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Synerise At Recsys 2021: Twitter User Engagement Prediction With A Fast Neural Model

Michał Daniluk, Jacek Dąbrowski, Barbara Rychalska, Konrad Gołuchowski . RecSysChallenge '21: Proceedings of the Recommender Systems Challenge 2021 2021 – 0 citations

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In this paper we present our 2nd place solution to ACM RecSys 2021 Challenge organized by Twitter. The challenge aims to predict user engagement for a set of tweets, offering an exceptionally large data set of 1 billion data points sampled from over four weeks of real Twitter interactions. Each data point contains multiple sources of information, such as tweet text along with engagement features, user features, and tweet features. The challenge brings the problem close to a real production environment by introducing strict latency constraints in the model evaluation phase: the average inference time for single tweet engagement prediction is limited to 6ms on a single CPU core with 64GB memory. Our proposed model relies on extensive feature engineering performed with methods such as the Efficient Manifold Density Estimator (EMDE)

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