8f468c873a32bb0619eaeb2050ba45d1-Reviews.html
–Neural Information Processing Systems
Summary: This paper presents a multitask learning method which entails jointly solving a collection of k-nearest neighbor (kNN) based prediction tasks, leveraging the relationships among the tasks. Whereas single task learning for kNN would only consider neighbors from the task which the test point belongs to (referred to as "homogeneous neighborhood" in the paper), the multitask variant proposed here considers neighbors from all tasks (referred to as "heterogeneous neighborhood" in the paper), suitably weighting the contribution of each neighbor by the pairwise similarity between the task the test point belongs o and the task the neighbor belongs to. The pairwise task similarities are learned from data. Experimental results show that the proposed method performs better than a kNN based multitask learning method anda global multitask learning method that learns a common feature represent of all tasks and learns predictors using that representation. Quality: The proposed model makes sense, especially the way a local learning problem (neighborhood based kNN) has been reformulated as a global learning problem (like SVM) and then cast as a standard global multitask learning problem. Clarity: The paper is well-written and the idea is easy to follow.
Neural Information Processing Systems
Mar-13-2024, 18:36:36 GMT