Insurance is a crucial mechanism used to lighten the financial burden as it provides protection against financial losses resulting from unexpected events. Insurers adopt various approaches, such as machine learning, to attract the uninsured. By using machine learning, a company is able to tap into the wealth of information of its potential customers. The main objective of this study is to apply artificial neural networks (ANNs) to predict the propensity of consumers to purchase an insurance policy by using the dataset from the Computational Intelligence and Learning (CoIL) Challenge 2000. In addition, this study also aims to identify factors that affect the propensity of customers to purchase insurance policies via feature selection. The ...
Consumer behaviour is one of the most important and complex areas of research. It acknowledges the b...
We present a neural network for predicting purchasing intent in an Ecommerce setting. Our main cont...
Artificial neural networks have increasingly being applied to solve problems which traditionally wou...
In the insurance industry nowadays, data is carrying the major asset and playing a key role. There i...
AbstractNowadays, facile access to information and advancements in processing power unfold opportuni...
Abstract: Conventional econometric models, such as discriminant analysis and logistic regression hav...
We propose an Explainable AI model that can be employed in order to explain why a customer buys or a...
Conventional econometric models, such as discriminant analysis and logistic regression have been use...
Insurance is a data-rich sector, hosting large volumes of customer data that is analysed to evaluate...
Abstract: In this paper, we use feed forward neural networks with the back-propagation algorithm to ...
This thesis explores the use of machine learning techniques in an effort to increase insurer competi...
University of Technology, Sydney. Faculty of Information Technology.NO FULL TEXT AVAILABLE. Access i...
In finance and management, insurance is a product that tends to reduce or eliminate in totality or p...
Summarization: Many factors should be considered when bringing out a new product in the market. The ...
This thesis investigates the potential applicability of machine learning techniques m predictive mod...
Consumer behaviour is one of the most important and complex areas of research. It acknowledges the b...
We present a neural network for predicting purchasing intent in an Ecommerce setting. Our main cont...
Artificial neural networks have increasingly being applied to solve problems which traditionally wou...
In the insurance industry nowadays, data is carrying the major asset and playing a key role. There i...
AbstractNowadays, facile access to information and advancements in processing power unfold opportuni...
Abstract: Conventional econometric models, such as discriminant analysis and logistic regression hav...
We propose an Explainable AI model that can be employed in order to explain why a customer buys or a...
Conventional econometric models, such as discriminant analysis and logistic regression have been use...
Insurance is a data-rich sector, hosting large volumes of customer data that is analysed to evaluate...
Abstract: In this paper, we use feed forward neural networks with the back-propagation algorithm to ...
This thesis explores the use of machine learning techniques in an effort to increase insurer competi...
University of Technology, Sydney. Faculty of Information Technology.NO FULL TEXT AVAILABLE. Access i...
In finance and management, insurance is a product that tends to reduce or eliminate in totality or p...
Summarization: Many factors should be considered when bringing out a new product in the market. The ...
This thesis investigates the potential applicability of machine learning techniques m predictive mod...
Consumer behaviour is one of the most important and complex areas of research. It acknowledges the b...
We present a neural network for predicting purchasing intent in an Ecommerce setting. Our main cont...
Artificial neural networks have increasingly being applied to solve problems which traditionally wou...