This paper presents a novel, graph embedding based recommendation technique. The method operates on the knowledge graph, an information representation technique alloying content-based and collaborative information. To generate recommendations, a two dimensional embedding is developed for the knowledge graph. As the embedding maps the users and the items to the same vector space, the recommendations are then calculated on a spatial basis. Regarding to the number of cold start cases, precision, recall, normalized Cumulative Discounted Gain and computational resource need, the evaluation shows that the introduced technique delivers a higher performance compared to collaborative filtering on top-n recommendation lists. Our further finding is that graph embedding based methods show a more stable performance in the case of an increasing amount of user preference information compared to the benchmark method.
Cixing LvYao LuXiaohui YanWei LüHua Tan
Ismail ChetouiEssaid El BachariMohamed El Adnani
Zeinab ShokrzadehMohammad‐Reza Feizi‐DerakhshiMohammad Ali BalafarJamshid Bagherzadeh
Chunyang LingYanzhen ZouZeqi LinBing Xie