diff --git a/readme.md b/readme.md new file mode 100644 index 0000000..e0a076d --- /dev/null +++ b/readme.md @@ -0,0 +1,18 @@ +# Fully Neural Network based Model for General Temporal Point Process(Neurips 2019,Takahiro Omi) + +This code is pytorch version of implementation for Neural Temporal Point Process. + +Temporal Point Process is mathematical model for capturing patterns of discrete event occurrences. + However, the traditional point process have limited expressivity by assumption. + For example, Poisson process assumes the independence of all events though it changes by time. + Other point process like Hawkes process does not assume the independence but the intensity function + of Hawkes process should be positive and have exponential decaying kernel. For these reason, the author + suggest the generalized version of point process by introducing neural network. + + +Reference + +github : https://github.com/omitakahiro/NeuralNetworkPointProcess + + +