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Titlebook: Neural Networks and Deep Learning; A Textbook Charu C. Aggarwal Textbook 2023Latest edition Springer Nature Switzerland AG 2023 Neural netw

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Recurrent Neural Networks,All the neural architectures discussed in earlier chapters are inherently designed for multidimensional data in which there is no inherent ordering among attributes and the number of dimensions (input data items) are fixed.
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Graph Neural Networks,Graphs are used in a wide variety of application-centric settings, such as the Web, social networks, communication networks, and chemical compounds. Graphs can be either . or undirected.
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Deep Reinforcement Learning,Human beings do not learn from a concrete notion of training data. Learning in humans is a continuous experience-driven process in which decisions are made, and the reward/punishment received from the . are used to guide the learning process for future decisions. In other words, learning in intelligent beings is by reward-guided ..
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Charu Aggarwald in the study of elastic structures not seen in other texts currently on the market. This work offers a clear and carefully prepared exposition of variational techniques as they are applied to solid mechanics. Unlike other books in this field, Dym and Shames treat all the necessary theory needed fo
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