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Titlebook: Intelligent Decision Technologies; Proceedings of the 1 Ireneusz Czarnowski,Robert J. Howlett,Lakhmi C. Ja Conference proceedings 2022 The

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Recommendation Versus Regression Neural Collaborative Filtering such as DeepMF and NCF. However, there are advantages in the use of collaborative filtering classification models. This work tested both neuronal approaches using a set of representative open datasets, baselines, and quality measures. The results show the superiority of the regular regression model
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Heuristic Approach to Improve the Efficiency of Maximum Weight Matching Algorithm Using Clusteringe of the most popular problems in graph matching, is intertwined with the development of modern graph theory. To solve this problem, Edmonds proposed the blossom algorithm. After that, an increasing number of approximation matching algorithms that can be faster in matching than the blossom algorithm
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Inter-rater Agreement Based Risk Assessment Scheme for ICT Corporatesered as a potential risk. Nevertheless, their actual impact on the business remains difficult to determine; as a consequence, the urgency of a mitigation plan at corporate level can sometimes be underestimated. This paper proposes a semi-quantitative risk assessment methodology on the ISO 9001 findi
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Development of a Telegram Bot to Determine the Level of Technological Readinessting in this area was carried out, a flowchart reflecting the algorithm of the bot, and images demonstrating the appearance of its interface are presented. The bot has been successfully tested for performance: with equal input data, the conclusion about the TRL level obtained at the output of the al
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