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arxiv 1909.05038 v1 pith:4IQPR43H submitted 2019-09-11 cs.IR

How to make latent factors interpretable by feeding Factorization machines with knowledge graphs

classification cs.IR
keywords modelaccuracyitemsknowledgelatentsemanticfactorizationfactors
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Model-based approaches to recommendation can recommend items with a very high level of accuracy. Unfortunately, even when the model embeds content-based information, if we move to a latent space we miss references to the actual semantics of recommended items. Consequently, this makes non-trivial the interpretation of a recommendation process. In this paper, we show how to initialize latent factors in Factorization Machines by using semantic features coming from a knowledge graph in order to train an interpretable model. With our model, semantic features are injected into the learning process to retain the original informativeness of the items available in the dataset. The accuracy and effectiveness of the trained model have been tested using two well-known recommender systems datasets. By relying on the information encoded in the original knowledge graph, we have also evaluated the semantic accuracy and robustness for the knowledge-aware interpretability of the final model.

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