ASE: Anomaly Scoring Based Ensemble Learning for Imbalanced Datasets

03/21/2022
by   Xiayu Liang, et al.
0

Nowadays, many industries have applied classification algorithms to help them solve problems in their business, like finance, medicine, manufacturing industry and so on. However, in real-life scenarios, positive examples only make up a small part of all instances and our datasets suffer from high imbalance ratio which leads to poor performance of existing classification models. To solve this problem, we come up with a bagging ensemble learning framework based on an anomaly detection scoring system. We test out that our ensemble learning model can dramatically improve performance of base estimators (e.g. Decision Tree, Multilayer perceptron, KNN) and is more efficient than other existing methods under a wide range of imbalance ratio, data scale and data dimension.

READ FULL TEXT
research
10/10/2021

Time Series Classification Using Convolutional Neural Network On Imbalanced Datasets

Time Series Classification (TSC) has drawn a lot of attention in literat...
research
07/24/2023

Damage Vision Mining Opportunity for Imbalanced Anomaly Detection

In past decade, previous balanced datasets have been used to advance alg...
research
09/26/2019

RADE: Resource-Efficient Supervised Anomaly Detection Using Decision Tree-Based Ensemble Methods

Decision-tree-based ensemble classification methods (DTEMs) are a preval...
research
08/06/2023

Detection of Anomalies in Multivariate Time Series Using Ensemble Techniques

Anomaly Detection in multivariate time series is a major problem in many...
research
09/08/2019

Training Effective Ensemble on Imbalanced Data by Self-paced Harmonizing Classification Hardness

Many real-world applications reveal difficulties in learning classifiers...
research
11/02/2021

Envelope Imbalance Learning Algorithm based on Multilayer Fuzzy C-means Clustering and Minimum Interlayer discrepancy

Imbalanced learning is important and challenging since the problem of th...
research
06/15/2022

ARES: Locally Adaptive Reconstruction-based Anomaly Scoring

How can we detect anomalies: that is, samples that significantly differ ...

Please sign up or login with your details

Forgot password? Click here to reset