Goto

Collaborating Authors

 Statistical Learning


1fb2a1c37b18aa4611c3949d6148d0f8-Paper.pdf

Neural Information Processing Systems

Given taxi-ride counts information between departure and destination locations, how can we forecast their future demands?





2109737282d2c2de4fc5534be26c9bb6-Paper.pdf

Neural Information Processing Systems

Higher-order brain areas such as the frontal cortices are considered essential for the flexible solution of tasks. However, the precise computational role of these areas is still debated.


1c446a652e50b1ea5618b66c07bfc0c5-Supplemental-Conference.pdf

Neural Information Processing Systems

While other areas of machine learning have seen more and more automation, designing a high-performing recommender system still requires a high level of human effort. Furthermore, recent work has shown that modern recommender system algorithms do not always improve over well-tuned baselines. A natural follow-up question is, "how do we choose the right algorithm for anew dataset and performance metric?" In this work, we start by giving the first large-scale study ofrecommender system approaches bycomparing 24algorithms and100 sets of hyperparameters across 85 datasets and 315 metrics. We find that the best algorithms and hyperparameters are highly dependent on the dataset and performance metric.