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    Computer Science Department, Politehnica University of Bucharest
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    Beyond Traditional NLP: A Distributed Solution for Optimizing Chat Processing - Automatic Chat Assessment Using Tagged Latent Semantic Analysis

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    With the increasing popularity and evolution of Computer Supported Collaborative Learning systems, the need for developing a tool that automatically assesses instant messaging conversations has become imperative. The main reasons are the high volume of data and the increased amount of time spent for manually assessing conversations. We propose an automated analysis system based on Natural Language Processing (centered on Latent Semantic Analysis and Social Network Analysis) and optimize its runtime performance by means of distributed computing. Moreover, we provide a unique grading mechanism based on a multilayered architecture and induce an increase of speedup by deploying a Replicated Worker architecture. Load balancing and fault tolerance represent key aspects of this approach, besides the actual increase in performance.

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    Description

    Title : Beyond Traditional NLP: A Distributed Solution for Optimizing Chat Processing - Automatic Chat Assessment Using Tagged Latent Semantic Analysis
    Author(s) : Mihai Dascalu, Ciprian Dobre, Stefan Trausan-Matu, Valentin Cristea
    Abstract : With the increasing popularity and evolution of Computer Supported Collaborative Learning systems, the need for developing a tool that automatically assesses instant messaging conversations has become imperative. The main reasons are the high volume of data and the increased amount of time spent for manually assessing conversations. We propose an automated analysis system based on Natural Language Processing (centered on Latent Semantic Analysis and Social Network Analysis) and optimize its runtime performance by means of distributed computing. Moreover, we provide a unique grading mechanism based on a multilayered architecture and induce an increase of speedup by deploying a Replicated Worker architecture. Load balancing and fault tolerance represent key aspects of this approach, besides the actual increase in performance.
    Subject : unspecified
    Area : Other
    Language : English
    Year : 2011

    Affiliations Computer Science Department, Politehnica University of Bucharest
    Conference_title : 2011 10th International Symposium on Parallel and Distributed Computing
    Publisher : IEEE
    Pages : 133 - 138
    Url : http://ieeexplore.ieee.org/lpdocs/epic03/wrapper.htm?arnumber=6108265
    Isbn : 978-1-4577-1536-5
    Doi : 10.1109/ISPDC.2011.28

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    Stefan's Peer Evaluation activity

    Downloads 436
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