|
|
Publication
It Takes Variety to Make a World: Diversification in Recommender Systems
Source: EDBT (2009)
Download:
Publication
SocialScope: Enabling Information Discovery on Social Content Sites
Source: CIDR (2009)
Download:
Publication
A 21st Century Science
Source: Nature, Volume 445, p.489 (2007)
Download:
Publication
Viral marketing in the real world
Source: Harvard Business Review, Issue May (2007)
Download:
Publication
Marketing in an unpredictable world
Source: (2005)
Download:
Publication
Random graphs with arbitrary degree distributions and their applications
Source: Physical Review E, Volume 64, p.026118 (2001)
Download:
Publication
Network robustness and fragility: Percolation on random graphs
Source: Physical Review Letters, Volume 84, p.3201-3204 (2000)
Download:
Publication
Mean-field solution of the small-world network model
Source: Physical Review Letters, Volume 84, p.3201-3204 (2000)
Download:
Publication
Networks, dynamics and the small world phenomenon
Source: American Journal of Sociology, Volume 105, Issue 2, p.493-527 (1999)
Download:
Publication
Structured learning for non-smooth ranking losses
Source: KDD (2008)
Abstract: Learning to rank from relevance judgment is an active research area. Itemwise score regression, pairwise preference satisfaction, and listwise structured learning are the major techniques in use. Listwise structured learning has been applied recently to optimize important non-decomposable ranking criteria like AUC (area under ROC curve) and MAP (mean average precision). We propose new, almost-linear-time algorithms to optimize for two other criteria widely used to evaluate search systems: MRR (mean reciprocal rank) and NDCG (normalized discounted cumulative gain) in the max-margin structured learning framework. We also demonstrate that, for different ranking criteria, one may need to use different feature maps. Search applications should not be optimized in favor of a single criterion, because they need to cater to a variety of queries. E.g., MRR is best for navigational queries, while NDCG is best for informational queries. A key contribution of this paper is to fold multiple ranking loss functions into a multi-criteria max-margin optimization. The result is a single, robust ranking model that is close to the best accuracy of learners trained on individual criteria. In fact, experiments over the popular LETOR and TREC data sets show that, contrary to conventional wisdom, a test criterion is often not best served by training with the same individual criterion.
|