Multi-output Gaussian Processes for Uncertainty-aware Recommender
Systems
- URL: http://arxiv.org/abs/2106.04221v1
- Date: Tue, 8 Jun 2021 10:01:14 GMT
- Title: Multi-output Gaussian Processes for Uncertainty-aware Recommender
Systems
- Authors: Yinchong Yang, Florian Buettner
- Abstract summary: We introduce an efficient strategy for model training and inference, resulting in a model that scales to very large and sparse datasets.
Our model also provides meaningful uncertainty estimates about quantifying that prediction.
- Score: 3.908842679355254
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: Recommender systems are often designed based on a collaborative filtering
approach, where user preferences are predicted by modelling interactions
between users and items. Many common approaches to solve the collaborative
filtering task are based on learning representations of users and items,
including simple matrix factorization, Gaussian process latent variable models,
and neural-network based embeddings. While matrix factorization approaches fail
to model nonlinear relations, neural networks can potentially capture such
complex relations with unprecedented predictive power and are highly scalable.
However, neither of them is able to model predictive uncertainties. In
contrast, Gaussian Process based models can generate a predictive distribution,
but cannot scale to large amounts of data. In this manuscript, we propose a
novel approach combining the representation learning paradigm of collaborative
filtering with multi-output Gaussian processes in a joint framework to generate
uncertainty-aware recommendations. We introduce an efficient strategy for model
training and inference, resulting in a model that scales to very large and
sparse datasets and achieves competitive performance in terms of classical
metrics quantifying the reconstruction error. In addition to accurately
predicting user preferences, our model also provides meaningful uncertainty
estimates about that prediction.
Related papers
- Ranking and Combining Latent Structured Predictive Scores without Labeled Data [2.5064967708371553]
This paper introduces a novel structured unsupervised ensemble learning model (SUEL)
It exploits the dependency between a set of predictors with continuous predictive scores, rank the predictors without labeled data and combine them to an ensembled score with weights.
The efficacy of the proposed methods is rigorously assessed through both simulation studies and real-world application of risk genes discovery.
arXiv Detail & Related papers (2024-08-14T20:14:42Z) - IGANN Sparse: Bridging Sparsity and Interpretability with Non-linear Insight [4.010646933005848]
IGANN Sparse is a novel machine learning model from the family of generalized additive models.
It promotes sparsity through a non-linear feature selection process during training.
This ensures interpretability through improved model sparsity without sacrificing predictive performance.
arXiv Detail & Related papers (2024-03-17T22:44:36Z) - Fusion of Gaussian Processes Predictions with Monte Carlo Sampling [61.31380086717422]
In science and engineering, we often work with models designed for accurate prediction of variables of interest.
Recognizing that these models are approximations of reality, it becomes desirable to apply multiple models to the same data and integrate their outcomes.
arXiv Detail & Related papers (2024-03-03T04:21:21Z) - Structured Radial Basis Function Network: Modelling Diversity for
Multiple Hypotheses Prediction [51.82628081279621]
Multi-modal regression is important in forecasting nonstationary processes or with a complex mixture of distributions.
A Structured Radial Basis Function Network is presented as an ensemble of multiple hypotheses predictors for regression problems.
It is proved that this structured model can efficiently interpolate this tessellation and approximate the multiple hypotheses target distribution.
arXiv Detail & Related papers (2023-09-02T01:27:53Z) - Variational Factorization Machines for Preference Elicitation in
Large-Scale Recommender Systems [17.050774091903552]
We propose a variational formulation of factorization machines (FMs) that can be easily optimized using standard mini-batch descent gradient.
Our algorithm learns an approximate posterior distribution over the user and item parameters, which leads to confidence intervals over the predictions.
We show, using several datasets, that it has comparable or better performance than existing methods in terms of prediction accuracy.
arXiv Detail & Related papers (2022-12-20T00:06:28Z) - Variational Hierarchical Mixtures for Probabilistic Learning of Inverse
Dynamics [20.953728061894044]
Well-calibrated probabilistic regression models are a crucial learning component in robotics applications as datasets grow rapidly and tasks become more complex.
We consider a probabilistic hierarchical modeling paradigm that combines the benefits of both worlds to deliver computationally efficient representations with inherent complexity regularization.
We derive two efficient variational inference techniques to learn these representations and highlight the advantages of hierarchical infinite local regression models.
arXiv Detail & Related papers (2022-11-02T13:54:07Z) - Correcting Model Bias with Sparse Implicit Processes [0.9187159782788579]
We show that Sparse Implicit Processes (SIP) is capable of correcting model bias when the data generating mechanism differs strongly from the one implied by the model.
We use synthetic datasets to show that SIP is capable of providing predictive distributions that reflect the data better than the exact predictions of the initial, but wrongly assumed model.
arXiv Detail & Related papers (2022-07-21T18:00:01Z) - HyperImpute: Generalized Iterative Imputation with Automatic Model
Selection [77.86861638371926]
We propose a generalized iterative imputation framework for adaptively and automatically configuring column-wise models.
We provide a concrete implementation with out-of-the-box learners, simulators, and interfaces.
arXiv Detail & Related papers (2022-06-15T19:10:35Z) - Deep Variational Models for Collaborative Filtering-based Recommender
Systems [63.995130144110156]
Deep learning provides accurate collaborative filtering models to improve recommender system results.
Our proposed models apply the variational concept to injectity in the latent space of the deep architecture.
Results show the superiority of the proposed approach in scenarios where the variational enrichment exceeds the injected noise effect.
arXiv Detail & Related papers (2021-07-27T08:59:39Z) - Autoregressive Score Matching [113.4502004812927]
We propose autoregressive conditional score models (AR-CSM) where we parameterize the joint distribution in terms of the derivatives of univariable log-conditionals (scores)
For AR-CSM models, this divergence between data and model distributions can be computed and optimized efficiently, requiring no expensive sampling or adversarial training.
We show with extensive experimental results that it can be applied to density estimation on synthetic data, image generation, image denoising, and training latent variable models with implicit encoders.
arXiv Detail & Related papers (2020-10-24T07:01:24Z) - Efficient Ensemble Model Generation for Uncertainty Estimation with
Bayesian Approximation in Segmentation [74.06904875527556]
We propose a generic and efficient segmentation framework to construct ensemble segmentation models.
In the proposed method, ensemble models can be efficiently generated by using the layer selection method.
We also devise a new pixel-wise uncertainty loss, which improves the predictive performance.
arXiv Detail & Related papers (2020-05-21T16:08:38Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.