• HOME
  • IEEE Projects
    • IEEE Projects 2017 Dot Net Projects
    • IEEE Projects 2017 Java Projects
    • IEEE Projects 2016 Dot Net Projects
    • IEEE Projects 2016 Java Projects
    • IEEE Projects 2015
    • IEEE Projects 2014
      • IEEE 2014 Java Projects
        • IEEE Projects 2014 For Cse in Data Mining Java
        • IEEE Projects 2014 For Cse in cloud computing Java
        • IEEE Projects 2014 For Cse in Image Processing Java
        • IEEE Projects 2014 For Cse in Mobile Computing Java
        • IEEE Projects 2014 For Cse in Networking Java
        • IEEE Projects 2014 For Cse in Network Security Java
        • IEEE Projects 2014 For Cse in Software Engineering Java
      • IEEE 2014 Dotnet Projects
        • IEEE Projects 2014 For Cse in Data Mining Dotnet
        • IEEE Projects 2014 For Cse in Cloud Computing Dotnet
        • IEEE Projects 2014 For Cse in Netwoking Dotnet
        • IEEE Projects 2014 For Cse in Netwok Security Dotnet
    • IEEE Projects 2013
      • IEEE 2013 JAVA Projects
      • IEEE 2013 Dotnet Projects
    • IEEE Projects 2012
      • IEEE 2012 JAVA Projects
      • IEEE 2012 Dotnet Projects
    • IEEE Projects 2011
      • IEEE 2011 JAVA Projects
      • IEEE 2011 Dotnet Projects
    • IEEE Projects 2010
  • Power Electronics Projects
    • IEEE Projects 2015 For Power Electronics
    • IEEE Projects 2014 For Power Electronics
    • IEEE 2013 Power Electronics Projects
  • EMBEDDED Projects
    • IEEE Projects 2015 For Embedded Systems
    • IEEE 2013 Embedded Projects
  • Matlab Projects
    • IEEE 2013 Image Processing Projects
    • IEEE 2013 Power Electronics Projects
    • IEEE 2013 Communication Projects
  • NS2 Projects

Phd Projects | IEEE Project | IEEE Projects 2020-19 in Trichy & Chennai

IEEE Projects Trichy, Best IEEE Project Centre Chennai, Final Year Projects in Trichy - We Provide IEEE projects 2018 - 2019 , IEEE 2018 Java Projects for M.E/M.Tech, IEEE 2018 Dot net Projects for B.E/B.Tech, IEEE 2018 Power electronics Projects Engineering & Diploma Students, Matlab, Embedded, NS2 Projects
  • HOME
  • IEEE 2017 DOT NET PROJECT TITLES
  • IEEE 2017 JAVA PROJECT TITLES
  • CONTACT US
You are here: Home / IEEE 2011 PROJECTS / A Multidimensional Sequence Approach to Measuring Tree Similarity

A Multidimensional Sequence Approach to Measuring Tree Similarity

April 10, 2012 by IeeeAdmin

Tree is one of the most common and well-studied data structures in computer science. Measuring the similarity of such structures is key to analyzing this type of data. However, measuring tree similarity is not trivial due to the inherent complexity of trees and the ensuing large search space. Tree kernel, a state of the art similarity measurement of trees, represents trees as vectors in a feature space and measures similarity in this space. When different features are used, different algorithms are required. Tree edit distance is another widely used similarity measurement of trees. It measures similarity through edit operations needed to transform one tree to another. Without any restrictions on edit operations, the computation cost is too high to be applicable to large volume of data. To improve efficiency of tree edit distance, some approximations were introduced into tree edit distance. However, their effectiveness can be compromised. In this paper, a novel approach to measuring tree similarity is presented. Trees are represented as multidimensional sequences and their similarity is measured on the basis of their sequence representations. Multidimensional sequences have their sequential dimensions and spatial dimensions. We measure the sequential similarity by the all common subsequences sequence similarity measurement or the longest common subsequence measurement, and measure the spatial similarity by dynamic time warping. Then we combine them to give a measure of tree similarity. A brute force algorithm to calculate the similarity will have high computational cost. In the spirit of dynamic programming two efficient algorithms are designed for calculating the similarity, which have quadratic time complexity. The new measurements are evaluated in terms of classification accuracy in two popular classifiers (k-nearest neighbor and support vector machine) and in terms of search effectiveness and efficiency in k-nearest neighbor similarity search, using three differ- nt data sets from natural language processing and information retrieval. Experimental results show that the new measurements outperform the benchmark measures consistently and significantly

Filed Under: IEEE 2011 PROJECTS Tagged With: IEEE Projects 2011 Dotnet In Trichy, IEEE Projects 2011 Java In Chennai, IEEE Projects 2011 Java Karur, Tanjore IEEE Projects 2011 Java

Copyright © 2025 · News Pro Theme on Genesis Framework · WordPress · Log in