Fine-Tuning Topics through Weighting Aspect Keywords
Ali Nazari, Michael Weiss

TL;DR
This paper introduces an expert-guided, aspect-weighted topic modeling framework that improves relevance, coherence, and adaptability in specialized, evolving research fields like quantum cryptography.
Contribution
It develops a novel iterative framework combining expert input and supervised alignment to enhance topic modeling in dynamic, specialized domains.
Findings
Improved visibility of low-frequency, critical terms
Enhanced topic coherence and document clustering accuracy
Better adaptation to evolving research discussions
Abstract
Organizations face growing challenges in deriving meaningful insights from vast amounts of specialized text data. Conventional topic modeling techniques are typically static and unsupervised, making them ill-suited for fast-evolving fields like quantum cryptography. These models lack contextual awareness and cannot easily incorporate emerging expert knowledge or subtle shifts in subdomains. Moreover, they often overlook rare but meaningful terms, limiting their ability to surface early signals or align with expert-driven insights essential for strategic understanding. To tackle these gaps, we employ design science research methodology to create a framework that enhances topic modeling by weighting aspects based on expert-informed input. It combines expert-curated keywords with topic distributions iteratively to improve topic relevance and document alignment accuracy in specialized…
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Taxonomy
TopicsWeb Applications and Data Management
