An Approach for Summarizing Hindi Text Through a Hybrid Fuzzy Neural Network Algorithm

Text summarization is one of the most discussed topic in the field in information exchange and retrieval. Recently, the need for local language based text summarization methods are increasing. In this paper, a method for text summarization in Hindi language is plotted with help of extraction methods. The proposed approach is uses three major algorithms, fuzzy classifier, neural network and global search optimization (GSO). The fuzzy classifier and neural network are used for generating sentence score. The GSO algorithm is used with the neural network, in order to optimize the weights in the neural network. A hybrid score is generated from fuzzy method and neural network for each input sentences. Finally, based on the hybrid score from fuzzy classifier and neural network, the summary of the given input records are generated. An experimental analysis of the proposed approach will subjected based on the evaluation parameters precision, recall. Later on experimental analysis are conducted on the proposed approach in order to evaluate the performance. According to the experimental analysis, the proposed approach achieved an average precision rate 0.90 and average recall rate of 0.88 for compression rate 20%. The comparative analysis also provided reasonable results to prove the efficiency of the proposed approach.

[1]  Mark T. Maybury,et al.  Advances in Automatic Text Summarization , 1999 .

[2]  Daniel S. Weld Comparative Analysis , 1987, IJCAI.

[3]  Chien Chin Chen,et al.  TSCAN: A Content Anatomy Approach to Temporal Topic Summarization , 2012, IEEE Transactions on Knowledge and Data Engineering.

[4]  Noémie Elhadad User-Sensitive Text Summarization , 2004, AAAI.

[5]  R. Mahesh K. Sinha Learning Disambiguation of Hindi Morpheme "vaalaa' with a Sparse Corpus , 2009, 2009 International Conference on Machine Learning and Applications.

[6]  Fuji Ren,et al.  GA, MR, FFNN, PNN and GMM based models for automatic text summarization , 2009, Comput. Speech Lang..

[7]  Xin Liu,et al.  Generic text summarization using relevance measure and latent semantic analysis , 2001, SIGIR '01.

[8]  Hyoil Han,et al.  The use of domain-specific concepts in biomedical text summarization , 2007, Inf. Process. Manag..

[9]  T. Martin McGinnity,et al.  A Context-Based Word Indexing Model for Document Summarization , 2013, IEEE Transactions on Knowledge and Data Engineering.

[10]  Pablo Gervás,et al.  Evaluation of a System for Personalized Summarization of Web Contents , 2005, User Modeling.

[11]  Q. Henry Wu,et al.  Group Search Optimizer: An Optimization Algorithm Inspired by Animal Searching Behavior , 2009, IEEE Transactions on Evolutionary Computation.

[12]  Pablo Gervás,et al.  User-model based personalized summarization , 2007, Inf. Process. Manag..

[13]  George D. C. Cavalcanti,et al.  Assessing sentence scoring techniques for extractive text summarization , 2013, Expert Syst. Appl..

[14]  Ramiz M. Aliguliyev,et al.  A new sentence similarity measure and sentence based extractive technique for automatic text summarization , 2009, Expert Syst. Appl..

[15]  Naomie Salim,et al.  Fuzzy swarm diversity hybrid model for text summarization , 2010, Inf. Process. Manag..

[16]  Eugene Santos,et al.  Evaluation of the Impact of User-Cognitive Styles on the Assessment of Text Summarization , 2011, IEEE Transactions on Systems, Man, and Cybernetics - Part A: Systems and Humans.

[17]  Youngjoong Ko,et al.  An effective sentence-extraction technique using contextual information and statistical approaches for text summarization , 2008, Pattern Recognition Letters.

[18]  Han Tong Loh,et al.  Gather customer concerns from online product reviews - A text summarization approach , 2009, Expert Syst. Appl..

[19]  Gerard Salton,et al.  Research and Development in Information Retrieval , 1982, Lecture Notes in Computer Science.

[20]  Xiaojun Wan,et al.  Exploiting neighborhood knowledge for single document summarization and keyphrase extraction , 2010, TOIS.

[21]  Rasim M. Alguliyev,et al.  MCMR: Maximum coverage and minimum redundant text summarization model , 2011, Expert Syst. Appl..

[22]  Dragomir R. Radev,et al.  Centroid-based summarization of multiple documents , 2004, Inf. Process. Manag..

[23]  Christos Bouras,et al.  Noun retrieval effect on text summarization and delivery of personalized news articles to the user's desktop , 2010, Data Knowl. Eng..