A Selective Overview of Variable Selection in High Dimensional Feature Space.
University of Southern California · Southern California University for Professional Studies
Abstract
High dimensional statistical problems arise from diverse fields of scientific research and technological development. Variable selection plays a pivotal role in contemporary statistical learning and scientific discoveries. The traditional idea of best subset selection methods, which can be regarded as a specific form of penalized likelihood, is computationally too expensive for many modern statistical applications. Other forms of penalized likelihood methods have been successfully developed over the last decade to cope with high dimensionality. They have been widely applied for simultaneously selecting important variables and estimating their effects in high dimensional statistical inference. In this article,…
Citation impact
- FWCI
- 49.42
- Percentile
- 100%
- References
- 127
Authors
2Topics & keywords
- Feature selection
- Computer science
- Curse of dimensionality
- Statistical inference
- Inference
- Variable (mathematics)
- Independence (probability theory)
- Selection (genetic algorithm)