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Cubic graph representation of concept lattice and its decomposition

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Abstract

The adequate representation of uncertainty in fuzzy attributes and its approximation is considered as one of the major issues for knowledge processing tasks. To deal with this issue, recently the calculus of cubic set and its mathematical algebra is established. This paper tried to introduce cubic set based formal context and its concept lattice at user defined cubic granulation. The obtained results are compared with recently available approaches with an illustrative example.

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Notes

  1. https://en.wikipedia.org/wiki/Sanskrit.

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Author sincerely thanks the anonymous reviewer’s and editor for their valuable time and suggestions.

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Correspondence to Prem Kumar Singh.

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Singh, P.K. Cubic graph representation of concept lattice and its decomposition. Evolving Systems 13, 551–562 (2022). https://doi.org/10.1007/s12530-021-09400-6

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