. We present the systematic method of Multitask Learning for incorporating prior knowledge (hints) into the inductive learning system of neural networks. Multitask Learning is an inductive transfer method which uses domain information about related tasks as inductive bias to guide the learning process towards better solutions of the main problem. These tasks are presented to the learning system in a shared representation. This paper argues that there exist many opportunities for Multitask Learning especially in the world of financial modeling: It has been shown, that many interdependencies exist between international financial markets, different market sectors and financial products. Models with an isolated view on a single market or a sing...
Financial Markets have been attractive due to the thrill they provide through the profits or losses ...
Despite the extent of a theoretical framework in financial market studies, a vast majorityof the tra...
The stock market is notoriously difficult to predict, but there are two schools of thought that make...
We present the systematic method of Multitask Learning for incorporating prior knowledge (hints) in...
Multitask Learning is an approach to inductive transfer that improves learning for one task by using...
This article explores the application of advanced data analysis techniques in the financial sector u...
University of Technology, Sydney. Faculty of Information Technology.An ideal inductive machine learn...
The basic paradigm for learning in neural networks is 'learning from examples' where a training set ...
This thesis addresses practical, real-world problems in the financial services industry using Deep L...
This paper suggests that it may be easier to learn several hard tasks at one time than to learn thes...
A major issue in financial market trading is knowing when to undertake a transaction for the purpose...
Companies in the S&P 500 produce quarterly financial statements that are closely studied by investor...
© 2018 IEEE. Over recent decades, globalization has resulted in a steady increase in cross-border fi...
M.Comm.The availability of large amounts of information and increases in computing power have facili...
In recent years, neural networks have become increasingly popular in making stock market predictions...
Financial Markets have been attractive due to the thrill they provide through the profits or losses ...
Despite the extent of a theoretical framework in financial market studies, a vast majorityof the tra...
The stock market is notoriously difficult to predict, but there are two schools of thought that make...
We present the systematic method of Multitask Learning for incorporating prior knowledge (hints) in...
Multitask Learning is an approach to inductive transfer that improves learning for one task by using...
This article explores the application of advanced data analysis techniques in the financial sector u...
University of Technology, Sydney. Faculty of Information Technology.An ideal inductive machine learn...
The basic paradigm for learning in neural networks is 'learning from examples' where a training set ...
This thesis addresses practical, real-world problems in the financial services industry using Deep L...
This paper suggests that it may be easier to learn several hard tasks at one time than to learn thes...
A major issue in financial market trading is knowing when to undertake a transaction for the purpose...
Companies in the S&P 500 produce quarterly financial statements that are closely studied by investor...
© 2018 IEEE. Over recent decades, globalization has resulted in a steady increase in cross-border fi...
M.Comm.The availability of large amounts of information and increases in computing power have facili...
In recent years, neural networks have become increasingly popular in making stock market predictions...
Financial Markets have been attractive due to the thrill they provide through the profits or losses ...
Despite the extent of a theoretical framework in financial market studies, a vast majorityof the tra...
The stock market is notoriously difficult to predict, but there are two schools of thought that make...