2023
DOI: 10.17977/um018v6i22023p199-214
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Recurrent Session Approach to Generative Association Rule based Recommendation

Tubagus Arief Armanda,
Ire Puspa Wardhani,
Tubagus M. Akhriza
et al.

Abstract: This article introduces a generative association rule (AR)-based recommendation system (RS) using a recurrent neural network approach implemented when a user searches for an item in a browsing session. It is proposed to overcome the limitations of the traditional AR-based RS which implements query-based sessions that are not adaptive to input series, thus failing to generate recommendations.  The dataset used is accurate retail transaction data from online stores in Europe. The contribution of the proposed met… Show more

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