A Convergence Analysis of Log-Linear Training
–Neural Information Processing Systems
Log-linear models are widely used probability models for statistical pattern recognition. Typically, log-linear models are trained according to a convex criterion. In recent years, the interest in log-linear models has greatly increased. The optimization of log-linear model parameters is costly and therefore an important topic, in particular for large-scale applications. Different optimization algorithms have been evaluated empirically in many papers.
Neural Information Processing Systems
Feb-14-2020, 22:11:10 GMT
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