Sparse Learning for Variable Selection with Structures and Nonlinearities
In this thesis we discuss machine learning methods performing automated variable selection for learning sparse predictive models. There are multiple reasons for promoting sparsity in the predictive models. By relying on a limited set of input variables the models naturally counteract the overfitting problem ubiquitous in learning from finite sets of training points. Sparse models are cheaper to use for predictions, they usually require lower computational resources and by relying on smaller sets of inputs can possibly reduce costs for data collection and storage. Sparse models can also contribute to better understanding of the investigated phenomenons as they are easier to interpret than full models.
Mar-26-2019
- Country:
- Europe > United Kingdom
- England (0.28)
- North America > United States (1.00)
- Europe > United Kingdom
- Genre:
- Research Report > Experimental Study (0.92)
- Industry:
- Technology:
- Information Technology
- Artificial Intelligence > Machine Learning
- Inductive Learning (0.92)
- Neural Networks (1.00)
- Performance Analysis > Accuracy (1.00)
- Statistical Learning > Regression (0.93)
- Data Science > Data Mining (1.00)
- Modeling & Simulation (1.00)
- Artificial Intelligence > Machine Learning
- Information Technology