利用 MIMO 启发的 DPP MAP 推理学习带宽受限的多源数据

Xiwen Chen;Huayu Li;Rahul Amin;Abolfazl Razi
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摘要

确定性点过程(DPP)是一种强大的技术,可通过促进所选样本中相似元素的排斥来增强数据的多样性。特别是,基于 DPP 的最大后验(MAP)推理可用于识别具有最高多样性的子集。然而,通常采用的假设是所有数据样本在一个点上都是可用的,这阻碍了它在现实世界中的应用,因为在现实世界中,数据样本分布在不同的数据源上,连接时断时续,带宽有限。本文提出了分布式版本的 DPP 推理,以加强有限通信预算下的多源数据多样化。首先,我们将多样性最大化分布式样本选择的下限从矩阵行列式优化转换为单项之和的更简单形式。其次,由信息汇形成所选样本的行列式保留稀疏表示,作为所收集样本的代理,并以轻量级消息的形式发送回源,从而消除原始数据交换的需要。我们的方法受到基于信道状态信息(CSI)的多输入多输出(MIMO)系统信道正交化过程的启发。广泛的实验验证了我们的可扩展方法优于最常用的数据选择方法,包括 GreeDi、Greedymax、随机选择和分层抽样,在相对分集误差 (RDE) 方面至少降低了 12% 。这种多样性的增强转化为各种下游学习任务性能的大幅提高,包括多级分类(准确率提高 2%-4%)、物体检测(mAP 提高 2%)和多实例学习(AUC 提高 1.3%)。
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Learning on Bandwidth Constrained Multi-Source Data With MIMO-Inspired DPP MAP Inference
Determinantal Point Process (DPP) is a powerful technique to enhance data diversity by promoting the repulsion of similar elements in the selected samples. Particularly, DPP-based Maximum A Posteriori (MAP) inference is used to identify subsets with the highest diversity. However, a commonly adopted presumption of all data samples being available at one point hinders its applicability to real-world scenarios where data samples are distributed across distinct sources with intermittent and bandwidth-limited connections. This paper proposes a distributed version of DPP inference to enhance multi-source data diversification under limited communication budgets. First, we convert the lower bound of the diversity-maximized distributed sample selection from matrix determinant optimization to a simpler form of the sum of individual terms. Next, a determinant-preserved sparse representation of selected samples is formed by the sink as a surrogate for collected samples and sent back to sources as lightweight messages to eliminate the need for raw data exchange. Our approach is inspired by the channel orthogonalization process of Multiple-Input Multiple-Output (MIMO) systems based on the Channel State Information (CSI). Extensive experiments verify the superiority of our scalable method over the most commonly used data selection methods, including GreeDi, Greedymax, random selection, and stratified sampling by a substantial gain of at least 12% reduction in Relative Diversity Error (RDE). This enhanced diversity translates to a substantial improvement in the performance of various downstream learning tasks, including multi-level classification (2%-4% gain in accuracy), object detection (2% gain in mAP), and multiple-instance learning (1.3% gain in AUC).
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