In this paper, I compared 6 semi-supervised point outlier detection algorithms: LOF, robust PCA, autoencoder, SOM, one-class SVM and isolation forest. In all experiments, I training the models on only normal data points. Then, I use the models to detect the outliers in the testing data sets basing on the fact that if a point is not a normal point, the point is an outlier. I do the experiment on both generated data and real data. I found each of the 6 algorithms has both advantages and disadvantages. I have described them in details and give some suggested solutions to the weak points
Anomaly detection is a widely studied field in computer science with applications ranging from intru...
Anomaly detection is a widely studied field in computer science with applications ranging from intru...
This thesis describes novel approaches to the problem of outlier detection. It is one of the most im...
A familiar problem in machine learning is to determine which data points are outliers when the unde...
Outlier Detection is a technique to detect anomalous events or outliers during analysis of the data ...
In this paper we compare and analyze which of the most popular outlier detection methods work best i...
Outlier detection, i.e., the task of detecting points that are markedly different from the data samp...
This thesis reviews various approaches for outlier detection problem. Several popularly used methods...
This thesis reviews various approaches for outlier detection problem. Several popularly used methods...
Regression analysis is one of the most important branches of multivariate statistical techniques. It...
Regression analysis is one of the most important branches of multivariate statistical techniques. It...
This paper introduces two statistical outlier detection approaches by classes. Experiments on binar...
Outlier detection aims to capture or identify uncommon events or instances. This technique has been ...
Outliers are observations that are rare or exceptional in some sense. Outlier Detection is the proce...
Outlier detection is an important task in data mining because outliers can be either useful knowledg...
Anomaly detection is a widely studied field in computer science with applications ranging from intru...
Anomaly detection is a widely studied field in computer science with applications ranging from intru...
This thesis describes novel approaches to the problem of outlier detection. It is one of the most im...
A familiar problem in machine learning is to determine which data points are outliers when the unde...
Outlier Detection is a technique to detect anomalous events or outliers during analysis of the data ...
In this paper we compare and analyze which of the most popular outlier detection methods work best i...
Outlier detection, i.e., the task of detecting points that are markedly different from the data samp...
This thesis reviews various approaches for outlier detection problem. Several popularly used methods...
This thesis reviews various approaches for outlier detection problem. Several popularly used methods...
Regression analysis is one of the most important branches of multivariate statistical techniques. It...
Regression analysis is one of the most important branches of multivariate statistical techniques. It...
This paper introduces two statistical outlier detection approaches by classes. Experiments on binar...
Outlier detection aims to capture or identify uncommon events or instances. This technique has been ...
Outliers are observations that are rare or exceptional in some sense. Outlier Detection is the proce...
Outlier detection is an important task in data mining because outliers can be either useful knowledg...
Anomaly detection is a widely studied field in computer science with applications ranging from intru...
Anomaly detection is a widely studied field in computer science with applications ranging from intru...
This thesis describes novel approaches to the problem of outlier detection. It is one of the most im...