Smoothing Multivariate Performance Measures
Zhang, Xinhua, Saha, Ankan, Vishwanatan, S. V. N.
A Support Vector Method for multivariate performance measures was recently introduced by Joachims (2005). The underlying optimization problem is currently solved using cutting plane methods such as SVM-Perf and BMRM. One can show that these algorithms converge to an eta accurate solution in O(1/Lambda*e) iterations, where lambda is the trade-off parameter between the regularizer and the loss function. We present a smoothing strategy for multivariate performance scores, in particular precision/recall break-even point and ROCArea. When combined with Nesterov's accelerated gradient algorithm our smoothing strategy yields an optimization algorithm which converges to an eta accurate solution in O(min{1/e,1/sqrt(lambda*e)}) iterations. Furthermore, the cost per iteration of our scheme is the same as that of SVM-Perf and BMRM. Empirical evaluation on a number of publicly available datasets shows that our method converges significantly faster than cutting plane methods without sacrificing generalization ability.
Feb-14-2012
- Country:
- Europe > United Kingdom
- England > Cambridgeshire > Cambridge (0.14)
- North America > United States (0.68)
- Europe > United Kingdom
- Genre:
- Research Report (0.64)
- Technology: