We present a new matrix factorization model for rating data and a corresponding active learning strategy to address the cold-start problem. Cold-start is one of the most challenging tasks for rec-ommender systems: what to recommend with new users or items for which one has little or no data. An approach is to use active learning to collect the most useful initial ratings. How-ever, the performance of active learning depends strongly upon having accurate estimates of i) the uncertainty in model parameters and ii) the in-trinsic noisiness of the data. To achieve these estimates we propose a heteroskedastic Bayesian model for ordinal matrix factorization. We also present a computationally efficient framework for Bayesian active learning with t...
Ordinal Regression (OR) aims to model the ordering information between different data categories, wh...
In this paper, we suggest a novel data-driven approach to active learning (AL). The key idea is to t...
Every time a recommender system has a new user, it does not have enough information to generate reco...
We present a new matrix factorization model for rating data and a corresponding active learning stra...
We present a new matrix factorization model for rating data and a corresponding active learning stra...
With the advent of the Internet and growth of storage capabilities, large collections of unlabelled ...
Traditionally, Bayesian inductive learning involves finding the most probable model from the entire ...
Collaborative prediction is a powerful technique, useful in domains from recommender systems to guid...
This thesis studies active learning and confidence-rated prediction, and the interplay between these...
Active learning is a machine learning strategy which seeks to achieve the best possible results wit...
We introduce a method of Robust Learning (‘robl’) for binary data, and propose its use in situations...
International audienceWe introduce a new non-negative matrix factorization (NMF) method for ordinal ...
Abstract To date, a large number of active learning algorithms have been proposed, but active learni...
Recent breakthroughs made by deep learning rely heavily on a large number of annotated samples. To o...
Collaborative filtering is a useful technique for exploiting the preference patterns of a group of u...
Ordinal Regression (OR) aims to model the ordering information between different data categories, wh...
In this paper, we suggest a novel data-driven approach to active learning (AL). The key idea is to t...
Every time a recommender system has a new user, it does not have enough information to generate reco...
We present a new matrix factorization model for rating data and a corresponding active learning stra...
We present a new matrix factorization model for rating data and a corresponding active learning stra...
With the advent of the Internet and growth of storage capabilities, large collections of unlabelled ...
Traditionally, Bayesian inductive learning involves finding the most probable model from the entire ...
Collaborative prediction is a powerful technique, useful in domains from recommender systems to guid...
This thesis studies active learning and confidence-rated prediction, and the interplay between these...
Active learning is a machine learning strategy which seeks to achieve the best possible results wit...
We introduce a method of Robust Learning (‘robl’) for binary data, and propose its use in situations...
International audienceWe introduce a new non-negative matrix factorization (NMF) method for ordinal ...
Abstract To date, a large number of active learning algorithms have been proposed, but active learni...
Recent breakthroughs made by deep learning rely heavily on a large number of annotated samples. To o...
Collaborative filtering is a useful technique for exploiting the preference patterns of a group of u...
Ordinal Regression (OR) aims to model the ordering information between different data categories, wh...
In this paper, we suggest a novel data-driven approach to active learning (AL). The key idea is to t...
Every time a recommender system has a new user, it does not have enough information to generate reco...