National Repository of Grey Literature 6 records found  Search took 0.00 seconds. 
Data Mining with Python
Krestianková, Tamara ; Burgetová, Ivana (referee) ; Zendulka, Jaroslav (advisor)
This thesis deals with principles of data mining process, available Python packages for data mining and a demonstration of Python script capable of data analyisis focused on classification techniques. Created classifiers are able to classify subjects into two groups - healthy people and people suffering from Parkinson's disease - based on their biomedical vocal analysis data.
User Behavior Anomaly Detection
Petrovič, Lukáš ; Veselý, Vladimír (referee) ; Pluskal, Jan (advisor)
The aim of this work is to create an application that allows modeling of user behavior and subsequent search for anomalies in this behavior. An application entry is a list of actions the user has executed on his workstation. From this information and from information about the events that occurred on this device the behavioral model for a specific time is created. Subsequently, this model is compared to models in different time periods or with other users' models. From this comparison, we can get additional information about user behavior and also detect anomalous behavior. The information about the anomalies is useful to build security software that prevents valuable data from being stolen (from the corporate enviroment).
Design of a Predictive User Loyalty Model Based on Machine Learning
Kuchtová, Dominika ; Bartík,, Vladimír (referee) ; Doubravský, Karel (advisor)
The bachelor thesis focuses on creating an optimal model for evaluating specific phenomena related to modeling customer behavior with the aim of support decision-making. It describes the process of data handling and the significance of the importance of converting data into knowledge. The first part of the bachelor thesis includes a description of the tools, processes, ideas, and methods used in the practical part at a theoretical level for an easier understanding of how to solve the assignment in the practical part of the thesis. The second part of the bachelor thesis includes the practical application of specific procedures and the creation of the actual predictive model based on the XGBoost ensemble method and its optimization.
User Behavior Anomaly Detection
Petrovič, Lukáš ; Veselý, Vladimír (referee) ; Pluskal, Jan (advisor)
The aim of this work is to create an application that allows modeling of user behavior and subsequent search for anomalies in this behavior. An application entry is a list of actions the user has executed on his workstation. From this information and from information about the events that occurred on this device the behavioral model for a specific time is created. Subsequently, this model is compared to models in different time periods or with other users' models. From this comparison, we can get additional information about user behavior and also detect anomalous behavior. The information about the anomalies is useful to build security software that prevents valuable data from being stolen (from the corporate enviroment).
Data Mining with Python
Krestianková, Tamara ; Burgetová, Ivana (referee) ; Zendulka, Jaroslav (advisor)
This thesis deals with principles of data mining process, available Python packages for data mining and a demonstration of Python script capable of data analyisis focused on classification techniques. Created classifiers are able to classify subjects into two groups - healthy people and people suffering from Parkinson's disease - based on their biomedical vocal analysis data.
Text mining in social network analysis
Hušek, Michal ; Mrázová, Iveta (advisor) ; Pešková, Klára (referee)
Title: Text mining in social network analysis Author: Bc. Michal Hušek Department: Department of Theoretical Computer Science and Mathematical Logic Supervisor: doc. RNDr. Iveta Mrázová, CSc., Department of Theoretical Computer Science and Mathematical Logic Abstract: Nowadays, social networks represent one of the most important sources of valuable information. This work focuses on mining the data provided by social networks. Multiple data mining techniques are discussed and analysed in this work, namely, clustering, neural networks, ranking algorithms and histogram statistics. Most of the mentioned algorithms have been implemented and tested on real-world social network data and the obtained results have been mutually compared against each other whenever it made sense. For computationally demanding tasks, graphic processing units have been used in order to speed up calculations for vast amounts of data, e.g., during clustering. The performed tests have confirmed lower time requirements. All the performed analyses are, however, independent of the actually involved type of social network. Keywords: data mining, social networks, clustering, neural networks, ranking algorithms, CUDA

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