require 'paths' --require 'xlua' require 'string' require 'os' --require 'sys' require 'nn' -- these actually return local variables but we will re-require them -- when needed. This is just to make sure they are loaded. require 'moses' unpack = unpack or table.unpack local dt = require 'decisiontree._env' -- c lib: require "paths" paths.require 'libdecisiontree' dt.HashMap = torch.getmetatable("dt.HashMap").new dt.EPSILON = 1e-6 -- experimental Tensor-like container require 'decisiontree.SparseTensor' -- functions require 'decisiontree.math' require 'decisiontree.utils' -- for multi-threading --require 'decisiontree.WorkPool' -- abstract classes require 'decisiontree.DecisionTree' require 'decisiontree.DecisionForest' require 'decisiontree.DecisionForestTrainer' require 'decisiontree.TreeState' -- for CaRTree inference require 'decisiontree.CartNode' require 'decisiontree.CartTree' -- Criterions (extended with updateHessInput and backward2) require 'decisiontree.MSECriterion' require 'decisiontree.LogitBoostCriterion' -- Used by both RandomForestTrainer and GradientBoostTrainer require 'decisiontree.CartTrainer' -- Used by CartTrainer require 'decisiontree.DataSet' -- Random Forest Training require 'decisiontree.RandomForestTrainer' require 'decisiontree.GiniState' -- TreeState subclass -- Gradient Boosted Decision Tree Training require 'decisiontree.GradientBoostTrainer' require 'decisiontree.GradientBoostState' -- TreeState subclass -- unit tests and benchmarks --require 'decisiontree.test' --require 'decisiontree.benchmark' -- nn.Module require 'decisiontree.DFD' require 'decisiontree.Sparse2Dense' return dt