A heuristic representation learning based on evidential memberships: Case study of UCI-SPECTF.
In: International Journal of Approximate Reasoning, Jg. 120 (2020-05-01), S. 125-137
Online
serialPeriodical
Zugriff:
The diagnosed features (samples) with multiple attributes of medical images always demand experts to reveal insight. Up to today, machine learning often cannot be a helpful expert. The reason lies in lacking evidential granules carrying knowledge and evidence for inferential learning. The shortage slows down representation learning which aims at discovering expressions for featuring concepts. Therefore, this paper proposes evidential memberships carrying preferential relevance to build a heuristic representation learning. Empirically, it solves local features and global representations with maximum coverage under challenges of shallow bury. For illustration, it is implemented on the testing data set of UCI-SPECTF. [ABSTRACT FROM AUTHOR]
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A heuristic representation learning based on evidential memberships: Case study of UCI-SPECTF.
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Autor/in / Beteiligte Person: | Fujita, Hamido ; Ko, Yu-Chien |
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Zeitschrift: | International Journal of Approximate Reasoning, Jg. 120 (2020-05-01), S. 125-137 |
Veröffentlichung: | 2020 |
Medientyp: | serialPeriodical |
ISSN: | 0888-613X (print) |
DOI: | 10.1016/j.ijar.2020.02.002 |
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