Progressive modeling

W. Fan, Haixun Wang, Philip S. Yu, S. Lo, S. Stolfo
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引用次数: 4

Abstract

Presently, inductive learning is still performed in a frustrating batch process. The user has little interaction with the system and no control over the final accuracy and training time. If the accuracy of the produced model is too low, all the computing resources are misspent. In this paper we propose a progressive modeling framework. In progressive modeling, the learning algorithm estimates online both the accuracy of the final model and remaining training time. If the estimated accuracy is far below expectation, the user can terminate training prior to completion without wasting further resources. If the user chooses to complete the learning process, progressive modeling will compute a model with expected accuracy in expected time. We describe one implementation of progressive modeling using ensemble of classifiers.
先进的建模
目前,归纳学习仍然是一个令人沮丧的批处理过程。用户与系统的交互很少,无法控制最终的精度和训练时间。如果生成的模型精度太低,所有的计算资源都被浪费了。本文提出了一种渐进式建模框架。在渐进式建模中,学习算法在线估计最终模型的准确性和剩余训练时间。如果估计的准确度远远低于预期,用户可以在完成之前终止训练,而不会浪费更多的资源。如果用户选择完成学习过程,渐进式建模将在预期时间内计算出具有预期精度的模型。我们描述了一种使用分类器集成的渐进建模实现。
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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