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Titlebook: Quality, Reliability, Security and Robustness in Heterogeneous Systems; 19th EAI Internation Victor C.M. Leung,Hezhang Li,Zhaolong Ning Con

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Adaptive Control Scheme for Clustering of Nodes Based on the Signs of Connections in Dynamical Signe connections, we ensure that the connection of the dynamical signed network can approximate asymptotically the connection of a given classifiable network, as measured by the concept of uniformly ultimately bounded (UUB). Finally, the simulation is used to illustrate the validity of the method propos
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Entrofuse: Clustered Federated Learning Through Entropy Approachibution and subsequently, the model training process performs within each cluster. As it is hard to acquire the distribution of data samples, we adopt Kernel Density Estimation (KDE) method to estimate the data distribution of heterogeneous clients. Our approach takes into account both entropy and v
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Optimizing Computing Job Scheduling and Path Planning with Multi-objectivesed paths. We evaluate the performance of our proposed algorithms on trace-driven experiments with results showing that CSRP and Aggregated CSRP outperform other methods in terms of deadline guarantee, energy saving, and efficient network bandwidth usage.
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An Improved Model for Sap Flow Prediction Based on Linear Trend Decompositionmodel was established with Dlinear algorithm. For comparison and analysis, five other deep learning networks of CNN, GRU, LSTM, Transformer and Informer were used to built sap flow prediction model respectively. Results shown that Dlinear based model has better performance than other models establis
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