基于聚类集成和关联的领域自适应

Vishnu Manasa Devagiri, V. Boeva, Shahrooz Abghari
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引用次数: 0

摘要

在使用机器学习模型的许多实际应用中,领域转移是一个常见的问题。大多数现有的解决方案都是基于监督和深度学习模型。本文提出了一种新的聚类算法,能够为所考虑的领域产生自适应和/或集成的聚类模型。源域和目标域由聚类模型表示,这样一个域的每个集群通过定义给定数据向量中每个属性的允许值范围来模拟所研究现象的特定场景。提出的域积分算法分为两个步骤:(i)交叉标记和(ii)积分。最初,每个聚类模型被交叉应用来标记另一个模型的聚类代表。这些标签用于确定两个模型之间的相关性,以识别两个领域的公共集群,这必须在第二步中集成。在公开可用的人类活动识别(HAR)数据集和来自工业合作伙伴提供的智能物流用例的真实数据上,研究和评估了所提出算法的不同特征。在HAR数据集上的实验目标是展示该算法在自动数据标记方面的潜力。在智能物流用例的实验中,对集成模型和两个自适应模型在不同领域的性能进行了评估和比较。
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Domain Adaptation Through Cluster Integration and Correlation
Domain shift is a common problem in many real-world applications using machine learning models. Most of the existing solutions are based on supervised and deep-learning models. This paper proposes a novel clustering algorithm capable of producing an adapted and/or integrated clustering model for the considered domains. Source and target domains are represented by clustering models such that each cluster of a domain models a specific scenario of the studied phenomenon by defining a range of allowable values for each attribute in a given data vector. The proposed domain integration algorithm works in two steps: (i) cross-labeling and (ii) integration. Initially, each clustering model is crossly applied to label the cluster representatives of the other model. These labels are used to determine the correlations between the two models to identify the common clusters for both domains, which must be integrated within the second step. Different features of the proposed algorithm are studied and evaluated on a publicly available human activity recognition (HAR) data set and real-world data from a smart logistics use case provided by an industrial partner. The experiment's goal on the HAR data set is to showcase the algorithm's potential in automatic data labeling. While the conducted experiments on the smart logistics use case evaluate and compare the performance of the integrated and two adapted models in different domains.
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