This chapter describes Data Mining in finance by discussing financial tasks, specifics of methodologies and techniques in this Data Mining area. It includes time dependence, data selection, forecast horizon, measures of success, quality of patterns, hypothesis evaluation, problem ID, method profile, attribute-based and relational methodologies. The second part of the chapter discusses Data Mining models and practice in finance. It covers use of neural networks in portfolio management, design of interpretable trading rules and discovering money laundering schemes using decision rules and relational Data Mining methodology
ABSTRACT: This paper is a survey on the blooming concept of Data mining and its applications in the ...
Abstract:- Supervised learning plays a significant role in predicting the behavior of new data, base...
The primary objectives in doing this project is to determine the extent that the mining applications...
Data mining as a discipline of computer science has been widely employed in several domains as a res...
The financial markets see a fair amount of usage of predictive technology and automated computer pro...
The knowledge age requires controlling every kind of information. Recognition of patterns in data ma...
Nowadays with the development of technology importance given to knowledge increases gradually. Data ...
This paper deals with the application of a well-known neural network technique, multilayer back-prop...
The concept of banking refers to the multitude of services and products that commercial banks offer ...
The rise of economic globalization and evolution of information technology, financial data are being...
This article focuses on supervised learning and reinforcement learning. These areas overlap most wit...
The aim of this study is to identify the extent of Data mining activities that are practiced by bank...
Machine learning methods penetrate to applications in the analysis of financial data, particularly t...
Success in the financial market reach those companies that having fast access to data can it properl...
Data mining is one of the tasks in the process of knowledge discovery from the database. In the corp...
ABSTRACT: This paper is a survey on the blooming concept of Data mining and its applications in the ...
Abstract:- Supervised learning plays a significant role in predicting the behavior of new data, base...
The primary objectives in doing this project is to determine the extent that the mining applications...
Data mining as a discipline of computer science has been widely employed in several domains as a res...
The financial markets see a fair amount of usage of predictive technology and automated computer pro...
The knowledge age requires controlling every kind of information. Recognition of patterns in data ma...
Nowadays with the development of technology importance given to knowledge increases gradually. Data ...
This paper deals with the application of a well-known neural network technique, multilayer back-prop...
The concept of banking refers to the multitude of services and products that commercial banks offer ...
The rise of economic globalization and evolution of information technology, financial data are being...
This article focuses on supervised learning and reinforcement learning. These areas overlap most wit...
The aim of this study is to identify the extent of Data mining activities that are practiced by bank...
Machine learning methods penetrate to applications in the analysis of financial data, particularly t...
Success in the financial market reach those companies that having fast access to data can it properl...
Data mining is one of the tasks in the process of knowledge discovery from the database. In the corp...
ABSTRACT: This paper is a survey on the blooming concept of Data mining and its applications in the ...
Abstract:- Supervised learning plays a significant role in predicting the behavior of new data, base...
The primary objectives in doing this project is to determine the extent that the mining applications...