晚来的提名 发表于 2025-3-28 17:15:22

normal LSTMs or convolutional long short-term memory networks. By contrast, empirically Deep Q-Network (DQN) was more compatible than conventional Q-Learning when applied towards evolving pricing strategies over time leading up greater rewards and consistency amidst market volatilities. Market tren

Indicative 发表于 2025-3-28 22:25:24

Alexander A. Lisyansky,Evgeny S. Andrianov,Alexey P. Vinogradov,Vladislav Yu. Shishkovanguage familiarity and accessibility make the app a user-friendly platform for monitoring KPIs data across different organizational levels. These findings explain the adoption of Microsoft Excel and VBA language as a technology for data analysis. These tools enable organizations to make informed de

剥皮 发表于 2025-3-29 00:10:14

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Emmenagogue 发表于 2025-3-29 05:31:56

Alexander A. Lisyansky,Evgeny S. Andrianov,Alexey P. Vinogradov,Vladislav Yu. ShishkovRT models may be integrated with big data technology and points up areas that need more investigation. Our framework offers important insights and useful applications in many domains, including social media monitoring, market analysis, and customer feedback evaluation. It does this by tackling the l

狂怒 发表于 2025-3-29 10:51:48

Alexander A. Lisyansky,Evgeny S. Andrianov,Alexey P. Vinogradov,Vladislav Yu. ShishkovRT models may be integrated with big data technology and points up areas that need more investigation. Our framework offers important insights and useful applications in many domains, including social media monitoring, market analysis, and customer feedback evaluation. It does this by tackling the l

乞丐 发表于 2025-3-29 14:41:23

Alexander A. Lisyansky,Evgeny S. Andrianov,Alexey P. Vinogradov,Vladislav Yu. Shishkovted for easy integration into fraud detection systems. This study presents an adaptable and robust approach utilizing advanced deep learning methods, particularly 1D-CNN, to enhance the security of credit card transactions, effectively solving a critical issue in financial protection.

DAFT 发表于 2025-3-29 19:16:10

Alexander A. Lisyansky,Evgeny S. Andrianov,Alexey P. Vinogradov,Vladislav Yu. Shishkovation‘s findings demonstrate the superiority of GPUs in accelerating neural network training, also provide insightful information on how best to use compute resources for these kinds of jobs. This study offers a thorough understanding of the dynamics involved in neural network training by analyzing

怪物 发表于 2025-3-29 19:58:53

Alexander A. Lisyansky,Evgeny S. Andrianov,Alexey P. Vinogradov,Vladislav Yu. Shishkovtyles, anti-cheating in exams, predicting students’ performance, intelligent tutoring systems, etc. This research aims to present the education system‘s current state under AI and shed light on future applications and challenges from both a theoretical and a practical perspective.

冬眠 发表于 2025-3-30 00:11:52

Alexander A. Lisyansky,Evgeny S. Andrianov,Alexey P. Vinogradov,Vladislav Yu. Shishkovased on feature selection (VISSA) gave the best results compared to those obtained using full spectra. The performance of the ANN models in quantifying the three loquat properties were: a prediction determination coefficient (R. = 0.97), (R. = 0.98), (R. = 0.98) and a standard error of prediction (S

杂役 发表于 2025-3-30 06:17:43

orris, Duoethnography, Oxford University Press, Incorporated, 2012; Adams et al., Handbook of Autoethnography, Routledge, 2022), in which the co-founders of the Global Teach Ag Network share about a promising strategy in educator professional development focused on collaboration through impactful co
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查看完整版本: Titlebook: Quantum Optics of Light Scattering; Alexander A. Lisyansky,Evgeny S. Andrianov,Vladisl Book 2024 The Editor(s) (if applicable) and The Aut