reperfusion 发表于 2025-3-28 17:35:21
Improving Clustering via a Fine-Grained Parallel Genetic Algorithm with Information Sharingcal optima. Secondly, PGAs offer improved execution time, as each subpopulation is processed in parallel on separate threads. Our technique advances an existing GA-based method called GenClust++, by employing a PGA along with a novel information sharing technique. We also compare our technique with假设 发表于 2025-3-28 22:36:34
Topic Representation using Semantic-Based Patternss what existing topic modelling methods do. The semantically meaningful patterns were evaluated by applying the information filtering to semantic-based topic representation. The semantic based patterns were used as features for information filtering and were evaluated by comparing against popular inesculent 发表于 2025-3-29 01:29:08
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Interpretability of Machine Learning Solutions in Industrial Decision Engineeringrocess and is consistent with the best practices of project management in the ML settings. We illustrate the versatility and effortless applicability of CRISP-ML with examples across a variety of industries and types of ML projects.类似思想 发表于 2025-3-30 05:25:30
Customer Wallet Share Estimation for Manufacturers Based on Transaction Datald scenarios, there are circumstances where survey data are unavailable or unreliable. In this paper, we present a new customer wallet share estimation approach. In the proposed approach, a predictive model based on decision trees facilitates an accurate estimation of wallet shares for customers rel