论文标题
ASCII:无知互换的辅助分类
ASCII: ASsisted Classification with Ignorance Interchange
论文作者
论文摘要
数据收集设备和计算平台的快速发展会产生新兴的代理,每种代理都配备了特定受试者人群的独特数据模式。尽管可以通过向其传输其他数据来增强代理的预测性能,但由于棘手的传输成本和安全问题,这通常是不现实的。尽管可以通过向其传输其他数据来增强代理的预测性能,但由于棘手的传输成本和安全问题,这通常是不现实的。在本文中,我们提出了一种名为ASCII的方法,用于通过其他代理商的帮助来提高其分类性能。主要思想是迭代互换在代理中每个汇总样本之间的0到1之间的无知值,其中值代表了所需的进一步援助的紧迫性。该方法天然适合于隐私感知,传输经济和分散的学习方案。该方法也是一般的,因为它允许代理使用任意分类器,例如逻辑回归,集合树和神经网络,并且它们之间可能是异质的。我们通过广泛的实验研究证明了提出的方法。
The rapid development in data collecting devices and computation platforms produces an emerging number of agents, each equipped with a unique data modality over a particular population of subjects. While the predictive performance of an agent may be enhanced by transmitting other data to it, this is often unrealistic due to intractable transmission costs and security concerns. While the predictive performance of an agent may be enhanced by transmitting other data to it, this is often unrealistic due to intractable transmission costs and security concerns. In this paper, we propose a method named ASCII for an agent to improve its classification performance through assistance from other agents. The main idea is to iteratively interchange an ignorance value between 0 and 1 for each collated sample among agents, where the value represents the urgency of further assistance needed. The method is naturally suitable for privacy-aware, transmission-economical, and decentralized learning scenarios. The method is also general as it allows the agents to use arbitrary classifiers such as logistic regression, ensemble tree, and neural network, and they may be heterogeneous among agents. We demonstrate the proposed method with extensive experimental studies.