Insurance is a data-rich sector, hosting large volumes of customer data that is analysed to evaluate risk. Machine learning techniques are increasingly used in the effective management of insurance risk. Insurance datasets by their nature, however, are often of poor quality with noisy subsets of data (or features). Choosing the right features of data is a significant pre-processing step in the creation of machine learning models. The inclusion of irrelevant and redundant features has been demonstrated to affect the performance of learning models. In this article, we propose a framework for improving predictive machine learning techniques in the insurance sector via the selection of relevant features. The experimental results, based on five ...
In the last few years, there has been a tremendous rise in the number of deaths due to heart disease...
The literature on analytical applications in insurance tends to be either very general or rather tec...
As the insurance industry is highly data driven it is no surprise that machine learning (ML) has mad...
This thesis investigates the potential applicability of machine learning techniques m predictive mo...
This study demonstrates how Machine Learning techniques and Big Data Analytics can be used in the in...
The Ripper algorithm is designed to generate rule sets for large datasets with many features. Howeve...
This study demonstrates how Machine Learning techniques and Big Data Analytics can be used in the in...
Econometrics and machine learning are quite close and related concepts. Nowadays, it is always more ...
This thesis explores the use of machine learning techniques in an effort to increase insurer competi...
Insurance is a crucial mechanism used to lighten the financial burden as it provides protection agai...
The need to leverage knowledge through data mining has driven enterprises in a demand for more data....
In finance and management, insurance is a product that tends to reduce or eliminate in totality or p...
Nowadays machine learning is becoming more popular in prediction andclassification tasks for many fi...
The modeling of customer features has become a core component in modern financial analytics. There a...
The use of data mining methods in corporate decision making has been increasing in the past decades....
In the last few years, there has been a tremendous rise in the number of deaths due to heart disease...
The literature on analytical applications in insurance tends to be either very general or rather tec...
As the insurance industry is highly data driven it is no surprise that machine learning (ML) has mad...
This thesis investigates the potential applicability of machine learning techniques m predictive mo...
This study demonstrates how Machine Learning techniques and Big Data Analytics can be used in the in...
The Ripper algorithm is designed to generate rule sets for large datasets with many features. Howeve...
This study demonstrates how Machine Learning techniques and Big Data Analytics can be used in the in...
Econometrics and machine learning are quite close and related concepts. Nowadays, it is always more ...
This thesis explores the use of machine learning techniques in an effort to increase insurer competi...
Insurance is a crucial mechanism used to lighten the financial burden as it provides protection agai...
The need to leverage knowledge through data mining has driven enterprises in a demand for more data....
In finance and management, insurance is a product that tends to reduce or eliminate in totality or p...
Nowadays machine learning is becoming more popular in prediction andclassification tasks for many fi...
The modeling of customer features has become a core component in modern financial analytics. There a...
The use of data mining methods in corporate decision making has been increasing in the past decades....
In the last few years, there has been a tremendous rise in the number of deaths due to heart disease...
The literature on analytical applications in insurance tends to be either very general or rather tec...
As the insurance industry is highly data driven it is no surprise that machine learning (ML) has mad...