Author:
Zhang Yan-Ming,Zhang Xu-Yao,Yuan Xiao-Tong,Liu Cheng-Lin
Abstract
Graph-based Semi-Supervised learning is one of the most popular and successful semi-supervised learning methods. Typically, it predicts the labels of unlabeled data by minimizing a quadratic objective induced by the graph, which is unfortunately a procedure of polynomial complexity in the sample size $n$. In this paper, we address this scalability issue by proposing a method that approximately solves the quadratic objective in nearly linear time. The method consists of two steps: it first approximates a graph by a minimum spanning tree, and then solves the tree-induced quadratic objective function in O(n) time which is the main contribution of this work. Extensive experiments show the significant scalability improvement over existing scalable semi-supervised learning methods.
Publisher
Association for the Advancement of Artificial Intelligence (AAAI)
Cited by
2 articles.
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1. GPU-LSolve: An Efficient GPU-Based Laplacian Solver for Million-Scale Graphs;2024 IEEE International Parallel and Distributed Processing Symposium Workshops (IPDPSW);2024-05-27
2. Semi-supervised Learning via Bipartite Graph Construction with Adaptive Neighbors;IEEE Transactions on Knowledge and Data Engineering;2022