2021
DOI: 10.48550/arxiv.2101.07598
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Analysis and tuning of hierarchical topic models based on Renyi entropy approach

Abstract: Hierarchical topic modeling is a potentially powerful instrument for determining the topical structure of text collections that allows constructing a topical hierarchy representing levels of topical abstraction. However, tuning of parameters of hierarchical models, including the number of topics on each hierarchical level, remains a challenging task and an open issue. In this paper, we propose a Renyi entropy-based approach for a partial solution to the above problem. First, we propose a Renyi entropy-based me… Show more

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“…We underline Teh's studies in which he proposes a non-parametric approach of mixture components with a hierarchical Bayesian distribution [36]. A hierarchical nested topic model is described in [37], and more recently in [38].…”
Section: Latent Dirichlet Allocationmentioning
confidence: 99%
“…We underline Teh's studies in which he proposes a non-parametric approach of mixture components with a hierarchical Bayesian distribution [36]. A hierarchical nested topic model is described in [37], and more recently in [38].…”
Section: Latent Dirichlet Allocationmentioning
confidence: 99%