Formal context reduction in deriving concept hierarchies from corpora using adaptive evolutionary clustering algorithm star
Bryar A. Hassan, Tarik A. Rashid, Seyedali Mirjalili

TL;DR
This paper introduces a framework that automates the derivation of concept hierarchies from text corpora by reducing formal context size using an adaptive evolutionary clustering algorithm, improving efficiency and preserving hierarchy quality.
Contribution
It proposes a novel framework combining FCA with an adaptive ECA* algorithm for formal context reduction, enhancing speed and accuracy in concept hierarchy extraction from corpora.
Findings
Reduced formal context size by 89% while maintaining hierarchy quality
Adaptive ECA* outperforms baseline algorithms in execution time
Structural relations of concept lattices are preserved after reduction
Abstract
It is beneficial to automate the process of deriving concept hierarchies from corpora since a manual construction of concept hierarchies is typically a time-consuming and resource-intensive process. As such, the overall process of learning concept hierarchies from corpora encompasses a set of steps: parsing the text into sentences, splitting the sentences and then tokenising it. After the lemmatisation step, the pairs are extracted using FCA. However, there might be some uninteresting and erroneous pairs in the formal context. Generating formal context may lead to a time-consuming process, so formal context size reduction is required to remove uninterested and erroneous pairs, taking less time to extract the concept lattice and concept hierarchies accordingly. In this premise, this study aims to propose two frameworks: (1) A framework to review the current process of deriving concept…
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