Some important cyber security data can be modelled using stochastic processes that undergo changes in behaviour over time. Consider a piece of malicious software (malware) that performs different functions as it runs. Data obtained from this software switch between different behaviours that correspond to different functions. Coders create new strains of similar malware by making minor changes to existing malware; these new samples cannot be detected by methods that only identify whether an exact executable file has been seen before. Comparing data from new malware and existing malware, in order to detect similar behaviours, is a cyber security challenge. Methods that can detect these similar behaviours are used to identify similar malware s...
Modeling the number of individuals in different states is a principal tool in the event of an epidem...
Development of Cybersecurity processes and strategies should take two main approaches. One is to dev...
We introduce a new sequential algorithm for making robust predictions in the presence of changepoint...
We propose a new class of Markov-switching (MS) models for business cycle analysis. As usually done ...
We combine Bayesian online change point detection with Gaussian processes to create a nonparametric ...
When analysing multiple time series that may be subject to changepoints, it is sometimes possible to...
Bayesian Online Learning of the Hazard Rate in Change-Point Problems Change-point models are generat...
van Norden and Schaller (1996) develop a standard regime-switching model to study stock market crash...
In this paper, Bayesian online inference in models of data series are constructed by change-points a...
Changepoint models typically assume the data within each segment are independent and identically dis...
We propose an estimation method that circumvents the path dependence problem existing in Change-Poin...
Cyber threats are now considered as a top risk for many economic sectors which include retail, finan...
The article of record as published may be located at http://dx.doi.org/10.1214/13-AOAS703A novel app...
Changepoints are abrupt variations in the generative parameters of a data sequence. Online detection...
In the analysis of sequential data, the detection of abrupt changes is important in predicting futur...
Modeling the number of individuals in different states is a principal tool in the event of an epidem...
Development of Cybersecurity processes and strategies should take two main approaches. One is to dev...
We introduce a new sequential algorithm for making robust predictions in the presence of changepoint...
We propose a new class of Markov-switching (MS) models for business cycle analysis. As usually done ...
We combine Bayesian online change point detection with Gaussian processes to create a nonparametric ...
When analysing multiple time series that may be subject to changepoints, it is sometimes possible to...
Bayesian Online Learning of the Hazard Rate in Change-Point Problems Change-point models are generat...
van Norden and Schaller (1996) develop a standard regime-switching model to study stock market crash...
In this paper, Bayesian online inference in models of data series are constructed by change-points a...
Changepoint models typically assume the data within each segment are independent and identically dis...
We propose an estimation method that circumvents the path dependence problem existing in Change-Poin...
Cyber threats are now considered as a top risk for many economic sectors which include retail, finan...
The article of record as published may be located at http://dx.doi.org/10.1214/13-AOAS703A novel app...
Changepoints are abrupt variations in the generative parameters of a data sequence. Online detection...
In the analysis of sequential data, the detection of abrupt changes is important in predicting futur...
Modeling the number of individuals in different states is a principal tool in the event of an epidem...
Development of Cybersecurity processes and strategies should take two main approaches. One is to dev...
We introduce a new sequential algorithm for making robust predictions in the presence of changepoint...