Efficient Regularized Least-Squares Algorithms for Conditional Ranking on Relational Data
This work addresses ranking tasks in domains like bioinformatics and social networks, offering incremental improvements through efficient algorithms and enforcement of relational properties.
The paper tackles the problem of learning conditional rankings from relational data by proposing efficient kernel-based algorithms that optimize squared regression and ranking loss functions, achieving state-of-the-art performance in predictive power and computational efficiency on synthetic and real-world datasets.
In domains like bioinformatics, information retrieval and social network analysis, one can find learning tasks where the goal consists of inferring a ranking of objects, conditioned on a particular target object. We present a general kernel framework for learning conditional rankings from various types of relational data, where rankings can be conditioned on unseen data objects. We propose efficient algorithms for conditional ranking by optimizing squared regression and ranking loss functions. We show theoretically, that learning with the ranking loss is likely to generalize better than with the regression loss. Further, we prove that symmetry or reciprocity properties of relations can be efficiently enforced in the learned models. Experiments on synthetic and real-world data illustrate that the proposed methods deliver state-of-the-art performance in terms of predictive power and computational efficiency. Moreover, we also show empirically that incorporating symmetry or reciprocity properties can improve the generalization performance.