Abstract:
Plagiarism is known as an unauthorized use of other's contents in writing and ideas in thinking without proper acknowledgment. There are several tools implemented for tex...Show MoreMetadata
Abstract:
Plagiarism is known as an unauthorized use of other's contents in writing and ideas in thinking without proper acknowledgment. There are several tools implemented for text-based plagiarism detection using various methods and techniques. However, these tools become inefficient while handling a large number of datasets due to the process of plagiarism detection which comprises of a lot of computational tasks and large memory requirement. Therefore, when we deal with a large number of datasets, there should be a way to accelerate the process by applying acceleration techniques to optimize the plagiarism detection. In response to this, we have developed a parallel algorithm using Compute Unified Device Architecture (CUDA) and tested it on a Graphics Processing Unit (GPU) platform. An equivalent algorithm is run on CPU platform as well. From the comparison of the results, CPU shows better performance when the number and the size of the documents are small. Meantime, GPU is an effective and efficient platform when handling a large number of documents and high in data size due to the increase in the amount of parallelism. It was found out that for our dataset, the performance of the algorithm on the GPU platform is approximately 6x faster than CPU. Thus, introducing GPU based optimization algorithm to the plagiarism detection gives a real solution while handling a large number of data for inter-document plagiarism detection.
Date of Conference: 18-20 December 2015
Date Added to IEEE Xplore: 04 February 2016
ISBN Information:
MPIE/MoM Acceleration With a General-Purpose Graphics Processing Unit
Danilo De Donno,Alessandra Esposito,Giuseppina Monti,Luciano Tarricone
Speedup of Implementing Fuzzy Neural Networks With High-Dimensional Inputs Through Parallel Processing on Graphic Processing Units
Chia-Feng Juang,Teng-Chang Chen,Wei-Yuan Cheng
Acceleration of the transformation from elliptic omnidirectional images to panoramic images using graphic processing units
Cheng-Hung Lin,Wen-Jui Chou
An Efficient Acceleration of Symmetric Key Cryptography Using General Purpose Graphics Processing Unit
Fan Wu,Chung-han Chen,Hira Narang
Exploiting concurrent kernel execution on graphic processing units
Lingyuan Wang,Miaoqing Huang,Tarek El-Ghazawi
Enhancing the Performance of Conjugate Gradient Solvers on Graphic Processing Units
Maryam Mehri Dehnavi,David M. Fernández,Dennis Giannacopoulos
Near Video-Rate Optical Coherence Elastography by Acceleration With a Graphics Processing Unit
Rodney W. Kirk,Brendan F. Kennedy,David D. Sampson,Robert A. McLaughlin
Graphics-Processing-Unit-Based Acceleration of Electromagnetic Transients Simulation
Jayanta K. Debnath,Aniruddha M. Gole,Wai-Keung Fung
Architecting an LTE base station with graphics processing units
Q. Zheng,Y. Chen,R. Dreslinski,C. Chakrabarti,A. Anastasopoulos,S. Mahlke,T. Mudge
A two-kernel based strategy for performing assembly in FEA on the graphics processing unit
Subhajit Sanfui,Deepak Sharma