TY - GEN
T1 - Temporal anomaly detection
T2 - 33rd AAAI Conference on Artificial Intelligence, AAAI 2019, 31st Annual Conference on Innovative Applications of Artificial Intelligence, IAAI 2019 and the 9th AAAI Symposium on Educational Advances in Artificial Intelligence, EAAI 2019
AU - Gutflaish, Eyal
AU - Kontorovich, Aryeh
AU - Sabato, Sivan
AU - Biller, Ofer
AU - Sofer, Oded
N1 - Publisher Copyright:
© 2019, Association for the Advancement of Artificial Intelligence (www.aaai.org).
PY - 2019/1/1
Y1 - 2019/1/1
N2 - We propose a hybrid approach to temporal anomaly detection in access data of users to databases - or more generally, any kind of subject-object co-occurrence data. We consider a high-dimensional setting that also requires fast computation at test time. Our methodology identifies anomalies based on a single stationary model, instead of requiring a full temporal one, which would be prohibitive in this setting. We learn a low-rank stationary model from the training data, and then fit a regression model for predicting the expected likelihood score of normal access patterns in the future. The disparity between the predicted likelihood score and the observed one is used to assess the “surprise” at test time. This approach enables calibration of the anomaly score, so that time-varying normal behavior patterns are not considered anomalous. We provide a detailed description of the algorithm, including a convergence analysis, and report encouraging empirical results. One of the data sets that we tested is new for the public domain. It consists of two months' worth of database access records from a live system. This data set and our code are publicly available at https://github.com/eyalgut/TLR anomaly detection.git.
AB - We propose a hybrid approach to temporal anomaly detection in access data of users to databases - or more generally, any kind of subject-object co-occurrence data. We consider a high-dimensional setting that also requires fast computation at test time. Our methodology identifies anomalies based on a single stationary model, instead of requiring a full temporal one, which would be prohibitive in this setting. We learn a low-rank stationary model from the training data, and then fit a regression model for predicting the expected likelihood score of normal access patterns in the future. The disparity between the predicted likelihood score and the observed one is used to assess the “surprise” at test time. This approach enables calibration of the anomaly score, so that time-varying normal behavior patterns are not considered anomalous. We provide a detailed description of the algorithm, including a convergence analysis, and report encouraging empirical results. One of the data sets that we tested is new for the public domain. It consists of two months' worth of database access records from a live system. This data set and our code are publicly available at https://github.com/eyalgut/TLR anomaly detection.git.
UR - http://www.scopus.com/inward/record.url?scp=85075453247&partnerID=8YFLogxK
M3 - Conference contribution
AN - SCOPUS:85075453247
T3 - 33rd AAAI Conference on Artificial Intelligence, AAAI 2019, 31st Innovative Applications of Artificial Intelligence Conference, IAAI 2019 and the 9th AAAI Symposium on Educational Advances in Artificial Intelligence, EAAI 2019
SP - 3755
EP - 3762
BT - 33rd AAAI Conference on Artificial Intelligence, AAAI 2019, 31st Innovative Applications of Artificial Intelligence Conference, IAAI 2019 and the 9th AAAI Symposium on Educational Advances in Artificial Intelligence, EAAI 2019
PB - AAAI press
Y2 - 27 January 2019 through 1 February 2019
ER -