3 Commits

Author SHA1 Message Date
sriramch
ee81ba8e1f implementation of map ranking algorithm on gpu (#5129)
* - implementation of map ranking algorithm
  - also effected necessary suggestions mentioned in the earlier ranking pr's
  - made some performance improvements to the ndcg algo as well
2019-12-27 12:05:37 +13:00
sriramch
2abe69d774 - ndcg ltr implementation on gpu (#5004)
* - ndcg ltr implementation on gpu
  - this is a follow-up to the pairwise ltr implementation
2019-11-13 11:21:04 +13:00
sriramch
310fe60b35 Pairwise ranking objective implementation on gpu (#4873)
* - pairwise ranking objective implementation on gpu
   - there are couple of more algorithms (ndcg and map) for which support will be added
     as follow-up pr's
   - with no label groups defined, get gradient is 90x faster on gpu (120m instance
     mortgage dataset)
   - it can perform by an order of magnitude faster with ~ 10 groups (and adequate cores
     for the cpu implementation)

* Add JSON config to rank obj.
2019-10-22 23:40:07 -04:00