Optimal Spherical Separability: Artificial Neural Networks

نویسندگان

  • Garimella Rama Murthy
  • Ganesh Yaparla
  • Rhishi Pratap Singh
چکیده

In this research paper, the concept of hyper-spherical/hyperellipsoidal separability is introduced. Method of arriving at the optimal hypersphere (maximizing margin) separating two classes is discussed. By projecting the quantized patterns into higher dimensional space (as in encoders of error correcting code), the patterns are made hyper-spherically separable. Single/multiple layers of spherical/ellipsoidal neurons are proposed for multi-class classification. An associative memory based on hyper-ellipsoidal neuron is proposed.

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تاریخ انتشار 2017