Conditional mean embeddings and optimal feature selection via positive definite kernels
Jorgensen, Palle E. T., Song, Myung-Sin, Tian, James
–arXiv.org Artificial Intelligence
Motivated by applications, we consider here new operator theoretic approaches to Conditional mean embeddings (CME). Our present results combine a spectral analysis-based optimization scheme with the use of kernels, stochastic processes, and constructive learning algorithms. For initially given non-linear data, we consider optimization-based feature selections. This entails the use of convex sets of positive definite (p.d.) kernels in a construction of optimal feature selection via regression algorithms from learning models. Thus, with initial inputs of training data (for a suitable learning algorithm,) each choice of p.d. kernel $K$ in turn yields a variety of Hilbert spaces and realizations of features. A novel idea here is that we shall allow an optimization over selected sets of kernels $K$ from a convex set $C$ of positive definite kernels $K$. Hence our \textquotedblleft optimal\textquotedblright{} choices of feature representations will depend on a secondary optimization over p.d. kernels $K$ within a specified convex set $C$.
arXiv.org Artificial Intelligence
May-14-2023
- Country:
- North America > United States
- Illinois > Madison County
- Edwardsville (0.04)
- Iowa > Johnson County
- Iowa City (0.14)
- Michigan > Washtenaw County
- Ann Arbor (0.04)
- New Jersey > Bergen County
- Hackensack (0.04)
- Wisconsin > Dane County
- Madison (0.04)
- Illinois > Madison County
- North America > United States
- Genre:
- Research Report (0.84)
- Technology: