The detection of outliers in time series data is a core component of many data-mining applications and broadly applied in industrial applications. In large data sets algorithms that are efficient in both time and space are required. One area where speed and storage costs can be reduced is via symbolization as a pre-processing step, additionally opening up the use of an array of discrete algorithms. With this common pre-processing step in mind, this work highlights that (1) existing symbolization approaches are designed to address problems other than outlier detection and are hence sub-optimal and (2) use of off-the-shelf symbolization techniques can therefore lead to significant unnecessary data corruption and potential performance loss whe...
We address some potential problems with the existing procedures of outlier detection in time series....
Abstract- Outlier detection is an active area for research in data set mining community. Finding out...
The detection of outliers and change points from time series has become research focus in the area o...
The detection of outliers in time series data is a core component of many data-mining applications a...
The abundance and value of mining large time series data sets has long been acknowledged. Ubiquitous...
Outlier (or anomaly) detection is a very broad field which has been studied in the context of a larg...
Outlier detection has relevance in many modern day contexts, including health care, engineering, dat...
Outlier detection refers to the detection of unexpected situations in the data. Outliers are fraud, ...
Abstract—In the statistics community, outlier detection for time series data has been studied for de...
Outlier detection or anomaly detection is a very important process to detect instances with unexpect...
The forecasting process of real-world time series has to deal with especially unexpected values, com...
The rapid growth in the field of data mining has lead to the development of various methods for outl...
Abstract — A phenomenal interest in big data among research community has emerged. Outlier detection...
Symbolization of time-series has successfully been used to extract temporal patterns from experiment...
The outlier detection in the field of data mining and Knowledge Discovering from Data (KDD) is captu...
We address some potential problems with the existing procedures of outlier detection in time series....
Abstract- Outlier detection is an active area for research in data set mining community. Finding out...
The detection of outliers and change points from time series has become research focus in the area o...
The detection of outliers in time series data is a core component of many data-mining applications a...
The abundance and value of mining large time series data sets has long been acknowledged. Ubiquitous...
Outlier (or anomaly) detection is a very broad field which has been studied in the context of a larg...
Outlier detection has relevance in many modern day contexts, including health care, engineering, dat...
Outlier detection refers to the detection of unexpected situations in the data. Outliers are fraud, ...
Abstract—In the statistics community, outlier detection for time series data has been studied for de...
Outlier detection or anomaly detection is a very important process to detect instances with unexpect...
The forecasting process of real-world time series has to deal with especially unexpected values, com...
The rapid growth in the field of data mining has lead to the development of various methods for outl...
Abstract — A phenomenal interest in big data among research community has emerged. Outlier detection...
Symbolization of time-series has successfully been used to extract temporal patterns from experiment...
The outlier detection in the field of data mining and Knowledge Discovering from Data (KDD) is captu...
We address some potential problems with the existing procedures of outlier detection in time series....
Abstract- Outlier detection is an active area for research in data set mining community. Finding out...
The detection of outliers and change points from time series has become research focus in the area o...