Kernelized Bayesian Matrix Factorization

11/06/2012
by   Mehmet Gönen, et al.
0

We extend kernelized matrix factorization with a fully Bayesian treatment and with an ability to work with multiple side information sources expressed as different kernels. Kernel functions have been introduced to matrix factorization to integrate side information about the rows and columns (e.g., objects and users in recommender systems), which is necessary for making out-of-matrix (i.e., cold start) predictions. We discuss specifically bipartite graph inference, where the output matrix is binary, but extensions to more general matrices are straightforward. We extend the state of the art in two key aspects: (i) A fully conjugate probabilistic formulation of the kernelized matrix factorization problem enables an efficient variational approximation, whereas fully Bayesian treatments are not computationally feasible in the earlier approaches. (ii) Multiple side information sources are included, treated as different kernels in multiple kernel learning that additionally reveals which side information sources are informative. Our method outperforms alternatives in predicting drug-protein interactions on two data sets. We then show that our framework can also be used for solving multilabel learning problems by considering samples and labels as the two domains where matrix factorization operates on. Our algorithm obtains the lowest Hamming loss values on 10 out of 14 multilabel classification data sets compared to five state-of-the-art multilabel learning algorithms.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
12/06/2022

PoissonMat: Remodeling Matrix Factorization using Poisson Distribution and Solving the Cold Start Problem without Input Data

Matrix Factorization is one of the most successful recommender system te...
research
06/27/2012

Bayesian Efficient Multiple Kernel Learning

Multiple kernel learning algorithms are proposed to combine kernels in o...
research
06/10/2019

Bayesian Tensor Filtering: Smooth, Locally-Adaptive Factorization of Functional Matrices

We consider the problem of functional matrix factorization, finding low-...
research
03/15/2012

A Bayesian Matrix Factorization Model for Relational Data

Relational learning can be used to augment one data source with other co...
research
03/31/2021

DIVERSE: bayesian Data IntegratiVE learning for precise drug ResponSE prediction

Detecting predictive biomarkers from multi-omics data is important for p...
research
07/02/2013

Data Fusion by Matrix Factorization

For most problems in science and engineering we can obtain data sets tha...
research
07/29/2014

Bayesian Probabilistic Matrix Factorization: A User Frequency Analysis

Matrix factorization (MF) has become a common approach to collaborative ...

Please sign up or login with your details

Forgot password? Click here to reset