Deep Neural Network Initialization With Decision Trees
Author(s) -
Kelli Humbird,
J. L. Peterson,
Ryan G. McClarren
Publication year - 2018
Publication title -
ieee transactions on neural networks and learning systems
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 2.882
H-Index - 212
eISSN - 2162-2388
pISSN - 2162-237X
DOI - 10.1109/tnnls.2018.2869694
Subject(s) - computer science , initialization , decision tree , artificial neural network , artificial intelligence , machine learning , flexibility (engineering) , incremental decision tree , hyperparameter , scalability , tree (set theory) , data mining , tree traversal , decision tree learning , algorithm , database , mathematics , mathematical analysis , statistics , programming language
In this paper, a novel, automated process for constructing and initializing deep feedforward neural networks based on decision trees is presented. The proposed algorithm maps a collection of decision trees trained on the data into a collection of initialized neural networks with the structures of the networks determined by the structures of the trees. The tree-informed initialization acts as a warm-start to the neural network training process, resulting in efficiently trained, accurate networks. These models, referred to as "deep jointly informed neural networks" (DJINN), demonstrate high predictive performance for a variety of regression and classification data sets and display comparable performance to Bayesian hyperparameter optimization at a lower computational cost. By combining the user-friendly features of decision tree models with the flexibility and scalability of deep neural networks, DJINN is an attractive algorithm for training predictive models on a wide range of complex data sets.
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