TY - GEN
T1 - Nonparametric latent feature models for link prediction
AU - Miller, Kurt T.
AU - Griffiths, Thomas L.
AU - Jordan, Michael I.
PY - 2009
Y1 - 2009
N2 - As the availability and importance of relational data-such as the friendships summarized on a social networking website-increases, it becomes increasingly important to have good models for such data. The kinds of latent structure that have been considered for use in predicting links in such networks have been relatively limited. In particular, the machine learning community has focused on latent class models, adapting Bayesian nonparametric methods to jointly infer how many latent classes there are while learning which entities belong to each class. We pursue a similar approach with a richer kind of latent variable-latent features-using a Bayesian nonparametric approach to simultaneously infer the number of features at the same time we learn which entities have each feature. Our model combines these inferred features with known covariates in order to perform link prediction. We demonstrate that the greater expressiveness of this approach allows us to improve performance on three datasets.
AB - As the availability and importance of relational data-such as the friendships summarized on a social networking website-increases, it becomes increasingly important to have good models for such data. The kinds of latent structure that have been considered for use in predicting links in such networks have been relatively limited. In particular, the machine learning community has focused on latent class models, adapting Bayesian nonparametric methods to jointly infer how many latent classes there are while learning which entities belong to each class. We pursue a similar approach with a richer kind of latent variable-latent features-using a Bayesian nonparametric approach to simultaneously infer the number of features at the same time we learn which entities have each feature. Our model combines these inferred features with known covariates in order to perform link prediction. We demonstrate that the greater expressiveness of this approach allows us to improve performance on three datasets.
UR - http://www.scopus.com/inward/record.url?scp=79951739147&partnerID=8YFLogxK
UR - http://www.scopus.com/inward/citedby.url?scp=79951739147&partnerID=8YFLogxK
M3 - Conference contribution
AN - SCOPUS:79951739147
SN - 9781615679119
T3 - Advances in Neural Information Processing Systems 22 - Proceedings of the 2009 Conference
SP - 1276
EP - 1284
BT - Advances in Neural Information Processing Systems 22 - Proceedings of the 2009 Conference
PB - Neural Information Processing Systems
T2 - 23rd Annual Conference on Neural Information Processing Systems, NIPS 2009
Y2 - 7 December 2009 through 10 December 2009
ER -