Insurance is a policy that eliminates or decreases loss costs occurred by various risks. Various factors influence the cost of insurance. These considerations contribute to the insurance policy formulation. Machine learning (ML) for the insurance industry sector can make the wording of insurance policies more efficient. This study demonstrates how different models of regression can forecast insurance costs. And we will compare the results of models, for example, Multiple Linear Regression, Generalized Additive Model, Support Vector Machine, Random Forest Regressor, CART, XGBoost, k-Nearest Neighbors, Stochastic Gradient Boosting, and Deep Neural Network. This paper offers the best approach to the Stochastic Gradient Boosting model with an M...
With Michel Denuit and Julien Trufin, we recently uploaded a joint paper on ArXiv, entitled Autocali...
In insurance rate-making, the use of statistical machine learning techniques such as artificial neur...
This work presents a set of neural network applications to health insurance pricing. In recent years...
Abstract— It is a significant difficulty for the insurance industry to charge each customer a premiu...
In this study, we examine individual insurance amounts using health data. The performance of these a...
This thesis explores the use of machine learning techniques in an effort to increase insurer competi...
The health care systems depend heavily on out-of-pocket payments, the mechanism that is a barrier to...
Health insurance companies cover half of the United States population through commercial employer-sp...
Accurate prediction of healthcare costs is important for optimally managing health costs. However, m...
Abstract Insurance companies using risk modelling mainly focus on the mastery of Genelized linear m...
As the insurance industry is highly data driven it is no surprise that machine learning (ML) has mad...
International audienceAs the level of competition increases, pricing optimization is gaining a centr...
The literature on analytical applications in insurance tends to be either very general or rather tec...
University of Technology, Sydney. Faculty of Information Technology.NO FULL TEXT AVAILABLE. Access i...
We recently conducted a research project for a large North American automobile in-surer. This study ...
With Michel Denuit and Julien Trufin, we recently uploaded a joint paper on ArXiv, entitled Autocali...
In insurance rate-making, the use of statistical machine learning techniques such as artificial neur...
This work presents a set of neural network applications to health insurance pricing. In recent years...
Abstract— It is a significant difficulty for the insurance industry to charge each customer a premiu...
In this study, we examine individual insurance amounts using health data. The performance of these a...
This thesis explores the use of machine learning techniques in an effort to increase insurer competi...
The health care systems depend heavily on out-of-pocket payments, the mechanism that is a barrier to...
Health insurance companies cover half of the United States population through commercial employer-sp...
Accurate prediction of healthcare costs is important for optimally managing health costs. However, m...
Abstract Insurance companies using risk modelling mainly focus on the mastery of Genelized linear m...
As the insurance industry is highly data driven it is no surprise that machine learning (ML) has mad...
International audienceAs the level of competition increases, pricing optimization is gaining a centr...
The literature on analytical applications in insurance tends to be either very general or rather tec...
University of Technology, Sydney. Faculty of Information Technology.NO FULL TEXT AVAILABLE. Access i...
We recently conducted a research project for a large North American automobile in-surer. This study ...
With Michel Denuit and Julien Trufin, we recently uploaded a joint paper on ArXiv, entitled Autocali...
In insurance rate-making, the use of statistical machine learning techniques such as artificial neur...
This work presents a set of neural network applications to health insurance pricing. In recent years...