Why and How We Combine Multiple Deep Learning Models With Functional Overlaps

IF 1.7 4区 计算机科学 Q3 COMPUTER SCIENCE, SOFTWARE ENGINEERING
Mingliang Ma, Yanhui Li, Yingxin Chen, Lin Chen, Yuming Zhou
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Abstract

The evolution (e.g., development and maintenance) of deep learning (DL) models has attracted much attention. One of the main challenges during the development and maintenance of DL models is model training, which often requires a lot of human resources and computing power (such as labeling costs and parameter training). In recent years, to alleviate this problem, researchers have introduced the idea of software engineering (SE) into DL. Researchers consider the DL model a new type of software, borrowing the practice of traditional software reuse, that is, focusing on the reuse of DL models to improve the quality of DL model development and maintenance. This paper focuses on more complex model reuse scenarios, where developers need to combine multiple models with functional overlaps. We explore whether the model combination technique can meet the requirements for such scenarios. We have conducted an empirical study of the research scenario and found that a model composition approach was needed to meet the requirements. Furthermore, we propose a model combination method based on concatenation-parallel called MCCP. First, the multiple models' hidden layer features are connected, and then the multiple models are connected in parallel to construct a joint model with all output categories. The joint model is trained to achieve unified requirements under the limited marking cost. Through experiments on data sets in nine domains and five model structures, the following two conclusions are drawn: (1) we observe noticeable differences (38% at most) in the performance of multiple models within overlapping category data, which calls for effective model combination techniques. (2) MCCP is more effective than the baseline, which performs the best in eight of the nine domains. Our research shows that the joint model generated by combining models with overlapping functions can meet the requirements of complex model reuse scenarios.

我们为什么以及如何结合多个功能重叠的深度学习模型
深度学习(DL)模型的演变(如开发和维护)引起了人们的广泛关注。DL模型开发和维护过程中的主要挑战之一是模型训练,这通常需要大量的人力资源和计算能力(如标记成本和参数训练)。近年来,为了缓解这一问题,研究者将软件工程(SE)的思想引入深度学习。研究者认为深度学习模型是一种新型的软件,借鉴了传统软件重用的做法,即关注深度学习模型的重用,以提高深度学习模型开发和维护的质量。本文关注的是更复杂的模型重用场景,其中开发人员需要将多个具有功能重叠的模型组合在一起。我们探索模型组合技术是否能够满足这些场景的需求。我们对研究场景进行了实证研究,发现需要一种模型组合方法来满足需求。在此基础上,提出了一种基于串联并行的模型组合方法(MCCP)。首先将多个模型的隐层特征连接起来,然后将多个模型并行连接,构建一个包含所有输出类别的联合模型。对联合模型进行训练,在有限的标记成本下实现统一需求。通过对9个领域和5种模型结构的数据集进行实验,得出以下两个结论:(1)在重叠的类别数据中,我们观察到多个模型的性能存在显著差异(最多38%),这需要有效的模型组合技术。(2) MCCP比基线更有效,在9个领域中的8个领域表现最佳。我们的研究表明,将具有重叠功能的模型组合生成的联合模型可以满足复杂模型重用场景的需求。
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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来源期刊
Journal of Software-Evolution and Process
Journal of Software-Evolution and Process COMPUTER SCIENCE, SOFTWARE ENGINEERING-
自引率
10.00%
发文量
109
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