Learning Hawkes Processes from a handful of events
Salehi, Farnood, Trouleau, William, Grossglauser, Matthias, Thiran, Patrick
–Neural Information Processing Systems
Learning the causal-interaction network of multivariate Hawkes processes is a useful task in many applications. Maximum-likelihood estimation is the most common approach to solve the problem in the presence of long observation sequences. However, when only short sequences are available, the lack of data amplifies the risk of overfitting and regularization becomes critical. Due to the challenges of hyper-parameter tuning, state-of-the-art methods only parameterize regularizers by a single shared hyper-parameter, hence limiting the power of representation of the model. To solve both issues, we develop in this work an efficient algorithm based on variational expectation-maximization.
Neural Information Processing Systems
Mar-19-2020, 01:48:17 GMT