3 research outputs found
The Relationship between Knowledge Management and Empowerment of Administrative on Organizational Trust
The aim of this paper is to propose a conceptual model describing an integrated model for knowledge management and Empowerment of administrative on organizational trust. To achieve the objectives of the study, a questionnaire was developed to collect the data. It was distributed to a sample of employee banks. The results of this study clearly show that three of the selected factors (knowledge capture, knowledge sharing and knowledge creation) have positive relationship that increases the organization trust. The sample of the study 119 employee divided into four Jordanian banks. Keywords: Knowledge management, Organizational trust, Empowerment of administrative
Detecting Phishing Websites Using Associative Classification
Phishing is a criminal technique employing both social engineering and technical subterfuge to steal consumer's personal identity data and financial account credential. The aim of the phishing website is to steal the victims’ personal information by visiting and surfing a fake webpage that looks like a true one of a legitimate bank or company and asks the victim to enter personal information such as their username, account number, password, credit card number, …,etc. This paper main goal is to investigate the potential use of automated data mining techniques in detecting the complex problem of phishing Websites in order to help all users from being deceived or hacked by stealing their personal information and passwords leading to catastrophic consequences. Experimentations against phishing data sets and using different common associative classification algorithms (MCAR and CBA) and traditional learning approaches have been conducted with reference to classification accuracy. The results show that the MCAR and CBA algorithms outperformed SVM and algorithms. Keywords: Phishing Websites, Data Mining, Associative Classification, Machine Learning
Detecting Phishing Websites Using Associative Classification
Phishing is a criminal technique employing both social engineering and technical subterfuge to steal consumer's personal identity data and financial account credential. The aim of the phishing website is to steal the victims’ personal information by visiting and surfing a fake webpage that looks like a true one of a legitimate bank or company and asks the victim to enter personal information such as their username, account number, password, credit card number, …,etc. This paper main goal is to investigate the potential use of automated data mining techniques in detecting the complex problem of phishing Websites in order to help all users from being deceived or hacked by stealing their personal information and passwords leading to catastrophic consequences. Experimentations against phishing data sets and using different common associative classification algorithms (MCAR and CBA) and traditional learning approaches have been conducted with reference to classification accuracy. The results show that the MCAR and CBA algorithms outperformed SVM and algorithms. Keywords: Phishing Websites, Data Mining, Associative Classification, Machine Learnin