Improved Multiclass Adaboost For Image Classification: The Role Of Tree Optimization

Arman Zharmagambetov, Magzhan Gabidolla, M. A. Carreira-Perpiñán
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引用次数: 14

Abstract

Decision tree boosting is considered as an important and widely recognized method in image classification, despite dominance of the deep learning based approaches in this area. Provided with good image features, it can produce a powerful model with unique properties, such as strong predictive power, scalability, interpretability, etc. In this paper, we propose a novel tree boosting framework which capitalizes on the idea of using shallow, sparse and yet powerful oblique decision trees (trained with recently proposed Tree Alternating optimization algorithm) as the base learners. We empirically show that the resulting model achieves better or comparable performance (both in terms of accuracy and model size) against established boosting algorithms such as gradient boosting or AdaBoost in number of benchmarks. Further, we show that such trees can directly and efficiently handle multiclass problems without using one-vs-all strategy employed by most of the practical boosting implementations.
改进的多类Adaboost图像分类:树优化的作用
尽管基于深度学习的方法在该领域占主导地位,但决策树增强被认为是图像分类中重要且被广泛认可的方法。它具有良好的图像特征,可以生成强大的模型,具有强大的预测能力、可扩展性、可解释性等独特属性。在本文中,我们提出了一个新的树增强框架,该框架利用了使用浅,稀疏和强大的倾斜决策树(用最近提出的树交替优化算法训练)作为基础学习器的思想。我们的经验表明,在许多基准测试中,与已建立的增强算法(如梯度增强或AdaBoost)相比,所得到的模型实现了更好或相当的性能(在准确性和模型大小方面)。此外,我们证明了这种树可以直接有效地处理多类问题,而无需使用大多数实际提升实现所采用的一对一策略。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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