User-system interaction in recommender systems involves three aspects: temporal browsing (viewing recommendation lists and/or searching/filtering), action (performing actions on recommended items, e.g., clicking, consuming) and inaction (neglecting or skipping recommended items). Modern recommenders build machine learning models from recordings of such user interaction with the system, and in doing so they commonly make certain assumptions (e.g., pairwise preference orders, independent or competitive probabilistic choices, etc.). In this paper, we set out to study the effects of these assumptions along three dimensions in eight different single models and three associated hybrid models on a user browsing data set collected from a real-world...
Recommender systems (RSs) have undoubtedly played a significant role in addressing the information o...
Temporally, users browse and interact with items in recommender systems. However, for most systems, ...
Whenever people have to choose seeing or buying an item among many others, they are based on their o...
User-system interaction in recommender systems involves three aspects: temporal browsing (viewing re...
On many of today's most popular Internet service platforms, users are confronted with a seemingly en...
Recommender systems typically use collaborative filtering: information from your preferences (i.e. y...
Users interact with recommender systems to obtain useful information about products or services that...
Users may show a behavioral pattern in consuming the items. For example, one might assume that a use...
Recommender systems are used to make recommendations about products, information, or services for us...
If we assume that an important function of recommender systems is to help people make better choices...
Recommender Systems have already proved to be valuable for coping with the information overload prob...
Modeling and predicting user behavior in recommender systems are challenging as there are various ty...
Machine Learning seems to offer the solution to the central problem in recommender systems: Learning...
Recommender systems (RSs) have undoubtedly played a significant role in addressing the information o...
Temporally, users browse and interact with items in recommender systems. However, for most systems, ...
Whenever people have to choose seeing or buying an item among many others, they are based on their o...
User-system interaction in recommender systems involves three aspects: temporal browsing (viewing re...
On many of today's most popular Internet service platforms, users are confronted with a seemingly en...
Recommender systems typically use collaborative filtering: information from your preferences (i.e. y...
Users interact with recommender systems to obtain useful information about products or services that...
Users may show a behavioral pattern in consuming the items. For example, one might assume that a use...
Recommender systems are used to make recommendations about products, information, or services for us...
If we assume that an important function of recommender systems is to help people make better choices...
Recommender Systems have already proved to be valuable for coping with the information overload prob...
Modeling and predicting user behavior in recommender systems are challenging as there are various ty...
Machine Learning seems to offer the solution to the central problem in recommender systems: Learning...
Recommender systems (RSs) have undoubtedly played a significant role in addressing the information o...
Temporally, users browse and interact with items in recommender systems. However, for most systems, ...
Whenever people have to choose seeing or buying an item among many others, they are based on their o...