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Self-Attentive Hawkes Processes

About

Asynchronous events on the continuous time domain, e.g., social media actions and stock transactions, occur frequently in the world. The ability to recognize occurrence patterns of event sequences is crucial to predict which typeof events will happen next and when. A de facto standard mathematical framework to do this is the Hawkes process. In order to enhance expressivity of multivariate Hawkes processes, conventional statistical methods and deep recurrent networks have been employed to modify its intensity function. The former is highly interpretable and requires small size of training data but relies on correct model design while the latter has less dependency on prior knowledge and is more powerful in capturing complicated patterns. We leverage pros and cons of these models and propose a self-attentive Hawkes process(SAHP). The proposed method adapts self-attention to fit the intensity function of Hawkes processes. This design has two benefits:(1) compared with conventional statistical methods, the SAHP is more powerful to identify complicated dependency relationships between temporal events; (2)compared with deep recurrent networks, the self-attention mechanism is able to capture longer historical information, and is more interpretable because the learnt attention weight tensor shows contributions of each historical event. Experiments on four real-world datasets demonstrate the effectiveness of the proposed method.

Qiang Zhang, Aldo Lipani, Omer Kirnap, Emine Yilmaz• 2019

Related benchmarks

TaskDatasetResultRank
Event PredictionStackOverflow
RMSE1.375
42
Event Forecastingtaxi
RMSE0.37
23
Marked Temporal Point ProcessStackOverflow (test)
RMSE1.331
20
Event PredictionRetweet
Accuracy54
18
Event PredictionMIMIC
Accuracy55.5
15
Next event predictionAMAZON
RMSE0.619
14
Marked Temporal Point Process PredictionTaxi (test)
RMSE0.334
10
Marked Temporal Point Process PredictionEarthquake (test)
RMSE1.864
10
Marked Temporal Point Process PredictionRETWEET (test)
RMSE21.673
10
Marked Temporal Point Process PredictionAmazon (test)
RMSE0.549
10
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