Maximum Conditional Likelihood via Bound Maximization and the CEM Algorithm
–Neural Information Processing Systems
Advantages in feature selection, robustness andlimited resource allocation have been studied. Ultimately, tasks such as regression and classification reduce to the evaluation of a conditional density. However, popularity of maximumjoint likelihood and EM techniques remains strong in part due to their elegance and convergence properties. Thus, many conditional problems are solved by first estimating joint models then conditioning them.
Neural Information Processing Systems
Dec-31-1999
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