METHOD AND SYSTEM FOR UNSUPERVISED MULTI-MODAL SET COMPLETION AND RECOMMENDATION

The online shopping is highly based on human perception on products and the human perception on products depends on semantic features of products. Conventional methods provides product recommendation based on historical data and are supervised. The present disclosure receives a set of multi-modal da...

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Hauptverfasser: PATWARDHAN, Manasi, HINGMIRE, Swapnil Vishveshwar, PALSHIKAR, Girish Keshav, KARANDE, Shirish Subhash, KALRA, Kanika
Format: Patent
Sprache:eng
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Zusammenfassung:The online shopping is highly based on human perception on products and the human perception on products depends on semantic features of products. Conventional methods provides product recommendation based on historical data and are supervised. The present disclosure receives a set of multi-modal data. A plurality of features are extracted from the set of data at a plurality of resolution levels and the plurality of features are arranged as parallel corpus based on a category associated with each data from the set of data. Further, an abstract interaction vector is computed for each element of the set of data using the parallel corpus. Further, the set of recommendations are identified by comparing the abstract interaction vector associated with the set of data with an abstract interaction vector associated with each of a plurality of items stored in the database by utilizing a similarity metric.