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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 2130 of 2050 papers

TitleStatusHype
Encoder vs Decoder: Comparative Analysis of Encoder and Decoder Language Models on Multilingual NLU TasksCode2
AD-AGENT: A Multi-agent Framework for End-to-end Anomaly DetectionCode2
BSD: a Bayesian framework for parametric models of neural spectraCode2
DeepDPM: Deep Clustering With an Unknown Number of ClustersCode2
Out-of-sample scoring and automatic selection of causal estimatorsCode2
Peeling Back the Layers: An In-Depth Evaluation of Encoder Architectures in Neural News RecommendersCode2
FinTSB: A Comprehensive and Practical Benchmark for Financial Time Series ForecastingCode2
LoTa-Bench: Benchmarking Language-oriented Task Planners for Embodied AgentsCode2
A Data-Centric Perspective on Evaluating Machine Learning Models for Tabular DataCode1
Additive Covariance Matrix Models: Modelling Regional Electricity Net-Demand in Great BritainCode1
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