Christopher J.C. Burges, Tal Shaked, Erin Renshaw, Ari Lazier, Matt Deeds, Nicole Hamilton, and Greg Hullender
August 2005
We investigate using gradient descent methods for learning ranking functions; we propose a simple probabilistic cost function, and we introduce RankNet, an implementation of these ideas using a neural network to model the underlying ranking function. We present test results on toy data and on data from a commercial internet search engine.
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| Type: | Inproceedings |
| Pages: | 0 |
| Number: | MSR-TR-2005-06 |
| Institution: | Microsoft Research |