General Supervised Learning Framework for Open World Classification
Charles Nicholson (cnicholson@ou.edu)
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Abstract
In open-world supervised learning for classification, the training data is incomplete with respect to the full set of relevant classes in the application domain. Most existing research on this problem focuses on computer vision, and many of the proposed methodologies are intrinsically tied to specific machine learning algorithms or data types. However, real-world open-world settings may arise in a wide array of problem contexts, each with its own data type and...
