A Generative Neighborhood-Based Deep Autoencoder for Robust Imbalanced Classification.
Eirini TroullinouGrigorios TsagkatakisAttila LosonczyPanayiota PoiraziPanagiotis TsakalidesPublished in: IEEE transactions on artificial intelligence (2023)
Imbalanced data classification is an actual and important issue in many real-world learning applications hampering most classification tasks. Fraud detection, biomedical imaging categorizing healthy people versus patients, and object detection are some indicative domains with an economic, social and technological impact, which are greatly affected by inherent imbalanced data distribution. However, the majority of the existing algorithms that address the imbalanced classification problem are designed with a particular application in mind, and thus they can be used with specific datasets and even hyperparameters. The generative model introduced in this paper overcomes this limitation and produces improved results for a large class of imaging and time series data even under severe imbalance ratios, making it quite competitive.
Keyphrases
- machine learning
- deep learning
- big data
- electronic health record
- end stage renal disease
- high resolution
- artificial intelligence
- working memory
- ejection fraction
- chronic kidney disease
- loop mediated isothermal amplification
- healthcare
- newly diagnosed
- peritoneal dialysis
- mental health
- physical activity
- label free
- prognostic factors
- real time pcr
- early onset
- rna seq
- patient reported outcomes
- single cell
- photodynamic therapy
- patient reported