Graph-based semi-supervised learning methods are based on some smoothness assumption about the data. As a discrete approximation of the data manifold, the graph plays a crucial role in the success of such graph-based methods. In most existing methods, graph construction makes use of a predefined weighting function without utilizing label information even when it is available. In this work, by incorporating label information, we seek to enhance the performance of graph-based semi-supervised learning by learning the graph and label inference simultaneously. In particular, we consider a particular setting of semi-supervised learning called transductive learning. Using the LogDet divergence to define the objective function, we propose an iterative algorithm to solve the optimization problem which has closed-form solution in each step. We perform experiments on both synthetic and real data to demonstrate improvement in the graph and in terms of classification accuracy.
CITATION STYLE
Zhang, Y. M., Zhang, Y., Yeung, D. Y., Liu, C. L., & Hou, X. (2010). Transductive Learning on Adaptive Graphs. In Proceedings of the 24th AAAI Conference on Artificial Intelligence, AAAI 2010 (pp. 661–666). AAAI Press. https://doi.org/10.1609/aaai.v24i1.7670
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