资源论文learning from data heterogeneity algorithms and applications

learning from data heterogeneity algorithms and applications

2019-10-31 | |  43 |   28 |   0
Abstract Nowadays, as an intrinsic property of big data, data heterogeneity can be seen in a variety of realworld applications, ranging from security to manufacturing, from healthcare to crowdsourcing. It refers to any inhomogeneity in the data, and can be present in a variety of forms, corresponding to different types of data heterogeneity, such as task/view/instance/oracle heterogeneity. As shown in previous work as well as our own work, learning from data heterogeneity not only helps people gain a better understanding of the large volume of data, but also provides a means to leverage such data for effective predictive modeling. In this paper, along with multiple real applications, we will briefly review state-of-the-art techniques for learning from data heterogeneity, and demonstrate their performance at addressing these real world problems.

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