Impact of the composition of feature extraction and class sampling in medicare fraud detection

06/03/2022
by   Akrity Kumari, et al.
0

With healthcare being critical aspect, health insurance has become an important scheme in minimizing medical expenses. Following this, the healthcare industry has seen a significant increase in fraudulent activities owing to increased insurance, and fraud has become a significant contributor to rising medical care expenses, although its impact can be mitigated using fraud detection techniques. To detect fraud, machine learning techniques are used. The Centers for Medicaid and Medicare Services (CMS) of the United States federal government released "Medicare Part D" insurance claims is utilized in this study to develop fraud detection system. Employing machine learning algorithms on a class-imbalanced and high dimensional medicare dataset is a challenging task. To compact such challenges, the present work aims to perform feature extraction following data sampling, afterward applying various classification algorithms, to get better performance. Feature extraction is a dimensionality reduction approach that converts attributes into linear or non-linear combinations of the actual attributes, generating a smaller and more diversified set of attributes and thus reducing the dimensions. Data sampling is commonlya used to address the class imbalance either by expanding the frequency of minority class or reducing the frequency of majority class to obtain approximately equal numbers of occurrences for both classes. The proposed approach is evaluated through standard performance metrics. Thus, to detect fraud efficiently, this study applies autoencoder as a feature extraction technique, synthetic minority oversampling technique (SMOTE) as a data sampling technique, and various gradient boosted decision tree-based classifiers as a classification algorithm. The experimental results show the combination of autoencoders followed by SMOTE on the LightGBM classifier achieved best results.

READ FULL TEXT

page 1

page 5

research
03/07/2018

An Exercise Fatigue Detection Model Based on Machine Learning Methods

This study proposes an exercise fatigue detection model based on real-ti...
research
07/14/2012

Dimension Reduction by Mutual Information Feature Extraction

During the past decades, to study high-dimensional data in a large varie...
research
02/09/2018

Relational Autoencoder for Feature Extraction

Feature extraction becomes increasingly important as data grows high dim...
research
11/11/2021

Reducing Data Complexity using Autoencoders with Class-informed Loss Functions

Available data in machine learning applications is becoming increasingly...
research
05/23/2023

An Autoencoder-based Snow Drought Index

In several regions across the globe, snow has a significant impact on hy...
research
01/05/2022

Detection of extragalactic Ultra-Compact Dwarfs and Globular Clusters using Explainable AI techniques

Compact stellar systems such as Ultra-compact dwarfs (UCDs) and Globular...
research
11/14/2022

Machine Learning Performance Analysis to Predict Stroke Based on Imbalanced Medical Dataset

Cerebral stroke, the second most substantial cause of death universally,...

Please sign up or login with your details

Forgot password? Click here to reset