smaller memory
Faster Boosting with Smaller Memory
State-of-the-art implementations of boosting, such as XGBoost and LightGBM, can process large training sets extremely fast. However, this performance requires that the memory size is sufficient to hold a 2-3 multiple of the training set size. This paper presents an alternative approach to implementing the boosted trees, which achieves a significant speedup over XGBoost and LightGBM, especially when the memory size is small. This is achieved using a combination of three techniques: early stopping, effective sample size, and stratified sampling. Our experiments demonstrate a 10-100 speedup over XGBoost when the training data is too large to fit in memory.
Reviews: Faster Boosting with Smaller Memory
This paper uses "effective number of examples" and "weighted sampling", to reduce the used samples in each boosting round. The author provides theoretical analysis and explicit experiments to check the performance of the proposed method. But the abstract is harsh. It is unclear what's the core idea and intuition of the paper from the abstract. It simply names the three techniques. The experiments show that Sparrow reduces the memory needed to train boosting trees, and in some cases converges faster than other baselines trained in memory.
Faster Boosting with Smaller Memory
State-of-the-art implementations of boosting, such as XGBoost and LightGBM, can process large training sets extremely fast. However, this performance requires that the memory size is sufficient to hold a 2-3 multiple of the training set size. This paper presents an alternative approach to implementing the boosted trees, which achieves a significant speedup over XGBoost and LightGBM, especially when the memory size is small. This is achieved using a combination of three techniques: early stopping, effective sample size, and stratified sampling. Our experiments demonstrate a 10-100 speedup over XGBoost when the training data is too large to fit in memory.
Faster Boosting with Smaller Memory
Alafate, Julaiti, Freund, Yoav S.
State-of-the-art implementations of boosting, such as XGBoost and LightGBM, can process large training sets extremely fast. However, this performance requires that the memory size is sufficient to hold a 2-3 multiple of the training set size. This paper presents an alternative approach to implementing the boosted trees, which achieves a significant speedup over XGBoost and LightGBM, especially when the memory size is small. This is achieved using a combination of three techniques: early stopping, effective sample size, and stratified sampling. Our experiments demonstrate a 10-100 speedup over XGBoost when the training data is too large to fit in memory. Papers published at the Neural Information Processing Systems Conference.