PinnerFormer: Sequence Modeling for User Representation at Pinterest
This work addresses the problem of efficiently modeling user behavior for recommendation systems at Pinterest, representing an incremental improvement over prior batch embedding methods.
The paper tackles the challenge of deploying sequential models in production for personalized recommendations by introducing PinnerFormer, which uses a dense all-action loss to predict long-term engagement instead of next actions, resulting in significant improvements in user retention and engagement at Pinterest.
Sequential models have become increasingly popular in powering personalized recommendation systems over the past several years. These approaches traditionally model a user's actions on a website as a sequence to predict the user's next action. While theoretically simplistic, these models are quite challenging to deploy in production, commonly requiring streaming infrastructure to reflect the latest user activity and potentially managing mutable data for encoding a user's hidden state. Here we introduce PinnerFormer, a user representation trained to predict a user's future long-term engagement using a sequential model of a user's recent actions. Unlike prior approaches, we adapt our modeling to a batch infrastructure via our new dense all-action loss, modeling long-term future actions instead of next action prediction. We show that by doing so, we significantly close the gap between batch user embeddings that are generated once a day and realtime user embeddings generated whenever a user takes an action. We describe our design decisions via extensive offline experimentation and ablations and validate the efficacy of our approach in A/B experiments showing substantial improvements in Pinterest's user retention and engagement when comparing PinnerFormer against our previous user representation. PinnerFormer is deployed in production as of Fall 2021.