This paper presents a framework for estimating and updating user preferences in the context of app-based recommender systems. We specifically consider recommender systems which provide personalized menus of options to users. A Hierarchical Bayes procedure is applied in order to account for inter- and intra-consumer heterogeneity, representing random taste variations among individuals and among choice situations (menus) for a given individual, respectively. Three levels of preference parameters are estimated: population-level, individual-level and menu-specific. In the context of a recommender system, the estimation of these parameters is repeated periodically in an offline process in order to account for trends, such as changing market cond...
Users may show a behavioral pattern in consuming the items. For example, one might assume that a use...
We develop discrete choice models that account for parameter driven preference dynamics. Choice mode...
Recommender systems form the backbone of many interactive systems. They incorporate user feedback to...
This paper presents a framework for estimating and updating user preferences in the context of app-b...
Thesis: Ph. D. in Transportation, Massachusetts Institute of Technology, Department of Civil and Env...
In our modern society, with the bourgeoning of e-commerce and online streaming platforms, customers ...
In a period of time in which the content available through the Internet increases exponentially and...
The internet presents people with an increasingly bewildering variety of choices. Online consumers h...
We present a probabilistic model for generating personalised recommendations of items to users of a ...
In real-world scenarios, user preferences for items are constantly drifting over time as item percep...
This thesis investigates the area of preference learning and recommender systems. We concentrated re...
Personalized recommender systems aim to assist users in retrieving and accessing interesting items b...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Electrical Engineering and Comp...
The frequency with which people make food choices in everyday life means that recommender systems ma...
Interactive evolutionary algorithms (IEAs) coupled with a data-driven user surrogate model (USM) hav...
Users may show a behavioral pattern in consuming the items. For example, one might assume that a use...
We develop discrete choice models that account for parameter driven preference dynamics. Choice mode...
Recommender systems form the backbone of many interactive systems. They incorporate user feedback to...
This paper presents a framework for estimating and updating user preferences in the context of app-b...
Thesis: Ph. D. in Transportation, Massachusetts Institute of Technology, Department of Civil and Env...
In our modern society, with the bourgeoning of e-commerce and online streaming platforms, customers ...
In a period of time in which the content available through the Internet increases exponentially and...
The internet presents people with an increasingly bewildering variety of choices. Online consumers h...
We present a probabilistic model for generating personalised recommendations of items to users of a ...
In real-world scenarios, user preferences for items are constantly drifting over time as item percep...
This thesis investigates the area of preference learning and recommender systems. We concentrated re...
Personalized recommender systems aim to assist users in retrieving and accessing interesting items b...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Electrical Engineering and Comp...
The frequency with which people make food choices in everyday life means that recommender systems ma...
Interactive evolutionary algorithms (IEAs) coupled with a data-driven user surrogate model (USM) hav...
Users may show a behavioral pattern in consuming the items. For example, one might assume that a use...
We develop discrete choice models that account for parameter driven preference dynamics. Choice mode...
Recommender systems form the backbone of many interactive systems. They incorporate user feedback to...