Sequence Networks of Rotating Machines
Multi-input and Multi-variable systems
Network Function of a Circuit
Woodward–Hoffmann Selection Rules and Microscopic Reversibility
Transformation
Multiple Allele Traits
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Generating Strictly Controlled Stimuli for Figure Recognition Experiments
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This study introduces a rotation-equivariant neural network (RENN) to prevent private information leakage from neural network features. RENN obfuscates data using multi-ary features and rotation, safeguarding input information effectively.
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