2020
DOI: 10.1109/access.2020.3013962
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Sequence Mining and Prediction-Based Healthcare Fraud Detection Methodology

Abstract: This paper presents a novel methodology to detect insurance claim related frauds in the healthcare system using concepts of sequence mining and sequence prediction. Fraud detection in healthcare is a non-trivial task due to the heterogeneous nature of healthcare records. Fraudsters behave as normal patients and with the passage of time keep on changing their way of planting frauds; hence, there is a need to develop fraud detection models. The sequence generation is not the part of previous researches which mos… Show more

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Cited by 19 publications
(5 citation statements)
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References 40 publications
(32 reference statements)
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“…The network of the generator can generate the data as simulated, and the difference between the simulated data and the target data determines the discriminator, yielding a determination that is true and false around the virtual data. Finally, the model may generate higher-quality simulation data to finish the data creation process [22], [23]. A VAE is a variational autoencoder with regularised training circulation to guarantee that its hidden space has adequate assets, allowing us to create fresh data.…”
Section: B Deep Learning Approachesmentioning
confidence: 99%
“…The network of the generator can generate the data as simulated, and the difference between the simulated data and the target data determines the discriminator, yielding a determination that is true and false around the virtual data. Finally, the model may generate higher-quality simulation data to finish the data creation process [22], [23]. A VAE is a variational autoencoder with regularised training circulation to guarantee that its hidden space has adequate assets, allowing us to create fresh data.…”
Section: B Deep Learning Approachesmentioning
confidence: 99%
“…Wei and Dan (2019) apply Attention Mechanism to parameter optimisation of SVM features, while Zhang and Kong (2020) also optimised parameters for input in NB model to inform insurance product recommendations. In terms of sequence generation, this XAI method was used by Matloob et al (2020) to inform their predictive model for fraudulent behaviour in health insurance.…”
Section: Attention Mechanismmentioning
confidence: 99%
“…Over the last decade, different algorithms have been proposed in the field of SPM, each of which has different properties [28,29]. In this study, we chose the PrefixSpan [8], SPADE [9], BIDE+ [10], and LAPIN [11] algorithms based on important key features supported by these methods (Table 3).…”
Section: Algorithmsmentioning
confidence: 99%