A Subdivision-Regularization Framework for Preventing Over Fitting of Data by a Model

نویسندگان

  • Ghulam Mustafa
  • Abdul Ghaffar
  • Muhammad Aslam
چکیده

First, we explore the properties of families of odd-point odd-ary parametric approximating subdivision schemes. Then we fine-tune the parameters involved in the family of schemes to maximize the smoothness of the limit curve and error bounds for the distance between the limit curve and the kth level control polygon. After that, we present the subdivision-regularization framework for preventing over fitting of data by model. Demonstration shows that the proposed unified frame work can work well for both noise removal and overfitting prevention in subdivision as well as regularization.

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تاریخ انتشار 2013