Optimizing forensic file classification: enhancing SFCS with βk hyperparameter tuning.
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| Title: | Optimizing forensic file classification: enhancing SFCS with β |
|---|---|
| Authors: | Joseph, D. Paul, Perumal, Viswanathan |
| Source: | PeerJ Computer Science; Mar2025, p1-27, 27p |
| Subject Terms: | FORENSIC sciences, CLASSIFICATION, CONCEPTUAL models, INFORMATION storage & retrieval systems, TEXT mining, INFORMATION retrieval, MACHINE learning |
| Abstract: | In forensic topical modelling, the α parameter controls the distribution of topics in documents. However, low, high, or incorrect values of α lead to topic sparsity, model overfitting, and suboptimal topic distribution. To control the word distribution across topics, the β parameter is introduced. However, low, high, or inappropriate β values lead to sparse distribution, disjointed topics, and abundant highly probable words. The β |
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| Database: | Complementary Index |
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