Grouping users automatically based on their system usage can be beneficial in an autonomic computing environment. Clustering algorithms can generate meaningful user groups that provide important insights to system administrators about user profiles and group policies. In particular, if a small amount of supervision is provided by the administrator to the clustering process, semi-supervised clustering algorithms can use this supervision to generate clusters which are more useful for user management. In this work, we demonstrate the utility of semisupervised clustering in intelligent user management. We collect publicly available system usage data of users in a university computing environment, and cluster the users using semi-supervised hier...
We study the problem of learning personalized user models from rich user interactions. In particula...
This paper discusses a new type of semi-supervised docu-ment clustering that uses partial supervisio...
Abstract. The exploration of domain knowledge to improve the mining process begins to give its first...
Proceeding of: International Symposium on Evolving Intelligent Systems (EIS'10) in the 36th Annual C...
We present a new approach to clustering based on the observation that \it is easier to criticize t...
We present a new approach to clustering based on the observation that ``it is easier to criticize t...
A key research theme in the field of end-user computing (EUC) is learning more about end users and t...
ia that provide significant distinctions between clustering methods and can help selecting appropria...
This research aimed to group users into subgroups according to their levels of knowledge about techn...
One of the key tools to gain knowledge from data is clustering: identifying groups of instances that...
Clustering methods are developed for categorizing data points into different groups so that data poi...
An accurate analysis of user behaviour in online learning environments is a useful means of early fo...
This master thesis looks at how clustering techniques can be appliedto a collection of scientific do...
In many machine learning domains (e.g. text processing, bioinformatics), there is a large supply of ...
Intelligent systems are required in order to quickly and accurately analyze enormous quantities of d...
We study the problem of learning personalized user models from rich user interactions. In particula...
This paper discusses a new type of semi-supervised docu-ment clustering that uses partial supervisio...
Abstract. The exploration of domain knowledge to improve the mining process begins to give its first...
Proceeding of: International Symposium on Evolving Intelligent Systems (EIS'10) in the 36th Annual C...
We present a new approach to clustering based on the observation that \it is easier to criticize t...
We present a new approach to clustering based on the observation that ``it is easier to criticize t...
A key research theme in the field of end-user computing (EUC) is learning more about end users and t...
ia that provide significant distinctions between clustering methods and can help selecting appropria...
This research aimed to group users into subgroups according to their levels of knowledge about techn...
One of the key tools to gain knowledge from data is clustering: identifying groups of instances that...
Clustering methods are developed for categorizing data points into different groups so that data poi...
An accurate analysis of user behaviour in online learning environments is a useful means of early fo...
This master thesis looks at how clustering techniques can be appliedto a collection of scientific do...
In many machine learning domains (e.g. text processing, bioinformatics), there is a large supply of ...
Intelligent systems are required in order to quickly and accurately analyze enormous quantities of d...
We study the problem of learning personalized user models from rich user interactions. In particula...
This paper discusses a new type of semi-supervised docu-ment clustering that uses partial supervisio...
Abstract. The exploration of domain knowledge to improve the mining process begins to give its first...