EigenNet: A Bayesian hybrid of generative and conditional models for sparse learning Yuan Qi

Neural Information Processing Systems 

For many real-world applications, we often need to select correlated variables-- such as genetic variations and imaging features associated with Alzheimer's disease--in a high dimensional space. The correlation between variables presents a challenge to classical variable selection methods. To address this challenge, the elastic net has been developed and successfully applied to many applications. Despite its great success, the elastic net does not exploit the correlation information embedded in the data to select correlated variables. To overcome this limitation, we present a novel hybrid model, EigenNet, that uses the eigenstructures of data to guide variable selection.