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The experiments were carried out using servers provided by the Digital Research Alliance of Canada, and we affirm that this did not introduce any conflicts of interest. We did not receive any external funding for this research, and we would like to assure that we have no personal relationships that could have swayed the work reported in this paper. Moreover, our research does not touch upon any political or social themes that might generate a conflict of interest. We conducted the development and assessment of the Scale-Aware Wavelet Graph Embedding (SAWE) approach with independence and impartiality, aiming primarily at contributing to the field of recommendation systems in e-commerce. We can confirm that our utilization of the Digital Research Alliance of Canada servers did not give rise to any competing interests.","order":2,"name":"Ethics","group":{"name":"EthicsHeading","label":"Conflict of interest"}}]}}