Towards Multi-Language Recipe Personalisation and Recommendation
Niall Twomey, Mikhail Fain, Andrey Ponikar, Nadine Sarraf

TL;DR
This paper introduces a scalable multi-language recipe recommendation system that leverages billions of interactions across five languages, demonstrating stable personalization and surpassing baseline models.
Contribution
It presents the first large-scale multi-language recipe recommendation framework using novel representations and models, addressing fundamental questions of cross-language recommendation quality.
Findings
Our approach outperforms baseline models in cross-validation.
The system scales effectively to new languages and users.
Recipe representations combining ingredients, skills, and images are effective.
Abstract
Multi-language recipe personalisation and recommendation is an under-explored field of information retrieval in academic and production systems. The existing gaps in our current understanding are numerous, even on fundamental questions such as whether consistent and high-quality recipe recommendation can be delivered across languages. In this paper, we introduce the multi-language recipe recommendation setting and present grounding results that will help to establish the potential and absolute value of future work in this area. Our work draws on several billion events from millions of recipes and users from Arabic, English, Indonesian, Russian, and Spanish. We represent recipes using a combination of normalised ingredients, standardised skills and image embeddings obtained without human intervention. In modelling, we take a classical approach based on optimising an embedded bi-linear…
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