To better serve users’ information needs without requiring comprehensive queries from users, a simple yet effective technique is to explore the preferences of users. Since these preferences can differ for each context of the user, we introduce context-aware preferences. To anchor the semantics of context-aware preferences in a traditional probabilistic model of information retrieval, we present a semantics for context-aware preferences based on the history of the user. An advantage of this approach is that the inherent uncertainty of context information, due to the fact that context information is often acquired through sensors, can be easily integrated in the model. To demonstrate the feasibility of our approach and current bottlenecks we ...
Users' preferences have traditionally been exploited in query personalization to better serve their ...
Recommender systems are important building blocks in many of today’s e-commerce applications includi...
Abstract—In this paper, we illustrate how to extract personal context-aware preferences from the con...
To better serve users ’ information needs without requir-ing comprehensive queries from users, a sim...
To better serve users’ information needs without requiring comprehensive queries from users, a simpl...
To handle the overwhelming amount of information cur-rently available, personalization systems allow...
The term information overload was already used back in the 1970s by Alvin Toffler in his book Future...
Abstract. Today, the overwhelming volume of information that is avail-able to an increasingly wider ...
To handle the overwhelming amount of information currently available, personalization systems allow ...
The increasing amount of available digital data motivates the development of techniques for the mana...
International audienceThe emerging of ubiquitous computing technologies in recent years has given ri...
To handle the overwhelming amount of information cur-rently available, personalization systems allow...
International audienceThe emerging of ubiquitous computing technologies in recent years has given ri...
International audienceIt is well known that with the increasing of information volumes across the We...
Usersarsquo; preferences have traditionally been exploited in query personalization to better serve ...
Users' preferences have traditionally been exploited in query personalization to better serve their ...
Recommender systems are important building blocks in many of today’s e-commerce applications includi...
Abstract—In this paper, we illustrate how to extract personal context-aware preferences from the con...
To better serve users ’ information needs without requir-ing comprehensive queries from users, a sim...
To better serve users’ information needs without requiring comprehensive queries from users, a simpl...
To handle the overwhelming amount of information cur-rently available, personalization systems allow...
The term information overload was already used back in the 1970s by Alvin Toffler in his book Future...
Abstract. Today, the overwhelming volume of information that is avail-able to an increasingly wider ...
To handle the overwhelming amount of information currently available, personalization systems allow ...
The increasing amount of available digital data motivates the development of techniques for the mana...
International audienceThe emerging of ubiquitous computing technologies in recent years has given ri...
To handle the overwhelming amount of information cur-rently available, personalization systems allow...
International audienceThe emerging of ubiquitous computing technologies in recent years has given ri...
International audienceIt is well known that with the increasing of information volumes across the We...
Usersarsquo; preferences have traditionally been exploited in query personalization to better serve ...
Users' preferences have traditionally been exploited in query personalization to better serve their ...
Recommender systems are important building blocks in many of today’s e-commerce applications includi...
Abstract—In this paper, we illustrate how to extract personal context-aware preferences from the con...