Federated Learning for Ranking Browser History Suggestions
This addresses privacy concerns for users by enabling model training without data collection, though it is incremental as it applies an existing method to a specific domain.
The paper tackled improving the ranking of browser history suggestions in Firefox by using Federated Learning to train a model on user interactions, replacing a handcrafted heuristic and reducing user typing by over half a character.
Federated Learning is a new subfield of machine learning that allows fitting models without collecting the training data itself. Instead of sharing data, users collaboratively train a model by only sending weight updates to a server. To improve the ranking of suggestions in the Firefox URL bar, we make use of Federated Learning to train a model on user interactions in a privacy-preserving way. This trained model replaces a handcrafted heuristic, and our results show that users now type over half a character less to find what they are looking for. To be able to deploy our system to real users without degrading their experience during training, we design the optimization process to be robust. To this end, we use a variant of Rprop for optimization, and implement additional safeguards. By using a numerical gradient approximation technique, our system is able to optimize anything in Firefox that is currently based on handcrafted heuristics. Our paper shows that Federated Learning can be used successfully to train models in privacy-respecting ways.