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タイトル: Comparison of the Representational Power of Random Forests, Binary Decision Diagrams, and Neural Networks
著者: Kumano, So
Akutsu, Tatsuya  kyouindb  KAKEN_id  orcid https://orcid.org/0000-0001-9763-797X (unconfirmed)
著者名の別形: 熊野, 颯
阿久津, 達也
発行日: Apr-2022
出版者: MIT Press
誌名: Neural Computation
巻: 34
号: 4
開始ページ: 1019
終了ページ: 1044
抄録: In this letter, we compare the representational power of random forests, binary decision diagrams (BDDs), and neural networks in terms of the number of nodes. We assume that an axis-aligned function on a single variable is assigned to each edge in random forests and BDDs, and the activation functions of neural networks are sigmoid, rectified linear unit, or similar functions. Based on existing studies, we show that for any random forest, there exists an equivalent depth-3 neural network with a linear number of nodes. We also show that for any BDD with balanced width, there exists an equivalent shallow depth neural network with a polynomial number of nodes. These results suggest that even shallow neural networks have the same or higher representation power than deep random forests and deep BDDs. We also show that in some cases, an exponential number of nodes are required to express a given random forest by a random forest with a much fewer number of trees, which suggests that many trees are required for random forests to represent some specific knowledge efficiently.
著作権等: © 2022 Massachusetts Institute of Technology
The full-text file will be made open to the public on 23 June 2022 in accordance with publisher's 'Terms and Conditions for Self-Archiving'.
URI: http://hdl.handle.net/2433/276865
DOI(出版社版): 10.1162/neco_a_01486
PubMed ID: 35231936
出現コレクション:学術雑誌掲載論文等

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