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A Directed Acyclic Graph (DAG) Ensemble Classification Model: An Alternative Architecture for Hierarchical Classification

机译:定向的非循环图(DAG)集合分类模型:分层分类的替代架构

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In this paper, a hierarchical ensemble classification approach that utilizes a Directed Acyclic Graph (DAG) structure is proposed as a solution to the multi-class classification problem. Two main DAG structures are considered: (i) rooted DAG, and (ii) non-rooted DAG. The main challenges that are considered in this paper are: (i) the successive misclassification issue associated with hierarchical classification, and (i) identification of the starting node within the non-rooted DAG approach. To address these issues the idea is to utilize Bayesian probability values to: select the best starting DAG node, and to dictate whether single or multiple paths should be followed within the DAG structure. The reported experimental results indicated that the proposed DAG structure is more effective than when using a simple binary tree structure for generating a hierarchical classification model.
机译:在本文中,提出了一种利用定向非循环图(DAG)结构的分层集群分类方法作为多级分类问题的解决方案。 两个主要的DAG结构被认为是:(i)生根DAG,和(ii)无生根DAG。 本文考虑的主要挑战是:(i)与分层分类相关的连续错误分类问题,(i)在非生根DAG方法中识别起始节点。 为了解决这些问题,该想法是利用贝叶斯概率值来:选择最佳的启动DAG节点,并在DAG结构中遵循单个或多条路径。 报道的实验结果表明,所提出的DAG结构比使用简单二进制树结构来产生分层分类模型的更有效。

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