Towards psychology-aware preference construction in recommender systems: Overview and research issues
User preferences are a crucial input needed by recommender systems to determine relevant
items. In single-shot recommendation scenarios such as content-based filtering and …
items. In single-shot recommendation scenarios such as content-based filtering and …
An overview of recommender systems and machine learning in feature modeling and configuration
Recommender systems support decisions in various domains ranging from simple items
such as books and movies to more complex items such as financial services …
such as books and movies to more complex items such as financial services …
An introduction to personalization and mass customization
Mass customization as a state-of-the-art production paradigm aims to produce
individualized, highly variant products and services with nearly mass production costs. A …
individualized, highly variant products and services with nearly mass production costs. A …
Evaluating group recommender systems
In the previous chapters, we have learned how to design group recommender systems but
did not explicitly discuss how to evaluate them. The evaluation techniques for group …
did not explicitly discuss how to evaluate them. The evaluation techniques for group …
Algorithms for group recommendation
In this chapter, our aim is to show how group recommendation can be implemented on the
basis of recommendation paradigms for individual users. Specifically, we focus on …
basis of recommendation paradigms for individual users. Specifically, we focus on …
Consistency-based integration of multi-stakeholder recommender systems with feature model configuration
Feature models are used to represent variability properties of complex items. In most of the
cases, the assumption in feature model configuration is that single users/stakeholders are …
cases, the assumption in feature model configuration is that single users/stakeholders are …
A systematic review of interaction design strategies for group recommendation systems
Systems involving artificial intelligence (AI) are protagonists in many everyday activities.
Moreover, designers are increasingly implementing these systems for groups of users in …
Moreover, designers are increasingly implementing these systems for groups of users in …
Explanations for groups
Explanations are used in recommender systems for various reasons. Users have to be
supported in making (high-quality) decisions more quickly. Developers of recommender …
supported in making (high-quality) decisions more quickly. Developers of recommender …
Enhancing product configuration and sales processes with extended reality
The advent of extended reality (XR) technologies is opening new doors for augmenting
customer experience and enhancing sales processes. XR is promising not only for …
customer experience and enhancing sales processes. XR is promising not only for …
Decision tasks and basic algorithms
Recommender systems are decision support systems hel** users to identify one or more
items (solutions) that fit their wishes and needs. The most frequent application of …
items (solutions) that fit their wishes and needs. The most frequent application of …