The purpose of this study is to develop a model that accurately describes the dynamics of the daily average temperature in the context of weather derivatives pricing. More precisely we compare two state of the art machine learning algorithms, namely wavelet networks and genetic programming, against the classic linear approaches widely used in the pricing of temperature derivatives in the financial weather market and against various machine learning benchmark models such as neural networks, radial basis functions and support vector regression. The accuracy of the valuation process depends on the accuracy of the temperature forecasts. Our proposed models are evaluated and compared in-sample and out-of-sample in various locations where weather...
The main objective of this paper is to present a technique for pricing weather derivatives with payo...
Regression problems provide some of the most challenging research opportunities in the area of machi...
In usual pricing approaches for weather derivatives, forward-looking information such as meteorologi...
The purpose of this study is to develop a model that describes the dynamics of the daily average tem...
AbstractThe purpose of this study is to develop a model that describes the dynamics of the daily ave...
Abstract The aim of this paper is to design a temperature foresting model which is able to model th...
The last ten years has seen the introduction and rapid growth of a market in weather derivatives, fi...
Rainfall derivatives are in their infancy since starting trading on the Chicago Mercantile Exchange ...
Rainfall derivatives is a part of an umbrella concept of weather derivatives, whereby the underlying...
In this paper, in the context of an Ornstein-Uhlenbeck temperature process, we use neural networks t...
Weather derivatives are financial instruments that can be used by organizations or individuals as pa...
We present four models for predicting temperatures that can be used for pricing weather derivatives....
We take a simple time-series approach to modeling and forecasting daily average temperature in U.S. ...
Regression problems provide some of the most challenging research opportunities in the area of machi...
Rainfall derivatives are in their infancy since starting trading on the Chicago Mercantile Exchange ...
The main objective of this paper is to present a technique for pricing weather derivatives with payo...
Regression problems provide some of the most challenging research opportunities in the area of machi...
In usual pricing approaches for weather derivatives, forward-looking information such as meteorologi...
The purpose of this study is to develop a model that describes the dynamics of the daily average tem...
AbstractThe purpose of this study is to develop a model that describes the dynamics of the daily ave...
Abstract The aim of this paper is to design a temperature foresting model which is able to model th...
The last ten years has seen the introduction and rapid growth of a market in weather derivatives, fi...
Rainfall derivatives are in their infancy since starting trading on the Chicago Mercantile Exchange ...
Rainfall derivatives is a part of an umbrella concept of weather derivatives, whereby the underlying...
In this paper, in the context of an Ornstein-Uhlenbeck temperature process, we use neural networks t...
Weather derivatives are financial instruments that can be used by organizations or individuals as pa...
We present four models for predicting temperatures that can be used for pricing weather derivatives....
We take a simple time-series approach to modeling and forecasting daily average temperature in U.S. ...
Regression problems provide some of the most challenging research opportunities in the area of machi...
Rainfall derivatives are in their infancy since starting trading on the Chicago Mercantile Exchange ...
The main objective of this paper is to present a technique for pricing weather derivatives with payo...
Regression problems provide some of the most challenging research opportunities in the area of machi...
In usual pricing approaches for weather derivatives, forward-looking information such as meteorologi...