With the rising emergence of decentralized and opportunistic approaches to machine learning, end devices are increasingly tasked with training deep learning models on-devices using crowd-sourced data that they collect themselves. These approaches are desirable from a resource consumption perspective and also from a privacy preservation perspective. When the devices benefit directly from the trained models, the incentives are implicit - contributing devices' resources are incentivized by the availability of the higher-accuracy model that results from collaboration. However, explicit incentive mechanisms must be provided when end-user devices are asked to contribute their resources (e.g., computation, communication, and data) to a task performed primarily for the benefit of others, e.g., training a model for a task that a neighbor device needs but the device owner is uninterested in. In this project, we propose a novel blockchain-based incentive mechanism for completely decentralized and opportunistic learning architectures. We leverage a smart contract not only for providing explicit incentives to end devices to participate in decentralized learning but also to create a fully decentralized mechanism to inspect and reflect on the behavior of the learning architecture.
翻译:iDML:激励式分散学习
随着分散和机会主义学习方法的兴起,终端设备越来越需要使用自己收集的众包数据在设备上训练深度学习模型。这些方法从资源消耗角度以及从隐私保护角度都是可取的。当设备直接受益于训练模型时,激励是隐性的 - 参与设备的资源通过产生更高准确度的模型而获得激励。然而,当要求终端用户设备为主要为他人利益而进行的任务(例如训练邻居设备需要但设备所有者不感兴趣的任务)做出贡献时,必须提供显式激励机制。在这个项目中,我们提出了一种新颖的基于区块链的激励机制,用于完全分散和机会主义学习结构。我们利用智能合约不仅为终端设备提供显式激励参与分散学习,而且为检查和反思学习架构行为创造了一个完全分散的机制。