Computer Sciences: Theory and Research is an Open Access Journal. All articles can be downloaded free of charge. Articles published in the Journal are Open-Access articles distributed under CC-BY license [Attribution 4.0 International (CC BY 4.0)]
Birlesik Dunya Yenilik Arastirma ve Yayincilik Merkezi (BD-Center) is a gold open access publisher. At the point of publication, all articles from our portfolio of journals are immediately and permanently accessible online free of charge. BD-Center articles are published under the CC-BY license [Attribution 4.0 International (CC BY 4.0)], which permits unrestricted use, distribution, and reproduction in any medium, provided the original authors and the source are credited.