Impact of Input Sequence Types on Healthcare Intrusion Prediction Models
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Date
2025
Journal Title
Journal ISSN
Volume Title
Publisher
IEEE-Inst Electrical Electronics Engineers Inc
Open Access Color
GOLD
Green Open Access
No
OpenAIRE Downloads
OpenAIRE Views
Publicly Funded
No
Abstract
Prediction models are vital for sensing zero-day and even n-day cyberattacks, particularly in healthcare infrastructure. Most existing research focuses on developing classifiers also known as IDS to enhance detection and accuracy. However, predictive intrusion models for healthcare remain underexplored, with limited studies investigating the comparative performance of univariate and multivariate inputs against single-step and multi-step outputs in time series models. This study aims to address these gaps by evaluating the accuracy and error performance of selected predictive models across various input and output configurations. The methodology involves transforming input data sequences into univariate l* n and multivariate m * n formats, establishing single-step and multi-step splitting functions, and evaluating these configurations using the benchmark CIRA-CIC-DoHBrw-2020 dataset. Algorithms including Bidirectional LSTM, Stacked LSTM, Vanilla LSTM, Transformer Encoder-Decoder, Vector Output LSTM (GRU core), and CNN were applied, with results visualized to assess performance. The findings reveal that the Multivariate LSTM model, when trained on a sequence of multivariate inputs, demonstrates superior predictive performance, achieving low MAE error rates of 0.4% for single-step predictions and 0.1% for multi-step predictions. Additionally, GRU and Transformer models exhibit heightened sensitivity to specific input sequence configurations. In conclusion, our study demonstrates that Transformer Encoder-Decoder based prediction models exhibit exceptional prediction performance. This effectiveness is attributed to their ability to capture contextual and critical information from input sequences. These findings provide valuable insights for designing advanced intrusion prediction models, paving the way for improved prediction capabilities in future systems.
Description
Keywords
Predictive Models, Medical Services, Long Short Term Memory, Systematic Literature Review, Time Series Analysis, Transformers, Analytical Models, Forecasting, Prediction Algorithms, Accuracy, Intrusion Prediction Model, Intrusion Detection System (IDS), Multivariate, Univariate, Data Visualization, Machine Learning In Cybersecurity, Intrusion Prediction In Healthcare
Fields of Science
Citation
WoS Q
Q2
Scopus Q
Q1

OpenCitations Citation Count
N/A
Source
IEEE Access
Volume
13
Issue
Start Page
125897
End Page
125932
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Scopus : 0
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Mendeley Readers : 9
Page Views
1
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