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(1)We would like to confirm that the paper is not currently under submission at any other journal or conference. None of the co-authors listed in this submission serve as Editors for Applied Intelligence. We have ensured that there is no conflict of interest in this regard. There is no conflict of interest that could compromise the fairness and integrity of the review process. (2)The specific contributions of each author are outlined as follows: (a) Lei Sang: conceptualization, methodology, software development, review, writing-review. (b) Yang Hu: conceptualization, methodology, validation, software utilization, original draft preparation, writing-review. (c) Yi Zhang: methodology, formal analysis, review, writing-review. (d) Yiwen Zhang: conceptualization, methodology, formal analysis, supervision, writing, review, editing, resource management, project oversight, funding acquisition. (3)The manuscript is approved by all authors for publication. (4)This research does not involve any Human or Animals Participants. (5)Authentic datasets, and ethical approval, participant consent, and publication consent are not applicable. (6)The data for our manuscript is sourced from open. <b>Youshu<\/b><b>NetEase<\/b><b>iFashion<\/b>","order":1,"name":"Ethics","group":{"name":"EthicsHeading","label":"Declarations"}}]}}