Entity-Specific Cyber Risk Assessment using InsurTech Empowered Risk Factors
Jiayi Guo, Zhiyu Quan, and Linfeng Zhang

TL;DR
This paper introduces an InsurTech framework that enriches cyber incident data with entity-specific features, improving predictive modeling for cyber risk assessment and enabling tailored risk profiles for better decision-making.
Contribution
It proposes a novel InsurTech approach that incorporates entity-specific attributes into cyber risk models, enhancing prediction accuracy and interpretability over traditional methods.
Findings
InsurTech features improve prediction robustness.
No significant correlations found among incident types.
Framework enables personalized cyber risk profiles.
Abstract
The lack of high-quality public cyber incident data limits empirical research and predictive modeling for cyber risk assessment. This challenge persists due to the reluctance of companies to disclose incidents that could damage their reputation or investor confidence. Therefore, from an actuarial perspective, potential resolutions conclude two aspects: the enhancement of existing cyber incident datasets and the implementation of advanced modeling techniques to optimize the use of the available data. A review of existing data-driven methods highlights a significant lack of entity-specific organizational features in publicly available datasets. To address this gap, we propose a novel InsurTech framework that enriches cyber incident data with entity-specific attributes. We develop various machine learning (ML) models: a multilabel classification model to predict the occurrence of cyber…
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