On rough mereology and VC-dimension in treatment of decision prediction for open world decision systems
Lech T. Polkowski

TL;DR
This paper introduces a novel approach to decision prediction in open-world systems using rough mereology and VC-dimension, enabling better handling of new objects with unseen feature sets.
Contribution
It develops a new theoretical framework combining rough mereology, set theory, and VC-dimension to improve decision prediction for unseen objects in open systems.
Findings
The proposed method effectively predicts decisions for new objects.
The framework incorporates rough mereology with VC-dimension for decision-making.
Results demonstrate improved accuracy over traditional rough set approaches.
Abstract
Given a raw knowledge in the form of a data table/a decision system, one is facing two possible venues. One, to treat the system as closed, i.e., its universe does not admit new objects, or, to the contrary, its universe is open on admittance of new objects. In particular, one may obtain new objects whose sets of values of features are new to the system. In this case the problem is to assign a decision value to any such new object. This problem is somehow resolved in the rough set theory, e.g., on the basis of similarity of the value set of a new object to value sets of objects already assigned a decision value. It is crucial for online learning when each new object must have a predicted decision value.\ There is a vast literature on various methods for decision prediction for new yet unseen object. The approach we propose is founded in the theory of rough mereology and it requires a…
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Taxonomy
TopicsRough Sets and Fuzzy Logic
MethodsSparse Evolutionary Training
