500+ Times Faster than Deep Learning: (A Case Study Exploring Faster Methods for Text Mining StackOverflow)

Suvodeep Majumder, N. Balaji, Katie Brey, Wei Fu, T. Menzies
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引用次数: 61

Abstract

Deep learning methods are useful for high-dimensional data and are becoming widely used in many areas of software engineering. Deep learners utilizes extensive computational power and can take a long time to train– making it difficult to widely validate and repeat and improve their results. Further, they are not the best solution in all domains. For example, recent results show that for finding related Stack Overflow posts, a tuned SVM performs similarly to a deep learner, but is significantly faster to train.This paper extends that recent result by clustering the dataset, then tuning every learners within each cluster. This approach is over 500 times faster than deep learning (and over 900 times faster if we use all the cores on a standard laptop computer). Significantly, this faster approach generates classifiers nearly as good (within 2% F1 Score) as the much slower deep learning method. Hence we recommend this faster methods since it is much easier to reproduce and utilizes far fewer CPU resources. More generally, we recommend that before researchers release research results, that they compare their supposedly sophisticated methods against simpler alternatives(e.g applying simpler learners to build local models).
比深度学习快500多倍:(一个探索更快文本挖掘方法的案例研究StackOverflow)
深度学习方法对高维数据非常有用,并且在软件工程的许多领域得到了广泛的应用。深度学习者利用广泛的计算能力,可能需要很长时间来训练,这使得广泛验证、重复和改进结果变得困难。此外,它们不是所有领域的最佳解决方案。例如,最近的结果表明,对于寻找相关的Stack Overflow帖子,经过调整的支持向量机的性能与深度学习器相似,但训练速度要快得多。本文通过对数据集进行聚类,然后对每个聚类中的每个学习器进行调优,扩展了最近的结果。这种方法比深度学习快500多倍(如果我们在一台标准的笔记本电脑上使用所有的核心,速度会快900多倍)。值得注意的是,这种更快的方法生成的分类器几乎和更慢的深度学习方法一样好(在2%的F1分数之内)。因此,我们推荐这种更快的方法,因为它更容易复制并且使用更少的CPU资源。更一般地说,我们建议研究人员在发布研究结果之前,将他们所谓的复杂方法与更简单的替代方法(如:G应用更简单的学习器来构建局部模型)。
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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