Dmitry Moor
IBM
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Publication
Featured researches published by Dmitry Moor.
Optical Memory and Neural Networks | 2012
A. P. Karpenko; Dmitry Moor; D. T. Mukhlisullina
A direct adaptive method of multicriteria optimization based on neural network, fuzzy and neuro-fuzzy approximation of the decision maker’s utility function is introduced. A comparative analysis of efficiency of the various approximation techniques for solving two-and three-criterion optimization test problems is carried out.
international semantic web conference | 2017
Tobias Grubenmann; Abraham Bernstein; Dmitry Moor; Sven Seuken
Federated querying, the idea to execute queries over several distributed knowledge bases, lies at the core of the semantic web vision. To accommodate this vision, SPARQL provides the SERVICE keyword that allows one to allocate sub-queries to servers. In many cases, however, data may be available from multiple sources resulting in a combinatorially growing number of alternative allocations of subqueries to sources. Running a federated query on all possible sources might not be very lucrative from a user’s point of view if extensive execution times or fees are involved in accessing the sources’ data. To address this shortcoming, federated join-cardinality approximation techniques have been proposed to narrow down the number of possible allocations to a few most promising (or results-yielding) ones.
winter simulation conference | 2013
Ofer Shir; Shahar Chen; David Amid; David Boaz; Ateret Anaby-Tavor; Dmitry Moor
Simulation performance may be evaluated according to multiple quality measures that are in competition and their simultaneous consideration poses a conflict. In the current study we propose a practical framework for investigating such simulation performance criteria, exploring the inherent conflicts amongst them and identifying the best available tradeoffs, based upon multiobjective Pareto optimization. This approach necessitates the rigorous derivation of performance criteria to serve as objective functions and undergo vector optimization. We demonstrate the effectiveness of our proposed approach by applying it to a specific Artificial Neural Networks (ANN) simulation, with multiple stochastic quality measures. We formulate performance criteria of this use-case, pose an optimization problem, and solve it by means of a simulation-based Pareto approach. Upon attainment of the underlying Pareto Frontier, we analyze it and prescribe preference-dependent configurations for the optimal simulation training.
international world wide web conferences | 2018
Tobias Grubenmann; Abraham Bernstein; Dmitry Moor; Sven Seuken
The World Wide Web is a massive network of interlinked documents. One of the reasons the World Wide Web is so successful is the fact that most content is available free of any charge. Inspired by the success of the World Wide Web, the Web of Data applies the same strategy of interlinking to data. To this point, most of data in the Web of Data is also free of charge. The fact that the data is freely available raises the question of financing these services, however. As we will discuss in this paper, advertisement and donations cannot easily be applied to this new setting. To create incentives to subsidize data providers, we propose that sponsors should pay the providers to promote sponsored data. In return, sponsored data will be privileged over non-sponsored data. Since it is not possible to enforce a certain ordering on the data the user will receive, we propose to split up the data into different batches and deliver these batches with different delays. In this way, we can privilege sponsored data without withholding any non-sponsored data from the user. In this paper, we introduce a new concept of a delayed-answer auction, where sponsors can pay to prioritize their data. We introduce a new model which captures the particular situation when a user access data in the Web of Data. We show how the weighted Vickrey-Clarke-Groves auction mechanism can be applied to our scenario and we discuss how certain parameters can influence the nature of our auction. With our new concept, we build a first step to a free yet financial sustainable Web of Data.
Supercomputing Frontiers and Innovations: an International Journal archive | 2014
Torsten Hoefler; Dmitry Moor
auctions market mechanisms and their applications | 2015
Dmitry Moor; Tobias Grubenmann; Sven Seuken; Abraham Bernstein
Grubenmann, Tobias; Dell' Aglio, Daniele; Bernstein, Abraham; Moor, Dmitry; Seuken, Sven (2017). Decentralizing the Semantic Web: Who will pay to realize it? In: ISWC2017 workshop on Decentralizing the Semantic Web, Vienna, 20 October 2017 - 21 October 2017. | 2017
Tobias Grubenmann; Daniele Dell’Aglio; Abraham Bernstein; Dmitry Moor; Sven Seuken
international joint conference on artificial intelligence | 2016
Dmitry Moor; Sven Seuken; Tobias Grubenmann; Abraham Bernstein
Archive | 2013
Dirk Bolte; Yaroslav Chernov; Victor Gusev; Alexander Kuchin; Martin Kuenzel; Adolf Martens; Andrey Mishin; Dmitry Moor
arXiv: Databases | 2018
Tobias Grubenmann; Abraham Bernstein; Dmitry Moor; Sven Seuken