Several countries worldwide are experiencing a continuous increase in life expectancy, extending the challenges of life actuaries and demographers in forecasting mortality. Although several stochastic mortality models have been proposed in the literature, mortality forecasting research remains a crucial task. Recently, various research works have encouraged the use of deep learning models to extrapolate suitable patterns within mortality data. Such learning models allow achieving accurate point predictions, though uncertainty measures are also necessary to support both model estimate reliability and risk evaluation. As a new advance in mortality forecasting, we formalize the deep neural network integration within the Lee-Carter framework, a...
A recent paper utilized a deep learning methodology when analyzing multivariate time series data to ...
Forecasting of mortality function is important for many field of human work like insurance companies...
Bravo, J. M. (2021). Forecasting mortality rates with Recurrent Neural Networks: A preliminary inves...
In the field of mortality, the Lee–Carter based approach can be considered the milestone to fo...
In the field of mortality, the Lee–Carter based approach can be considered the milestone to forecas...
This article proposes a neural-network approach to predict and simulate human mortality rates. This ...
Background: Life expectancy is one of the most informative indicators of population health and devel...
Estimation of future mortality rates still plays a central role among life insurers in pricing their...
Many actuarial science researchers on stochastic modeling and forecasting of systematic mortality ri...
We propose a new neighbouring prediction model for mortality forecasting. For each mortality rate at...
Life expectancy prediction, a pivotal facet of public health and policy formulation, has witnessed r...
Bravo J.M. (2021) Forecasting Longevity for Financial Applications: A First Experiment with Deep Lea...
After the World War II, developed countries experienced a constant decline in mortality. As a result...
The social and financial systems of many nations throughout the world are significantly impacted by ...
One of the main challenges for life actuaries is modeling and predicting the future mortality evolu...
A recent paper utilized a deep learning methodology when analyzing multivariate time series data to ...
Forecasting of mortality function is important for many field of human work like insurance companies...
Bravo, J. M. (2021). Forecasting mortality rates with Recurrent Neural Networks: A preliminary inves...
In the field of mortality, the Lee–Carter based approach can be considered the milestone to fo...
In the field of mortality, the Lee–Carter based approach can be considered the milestone to forecas...
This article proposes a neural-network approach to predict and simulate human mortality rates. This ...
Background: Life expectancy is one of the most informative indicators of population health and devel...
Estimation of future mortality rates still plays a central role among life insurers in pricing their...
Many actuarial science researchers on stochastic modeling and forecasting of systematic mortality ri...
We propose a new neighbouring prediction model for mortality forecasting. For each mortality rate at...
Life expectancy prediction, a pivotal facet of public health and policy formulation, has witnessed r...
Bravo J.M. (2021) Forecasting Longevity for Financial Applications: A First Experiment with Deep Lea...
After the World War II, developed countries experienced a constant decline in mortality. As a result...
The social and financial systems of many nations throughout the world are significantly impacted by ...
One of the main challenges for life actuaries is modeling and predicting the future mortality evolu...
A recent paper utilized a deep learning methodology when analyzing multivariate time series data to ...
Forecasting of mortality function is important for many field of human work like insurance companies...
Bravo, J. M. (2021). Forecasting mortality rates with Recurrent Neural Networks: A preliminary inves...