279 research outputs found

    QuateXelero : an accelerated exact network motif detection algorithm

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    Finding motifs in biological, social, technological, and other types of networks has become a widespread method to gain more knowledge about these networks’ structure and function. However, this task is very computationally demanding, because it is highly associated with the graph isomorphism which is an NP problem (not known to belong to P or NP-complete subsets yet). Accordingly, this research is endeavoring to decrease the need to call NAUTY isomorphism detection method, which is the most time-consuming step in many existing algorithms. The work provides an extremely fast motif detection algorithm called QuateXelero, which has a Quaternary Tree data structure in the heart. The proposed algorithm is based on the well-known ESU (FANMOD) motif detection algorithm. The results of experiments on some standard model networks approve the overal superiority of the proposed algorithm, namely QuateXelero, compared with two of the fastest existing algorithms, G-Tries and Kavosh. QuateXelero is especially fastest in constructing the central data structure of the algorithm from scratch based on the input network

    Declarative Cleaning, Analysis, and Querying of Graph-structured Data

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    Much of today's data including social, biological, sensor, computer, and transportation network data is naturally modeled and represented by graphs. Typically, data describing these networks is observational, and thus noisy and incomplete. Therefore, methods for efficiently managing graph-structured data of this nature are needed, especially with the abundance and increasing sizes of such data. In my dissertation, I develop declarative methods to perform cleaning, analysis and querying of graph-structured data efficiently. For declarative cleaning of graph-structured data, I identify a set of primitives to support the extraction and inference of the underlying true network from observational data, and describe a framework that enables a network analyst to easily implement and combine new extraction and cleaning techniques. The task specification language is based on Datalog with a set of extensions designed to enable different graph cleaning primitives. For declarative analysis, I introduce 'ego-centric pattern census queries', a new type of graph analysis query that supports searching for structural patterns in every node's neighborhood and reporting their counts for further analysis. I define an SQL-based declarative language to support this class of queries, and develop a series of efficient query evaluation algorithms for it. Finally, I present an approach for querying large uncertain graphs that supports reasoning about uncertainty of node attributes, uncertainty of edge existence, and a new type of uncertainty, called identity linkage uncertainty, where a group of nodes can potentially refer to the same real-world entity. I define a probabilistic graph model to capture all these types of uncertainties, and to resolve identity linkage merges. I propose 'context-aware path indexing' and 'join-candidate reduction' methods to efficiently enable subgraph matching queries over large uncertain graphs of this type
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