The widespread use of mobile appliances, with limitations in terms of storage, power, and connectivity capability, requires to minimize the amount of data to be loaded on user’s devices, in order to quickly select only the information that is really relevant for the users in their current contexts: in such a scenario, specific methodologies and techniques focused on data reduction must be applied. We propose an extension to the data tailoring approach of Context-ADDICT, whose aim is to dynamically hook and integrate heterogeneous data to be stored on small, possibly mobile devices. The main goal of our extension is to personalize the context-dependent data obtained by means of the Context-ADDICT methodology, by allowing the user to express ...
Independent, heterogeneous, distributed, sometimes transient and mobile data sources produce an enor...
Independent, heterogeneous, distributed, sometimes transient and mobile data sources produce an enor...
Independent, heterogeneous, distributed, sometimes transient and mobile data sources produce an enor...
The widespread use of mobile appliances, with limitations in terms of storage, power, and connectivi...
The widespread use of mobile appliances, with limitations in terms of storage, power, and connectivi...
The widespread use of mobile appliances, with limitations in terms of storage, power, and connectivi...
The widespread use of mobile appliances, with limitations in terms of storage, power, and connectivi...
Independent, heterogeneous, distributed, sometimes transient and mobile data sources produce an enor...
This demo presents a framework for personalizing data access on the basis of the users' context and ...
This demo presents a framework for personalizing data access on the basis of the users' context and ...
This demo presents a framework for personalizing data access on the basis of the users' context and ...
This demo presents a framework for personalizing data access on the basis of the users' context and ...
This demo presents a framework for personalizing data access on the basis of the users' context and ...
This demo presents a framework for personalizing data access on the basis of the users' context and ...
Abstract. This paper focuses on information representation and tailoring problems and on the definit...
Independent, heterogeneous, distributed, sometimes transient and mobile data sources produce an enor...
Independent, heterogeneous, distributed, sometimes transient and mobile data sources produce an enor...
Independent, heterogeneous, distributed, sometimes transient and mobile data sources produce an enor...
The widespread use of mobile appliances, with limitations in terms of storage, power, and connectivi...
The widespread use of mobile appliances, with limitations in terms of storage, power, and connectivi...
The widespread use of mobile appliances, with limitations in terms of storage, power, and connectivi...
The widespread use of mobile appliances, with limitations in terms of storage, power, and connectivi...
Independent, heterogeneous, distributed, sometimes transient and mobile data sources produce an enor...
This demo presents a framework for personalizing data access on the basis of the users' context and ...
This demo presents a framework for personalizing data access on the basis of the users' context and ...
This demo presents a framework for personalizing data access on the basis of the users' context and ...
This demo presents a framework for personalizing data access on the basis of the users' context and ...
This demo presents a framework for personalizing data access on the basis of the users' context and ...
This demo presents a framework for personalizing data access on the basis of the users' context and ...
Abstract. This paper focuses on information representation and tailoring problems and on the definit...
Independent, heterogeneous, distributed, sometimes transient and mobile data sources produce an enor...
Independent, heterogeneous, distributed, sometimes transient and mobile data sources produce an enor...
Independent, heterogeneous, distributed, sometimes transient and mobile data sources produce an enor...