[КНИГА][B] An introduction to outlier analysis
CC Aggarwal, CC Aggarwal - 2017 - Springer
Outliers are also referred to as abnormalities, discordants, deviants, or anomalies in the data
mining and statistics literature. In most applications, the data is created by one or more …
mining and statistics literature. In most applications, the data is created by one or more …
Anomaly detection in dynamic networks: a survey
Anomaly detection is an important problem with multiple applications, and thus has been
studied for decades in various research domains. In the past decade there has been a …
studied for decades in various research domains. In the past decade there has been a …
Netwalk: A flexible deep embedding approach for anomaly detection in dynamic networks
Massive and dynamic networks arise in many practical applications such as social media,
security and public health. Given an evolutionary network, it is crucial to detect structural …
security and public health. Given an evolutionary network, it is crucial to detect structural …
Outlier detection for temporal data: A survey
In the statistics community, outlier detection for time series data has been studied for
decades. Recently, with advances in hardware and software technology, there has been a …
decades. Recently, with advances in hardware and software technology, there has been a …
Evolutionary network analysis: A survey
Evolutionary network analysis has found an increasing interest in the literature because of
the importance of different kinds of dynamic social networks, email networks, biological …
the importance of different kinds of dynamic social networks, email networks, biological …
Anomaly detection in online social networks
Anomalies in online social networks can signify irregular, and often illegal behaviour.
Detection of such anomalies has been used to identify malicious individuals, including …
Detection of such anomalies has been used to identify malicious individuals, including …
A novel multivariate time-series anomaly detection approach using an unsupervised deep neural network
With the development of hardware technology, we can collect increasingly reliable time
series data, in which time series anomaly detection is an important task to find problems in …
series data, in which time series anomaly detection is an important task to find problems in …
Mining social networks for anomalies: Methods and challenges
Online social networks have received a dramatic increase of interest in the last decade due
to the growth of Internet and Web 2.0. They are among the most popular sites on the Internet …
to the growth of Internet and Web 2.0. They are among the most popular sites on the Internet …
Unsupervised outlier detection for time series by entropy and dynamic time war**
SE Benkabou, K Benabdeslem, B Canitia - Knowledge and Information …, 2018 - Springer
In the last decade, outlier detection for temporal data has received much attention from data
mining and machine learning communities. While other works have addressed this problem …
mining and machine learning communities. While other works have addressed this problem …
Robust unsupervised anomaly detection with variational autoencoder in multivariate time series data
Accurate detection of anomalies in multivariate time series data has attracted much attention
due to its importance in a wide range of applications. Since it is difficult to obtain accurately …
due to its importance in a wide range of applications. Since it is difficult to obtain accurately …