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Model Selection

Given a set of candidate models, the goal of Model Selection is to select the model that best approximates the observed data and captures its underlying regularities. Model Selection criteria are defined such that they strike a balance between the goodness of fit, and the generalizability or complexity of the models.

Source: Kernel-based Information Criterion

Papers

Showing 14311440 of 2050 papers

TitleStatusHype
An adaptive simulated annealing EM algorithm for inference on non-homogeneous hidden Markov modelsCode0
Bayesian high-dimensional linear regression with generic spike-and-slab priors0
Learning high-dimensional probability distributions using tree tensor networks0
Noise Fit, Estimation Error and a Sharpe Information Criterion0
Forward and Backward Feature Selection for Query Performance Prediction0
Bayesian Model Selection for Change Point Detection and Clustering0
Automated Dependence PlotsCode0
A Normative Theory for Causal Inference and Bayes Factor Computation in Neural CircuitsCode0
Multiclass Learning from ContradictionsCode0
On model selection for scalable time series forecasting in transport networks0
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