Learning with Small Data

Z. Li, Huaxiu Yao, Fenglong Ma
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引用次数: 12

Abstract

In the era of big data, it is easy for us collect a huge number of image and text data. However, we frequently face the real-world problems with only small (labeled) data in some domains, such as healthcare and urban computing. The challenge is how to make machine learn algorithms still work well with small data? To solve this challenge, in this tutorial, we will cover the state-of-the-art machine learning techniques to handle small data issue. In particular, we focus on the following three aspects: (1) Providing a comprehensive review of recent advances in exploring the power of knowledge transfer, especially focusing on meta-learning; (2) introducing the cutting-edge techniques of incorporating human/expert knowledge into machine learning models; and (3) identifying the open challenges to data augmentation techniques, such as generative adversarial networks. We believe this is an emerging and potentially high-impact topic in computational data science, which will attract both researchers and practitioners from academia and industry.
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小数据学习
在大数据时代,我们很容易收集到大量的图像和文本数据。然而,在某些领域(如医疗保健和城市计算),我们经常面临只有少量(标记)数据的现实问题。挑战在于如何让机器学习算法在处理小数据时仍然能很好地工作?为了解决这一挑战,在本教程中,我们将介绍最先进的机器学习技术来处理小数据问题。本文重点关注以下三个方面:(1)全面回顾了知识转移的力量,特别是元学习的研究进展;(2)引入将人类/专家知识纳入机器学习模型的前沿技术;(3)识别数据增强技术的公开挑战,如生成对抗网络。我们相信这是计算数据科学中一个新兴的、具有潜在高影响力的话题,它将吸引学术界和工业界的研究人员和实践者。
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