Business analytics and machine learning have become essential success factors for various industries - with the downside of cost-intensive gathering and labeling of data. Few-shot learning addresses this challenge and reduces data gathering and labeling costs by learning novel classes with very few labeled data. In this paper, we design a human-in-the-loop (HITL) system for few-shot learning and analyze an extensive range of mechanisms that can be used to acquire human expert knowledge for instances that have an uncertain prediction outcome. We show that the acquisition of human expert knowledge significantly accelerates the few-shot model performance given a negligible labeling effort. We validate our findings in various experiments on a benchmark dataset in computer vision and real-world datasets. We further demonstrate the cost-effectiveness of HITL systems for few-shot learning. Overall, our work aims at supporting researchers and practitioners in effectively adapting machine learning models to novel classes at reduced costs.
翻译:商业分析和机器学习已成为各行业的重要成功因素 -- -- 随着成本密集型数据收集和标签的下降,商业分析和机器学习已成为各行业的重要成功因素。鲜有的学习解决了这一挑战,通过学习带有极少标签数据的新颖课程减少了数据收集和标签成本。在本文中,我们设计了一个“人到行”系统,用于少见学习,并分析一系列广泛的机制,用于在预测结果不确定的情况下获取人类专家知识。我们表明,人类专家知识的获取大大加快了“少见模型”的性能,同时付出了微不足道的标签努力。我们验证了我们在计算机视觉和现实世界数据集基准数据集的各种实验中得出的结论。我们进一步展示了“人到行”系统的成本效益,以便进行少见的学习。总体而言,我们的工作旨在支持研究人员和从业人员有效地将机器学习模式改造成低成本的新课程。