21 Commits

Author SHA1 Message Date
Jiaming Yuan
e206b899ef
Rework MAP and Pairwise for LTR. (#9075) 2023-04-28 02:39:12 +08:00
Jiaming Yuan
ef13dd31b1
Rework the NDCG objective. (#9015) 2023-04-18 21:16:06 +08:00
Jiaming Yuan
cce4af4acf
Initial support for quantile loss. (#8750)
- Add support for Python.
- Add objective.
2023-02-16 02:30:18 +08:00
Jiaming Yuan
3e26107a9c
Rename and extract Context. (#8528)
* Rename `GenericParameter` to `Context`.
* Rename header file to reflect the change.
* Rename all references.
2022-12-07 04:58:54 +08:00
Jiaming Yuan
fffb1fca52
Calculate base_score based on input labels for mae. (#8107)
Fit an intercept as base score for abs loss.
2022-09-20 20:53:54 +08:00
Jiaming Yuan
6967ef7267
Remove omp_get_max_threads in objective. (#7589) 2022-01-24 04:35:49 +08:00
Philip Hyunsu Cho
1d22a9be1c
Revert "Reorder includes. (#5749)" (#5771)
This reverts commit d3a0efbf162f3dceaaf684109e1178c150b32de3.
2020-06-09 10:29:28 -07:00
Jiaming Yuan
d3a0efbf16
Reorder includes. (#5749)
* Reorder includes.

* R.
2020-06-03 17:30:47 +12:00
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
Jiaming Yuan
ae536756ae
Add Model and Configurable interface. (#4945)
* Apply Configurable to objective functions.
* Apply Model to Learner and Regtree, gbm.
* Add Load/SaveConfig to objs.
* Refactor obj tests to use smart pointer.
* Dummy methods for Save/Load Model.
2019-10-18 01:56:02 -04:00
Jiaming Yuan
095de3bf5f
Export c++ headers in CMake installation. (#4897)
* Move get transpose into cc.

* Clean up headers in host device vector, remove thrust dependency.

* Move span and host device vector into public.

* Install c++ headers.

* Short notes for c and c++.

Co-Authored-By: Philip Hyunsu Cho <chohyu01@cs.washington.edu>
2019-10-06 23:53:09 -04:00
Jiaming Yuan
f0064c07ab
Refactor configuration [Part II]. (#4577)
* Refactor configuration [Part II].

* General changes:
** Remove `Init` methods to avoid ambiguity.
** Remove `Configure(std::map<>)` to avoid redundant copying and prepare for
   parameter validation. (`std::vector` is returned from `InitAllowUnknown`).
** Add name to tree updaters for easier debugging.

* Learner changes:
** Make `LearnerImpl` the only source of configuration.

    All configurations are stored and carried out by `LearnerImpl::Configure()`.

** Remove booster in C API.

    Originally kept for "compatibility reason", but did not state why.  So here
    we just remove it.

** Add a `metric_names_` field in `LearnerImpl`.
** Remove `LazyInit`.  Configuration will always be lazy.
** Run `Configure` before every iteration.

* Predictor changes:
** Allocate both cpu and gpu predictor.
** Remove cpu_predictor from gpu_predictor.

    `GBTree` is now used to dispatch the predictor.

** Remove some GPU Predictor tests.

* IO

No IO changes.  The binary model format stability is tested by comparing
hashing value of save models between two commits
2019-07-20 08:34:56 -04:00
Jiaming Yuan
c589eff941
De-duplicate GPU parameters. (#4454)
* Only define `gpu_id` and `n_gpus` in `LearnerTrainParam`
* Pass LearnerTrainParam through XGBoost vid factory method.
* Disable all GPU usage when GPU related parameters are not specified (fixes XGBoost choosing GPU over aggressively).
* Test learner train param io.
* Fix gpu pickling.
2019-05-29 11:55:57 +08:00
Jiaming Yuan
2e618af743
Fix cpplint. (#4157)
* Add comment after #endif.
* Add missing headers.
2019-02-18 00:16:29 +08:00
trivialfis
d594b11f35 Implement transform to reduce CPU/GPU code duplication. (#3643)
* Implement Transform class.
* Add tests for softmax.
* Use Transform in regression, softmax and hinge objectives, except for Cox.
* Mark old gpu objective functions deprecated.
* static_assert for softmax.
* Split up multi-gpu tests.
2018-10-02 15:06:21 +13:00
Henry Gouk
69454d9487 Implementation of hinge loss for binary classification (#3477) 2018-08-07 10:06:42 +12:00
Andrew V. Adinetz
d5992dd881 Replaced std::vector-based interfaces with HostDeviceVector-based interfaces. (#3116)
* Replaced std::vector-based interfaces with HostDeviceVector-based interfaces.

- replacement was performed in the learner, boosters, predictors,
  updaters, and objective functions
- only interfaces used in training were replaced;
  interfaces like PredictInstance() still use std::vector
- refactoring necessary for replacement of interfaces was also performed,
  such as using HostDeviceVector in prediction cache

* HostDeviceVector-based interfaces for custom objective function example plugin.
2018-02-28 13:00:04 +13:00
Thejaswi
84ab74f3a5 Objective function evaluation on GPU with minimal PCIe transfers (#2935)
* Added GPU objective function and no-copy interface.

- xgboost::HostDeviceVector<T> syncs automatically between host and device
- no-copy interfaces have been added
- default implementations just sync the data to host
  and call the implementations with std::vector
- GPU objective function, predictor, histogram updater process data
  directly on GPU
2018-01-12 21:33:39 +13:00
tqchen
d75e3ed05d [LIBXGBOOST] pass demo running. 2016-01-16 10:24:01 -08:00
tqchen
b4d0bb5a6d [METRIC] all metric move finished 2016-01-16 10:24:01 -08:00
tqchen
dedd87662b [OBJ] Add basic objective function and registry 2016-01-16 10:24:01 -08:00