International audienceConditional preference networks (CP-nets) provide a compact and intuitive graphical tool to represent the preferences of a user. However, learning such a structure is known to be a difficult problem due to its combinatorial nature. We propose, in this paper, a new, efficient, and robust query-based learning algorithm for acyclic CP-nets. In particular, our algorithm takes into account the contradictions between multiple users’ preferences by searching in a principled way the variables that affect the preferences. We provide complexity results of the algorithm, and demonstrate its efficiency through an empirical evaluation on synthetic and on real databases
Modelling and reasoning about preference is necessary for applications such as recommendation and de...
International audienceMuch like relational probabilistic models, the need for relational preference ...
Conditional preference networks (CP-nets) are a graphical representation of a person’s (conditional)...
International audienceConditional preference networks (CP-nets) provide a compact and intuitive grap...
International audienceConditional preference networks (CP-nets) provide a powerful, compact, an...
International audienceConditional preference networks (CP-nets) have recently emerged as a popular l...
AbstractConditional preference networks (CP-nets) have recently emerged as a popular language capabl...
International audienceWe investigate the problem of eliciting CP-nets in the well-known model of exa...
Conditional preference networks (CP-nets) exploit the power of conditional ceteris paribus rules to ...
The rapid growth of personal web data has motivated the emergence of learning algorithms well suited...
The rapid growth of personal web data has motivated the emergence of learning algorithms well suited...
Abstract. We present an online, heuristic algorithm for learning Condi-tional Preference networks (C...
La croissance exponentielle des données personnelles, et leur mise à disposition sur la toile, a mot...
International audienceA recurrent issue in decision making is to extract a preference structure by o...
Abstract. A recurrent issue in decision making is to extract a preference structure by observing the...
Modelling and reasoning about preference is necessary for applications such as recommendation and de...
International audienceMuch like relational probabilistic models, the need for relational preference ...
Conditional preference networks (CP-nets) are a graphical representation of a person’s (conditional)...
International audienceConditional preference networks (CP-nets) provide a compact and intuitive grap...
International audienceConditional preference networks (CP-nets) provide a powerful, compact, an...
International audienceConditional preference networks (CP-nets) have recently emerged as a popular l...
AbstractConditional preference networks (CP-nets) have recently emerged as a popular language capabl...
International audienceWe investigate the problem of eliciting CP-nets in the well-known model of exa...
Conditional preference networks (CP-nets) exploit the power of conditional ceteris paribus rules to ...
The rapid growth of personal web data has motivated the emergence of learning algorithms well suited...
The rapid growth of personal web data has motivated the emergence of learning algorithms well suited...
Abstract. We present an online, heuristic algorithm for learning Condi-tional Preference networks (C...
La croissance exponentielle des données personnelles, et leur mise à disposition sur la toile, a mot...
International audienceA recurrent issue in decision making is to extract a preference structure by o...
Abstract. A recurrent issue in decision making is to extract a preference structure by observing the...
Modelling and reasoning about preference is necessary for applications such as recommendation and de...
International audienceMuch like relational probabilistic models, the need for relational preference ...
Conditional preference networks (CP-nets) are a graphical representation of a person’s (conditional)...