Abstract
As an effective tool for data analysis, formal concept analysis (FCA) is widely used in software engineering and machine learning. The construction of concept lattice is a key step of the FCA. How to effectively to update the concept lattice is still an open, interesting and important issue. To resolve this problem, an incremental algorithm for concept lattice on image structure similarity (SsimAddExten) was presented. The proposed method mapped each knowledge class on the conceptlattice into a graphic, when a new object was added or deleted in a knowledge class, the boundary profile of graphic will be changed, the graphic edge structure similarity was introduced as the calculation index of the change degree before and after the knowledge, and the concept lattice will be updated on the basis of the index. We performed experiments to test SsimAddExtent, whose computational efficiency obtains obvious advantages over mainstream methods on almost all test points, especially on the data set with a large number of attributes. But, its complexity is not reduced compared with mainstream methods. Both theoretical analysis and performance test show SsimAddExtent algorithm is better choice when we apply the FCA to large scale data or non-sparse data.
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Acknowledgements
We thank all participants for their invaluable contribution. We thank the anonymous reviewers for their valuable comments and suggestions to improve the quality of the paper.
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This study was funded by Beijing postdoctoral research foundation (2021-ZZ-063) and by National Natural Science Foundation of China (61873006).
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Hu, Y., Hu, Y.Z., Su, Z. et al. An incremental algorithm for concept lattice based on structural similarity index. Soft Comput 26, 11409–11423 (2022). https://doi.org/10.1007/s00500-022-07321-3
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DOI: https://doi.org/10.1007/s00500-022-07321-3