Incremental Query Processing by Relevance Feedback Using Big-Data Streams
Keywords:
Query Optimiztion using Feedback Processing, Backtracking Process.Abstract
This paper presents about social network in large scale distributed server data storing and retrival process is more complex.There has been an explosive increase in media data,such as images,videos and social media in the internet,mobile devices, and desktops.Engineers and researches are dealing with data sets of petabyte scale in the cloud computing paradigm.Thus, the demand for building a service stack to distribute,manage and process massive data sets has risen drastically.Data collection has become easy due to the rapid development of both mobile devices and wireless networks.During the processing of image queries. Many factor are affecting quality of the retrievel system. Image searching and ranking , indexing are the insufficient factors to affect the quality of image search results. There are many factors which affect the quality of image search results.The learning of the model is from the image output extracts the designed with the evolutionary feedback system to perform the image retrievel by processing the image search query.
References
- D. J. Abadi, D. Carney, U. Cetintemel, et al. Aurora: A New Model and Architecture for Data Stream Management. In VLDB Journal, 12(2):120–139, 2003.
- B. Babcock, S. Babu, M. Datar, R. Motwani, and J. Widom. Models and Issues in Data Stream Systems. In Symposium on Principles ofDatabase Systems (PODS), pages 1–16, 2002.
- O. Benjelloun, A. D. Sarma, A. Halevy, and J. Widom. ULDBs: Databases with Uncertainty and Lineage. In International Confer-ence on Very Large Data Bases (VLDB), pages 953–964, 2006.
- D. Bhagwat, L. Chiticariu, W. C. Tan, and G. Vijayvargiya. An Annotation Management System for Relational Databases. In International Conference on Very Large Data Bases (VLDB), pages 900–911, 2004.
- P. Bhatotia, A. Wieder, R. Rodrigues, U. A. Acar, and R. Pasquin. Incoop: Mapreduce for Incremental Computations. In ACM Sym-posium on Cloud Computing (SoCC), 2011.
- O. Boykin, S. Ritchie, I. O’Connell, and J. Lin Summingbird: A Framework for Integrating Batch and Online MapReduce Compu-tations. In International Conference on Very Large Data Bases (VLDB), pages 1441–1451, 2014.
- D. Chakrabarti, Y. Zhan, and C. Faloutsos. R-MAT: A Recursive Model for Graph Mining. In Fourth SIAM International Conferenceon Data Mining (SDM), pages 442–446, 2004.
- B. Chandramouli, J. Goldstein, M. Barnett, R. DeLine, D. Fisher,
- J. C. Platt, J. F. Terwilliger, J. Wernsing. Trill: A High-Performance Incremental Query Processor for Diverse Analytics. In InternationalConference on Very Large Data Bases (VLDB), pages 401–412, 2014.
- S. Chandrasekaran, O. Cooper, A. Deshpande, M. J. Franklin,
- J. M. Hellerstein, W. Hong, S. Krishnamurthy, S. Madden, V. Ra-man, F. Reiss, and M. Shah. TelegraphCQ: Continuous Data flow Processing for an Uncertain World. In Conference on Innovative DataSystem Research (CIDR), 2003.
- T. Condie, N. Conway, P. Alvaro, J. M. Hellerstein, K. Elmeleegy, and R. Sears. Mapreduce Online. In USENIX Symposium onNetworked Systems Design and Implementation (NSDI), 10(4), 2010.
Downloads
Published
Issue
Section
License
Copyright (c) IJSRCSEIT

This work is licensed under a Creative Commons Attribution 4.0 International License.