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      A Stochastic Large-scale Machine Learning Algorithm for Distributed Features and Observations

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          Abstract

          As the size of modern data sets exceeds the disk and memory capacities of a single computer, machine learning practitioners have resorted to parallel and distributed computing. Given that optimization is one of the pillars of machine learning and predictive modeling, distributed optimization methods have recently garnered ample attention, in particular when either observations or features are distributed, but not both. We propose a general stochastic algorithm where observations, features, and gradient components can be sampled in a double distributed setting, i.e., with both features and observations distributed. Very technical analyses establish convergence properties of the algorithm under different conditions on the learning rate (diminishing to zero or constant). Computational experiments in Spark demonstrate a superior performance of our algorithm versus a benchmark in early iterations of the algorithm, which is due to the stochastic components of the algorithm.

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          Distributed asynchronous deterministic and stochastic gradient optimization algorithms

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            SemMedDB: a PubMed-scale repository of biomedical semantic predications.

            Effective access to the vast biomedical knowledge present in the scientific literature is challenging. Semantic relations are increasingly used in knowledge management applications supporting biomedical research to help address this challenge. We describe SemMedDB, a repository of semantic predications (subject-predicate-object triples) extracted from the entire set of PubMed citations. We propose the repository as a knowledge resource that can assist in hypothesis generation and literature-based discovery in biomedicine as well as in clinical decision-making support. The SemMedDB repository is available as a MySQL database for non-commercial use at http://skr3.nlm.nih.gov/SemMedDB. An UMLS Metathesaurus license is required. kilicogluh@mail.nih.gov.
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              Gradient Convergence in Gradient methods with Errors

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                Author and article information

                Journal
                29 March 2018
                Article
                1803.11287
                9b7c06ce-7a2f-42b2-8688-6a805d7be849

                http://arxiv.org/licenses/nonexclusive-distrib/1.0/

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                Custom metadata
                11 figures, 41 pages
                stat.ML cs.LG

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