Virtual Machine Placement using Interactive Artificial Bee Colony Algorithm(VMPIABC)
Research Paper | Journal Paper
Vol.9 , Issue.10 , pp.1-6, Oct-2021
CrossRef-DOI: https://doi.org/10.26438/ijcse/v9i10.16
Abstract
As cloud computing is becoming part of our life day by day, it has attracted research community to tackle the research problems of cloud computing environment. Virtual machine placement is a brewing area for cloud researchers so in the proposed model virtual machine placement problem is modelled as an optimization problem with the objective of resource wastage. As huge resource wastage can affect the cloud service provider so, an virtual machine placement algorithm based on interactive artificial bee colony was proposed. The performance of the proposed method is thoroughly compared with other competing algorithms through exhaustive experiments and results are presented.
Key-Words / Index Term
Virtual Machine, Cloud Computing, Artificial Bee Colony, Resource Wastage, Optimization
References
[1] A. Tripathi, “Task Allocation on Cloud Resources using Analytic Network Process,” pp. 971–978, 2015.
[2] A. Tripathi, I. Pathak, and D. Prakash, “Modified Dragonfly Algorithm for Optimal Virtual Machine Placement in Cloud Computing,” pp. 1316-1342, 2020
[3] S. Azizi, M. Shojafar, and S. Member, “GRVMP?: A Greedy Randomized Algorithm for Virtual Machine Placement in Cloud Data Centers,” pp. 1–12, 2020.
[4] W. Zhang, X. Chen, and J. Jiang, “A Multi-Objective Optimization Method of Initial Virtual Machine Fault-Tolerant Placement for Star Topological Data Centers of Cloud Systems,” vol. 26, no. 1, pp. 95–111, 2021.
[5] X. Fu and C. Zhou, “Predicted Affinity Based Virtual Machine Placement in Cloud Computing Environments,” IEEE Trans. Cloud Comput., vol. 8, no. 1, pp. 246–255, 2020.
[6] M. Ghetas, “A multi-objective Monarch Butterfly Algorithm for virtual machine placement in cloud computing,” Neural Comput. Appl., vol. 33, no. 17, pp. 11011–11025, 2021.
[7] S. Gharehpasha, M. Masdari, and A. Jafarian, "Virtual machine placement in cloud data centers using a hybrid multi-verse optimization algorithm," vol. 54, no. 3. Springer Netherlands, 2021.
[8] D. Alboaneen, H. Tianfield, Y. Zhang, and B. Pranggono, “A metaheuristic method for joint task scheduling and virtual machine placement in cloud data centers,” Futur. Gener. Comput. Syst., vol. 115, pp. 201–212, 2021.
[9] B. Zhang, X. Wang, and H. Wang, “Virtual machine placement strategy using cluster-based genetic algorithm,” Neurocomputing, vol. 428, pp. 310–316, 2021.
[10] Shalu and D. Singh, “Artificial neural network-based virtual machine allocation in cloud computing,” pp. 1-12, 2021.
[11] K. M. B. S. V. Bhanu, “A multi-objective krill herd algorithm for virtual machine placement in cloud computing,” vol. 76, no. 6, pp. 4525-4542, 2018.
[12] A. Ponraj, “Optimistic Virtual Machine Placement in Cloud Data Centers using Queuing Approach,” vol. 93, pp. 338-344, 2018.
[13] W. Yao, Y. Shen, and D. Wang, “A Weighted PageRank-Based Algorithm for Virtual Machine Placement in Cloud Computing,” IEEE Access, vol. 7, pp. 176369–176381, 2019.
[14] Z. Zhou, M. Shojafar, M. Alazab, J. Abawajy, and F. Li, “AFED-EF: An Energy-Efficient VM Allocation Algorithm for IoT Applications in a Cloud Data Center,” IEEE Trans. Green Commun. Netw., vol. 5, no. 2, pp. 658–669, 2021.
[15] X. Yu, W. Chen, and X. Zhang, “An Artificial Bee Colony Algorithm for Solving Constrained Optimization Problems,” Proc. 2018 2nd IEEE Adv. Inf. Manag. Commun. Electron. Autom. Control Conf. IMCEC 2018, pp. 2663–2666, 2018.
[16] I. Pathak and D. P. Vidyarthi, “An Interactive Artificial Bee Colony based Virtual Network Embedding,” pp. 1-6, 2015.
[17] P. W. Tsai, M. K. Khan, J. S. Pan, and B. Y. Liao, “Interactive artificial bee colony supported passive continuous authentication system,” IEEE Syst. J., vol. 8, no. 2, pp. 395–405, 2014.
[18] A. Tripathi, I. Pathak, and D. P. Vidyarthi, “Energy Efficient VM Placement for Effective Resource Utilization using Modified Binary PSO,” Comput. J., vol. 61, no. 6, pp. 832–846, 2018.
Citation
Shubham Kumar, Atul Tripathi, "Virtual Machine Placement using Interactive Artificial Bee Colony Algorithm(VMPIABC)," International Journal of Computer Sciences and Engineering, Vol.9, Issue.10, pp.1-6, 2021.
Application of Selected MCDM Methods for Developing a Multi-Functional Framework for Eco-Hotel Planning in Yemen
Research Paper | Journal Paper
Vol.9 , Issue.10 , pp.7-18, Oct-2021
CrossRef-DOI: https://doi.org/10.26438/ijcse/v9i10.718
Abstract
This study aims to develop a multi-criteria decision-making (MCDM) based framework for evaluation, ranking and structured comparison of the sustainability practices in the Yemeni hotels. To achieve this goal, the performance criteria of green hotels ranking and classification problems with the Yemeni context are discussed, some possible applications of MCDM technics are illustrated, three most common approaches (AHP, Fuzzy AHP, and FDM) were selected, and implemented for ranking and classification of the eco-hotels performance criteria, a case study on the impact of their application on a ranking and classification decisions was conducted, three possible multi-functional frameworks were obtained. The required consistency and criteria acceptability tests for each implemented method were examined. The sensitivity analysis, total number of the position`s shifts of the ranked criteria, the overall level of change in them, and the Pearson coefficient are used to compare the results obtained by all methods, and to select the best and less sensitive evaluation framework. The result shows that different variants of MCDM methods leads to the same classification’s and different ranking`s result. A Very high level of numerical correlation coefficients, low degree of sensitivity and very small change level in the positions of the ranked criteria were observed between results defined by the Fuzzy AHP method and those which were obtained by the AHP and FDM methods. Accordingly, a new more accurate, and more relevant to the Yemeni reality fuzzy based and multi-functional framework was developed. Study suggests the application of this framework for further sustainable planning practices in Yemen.
Key-Words / Index Term
MCDM, Comparative analysis, Eco-hotels, Sustainability, Prioritization, Green hotels, AHP, F-AHP, FDM
References
[1] EU Million, “OECD Tourism Trends and Policies”, 2020.
[2] F Habibi, M Rahmati, and A Karimi, “Contribution of tourism to economic growth in Iran`s Provinces: GDM approach”, Future Business Journal, Vol.4, Issue.2, pp.261-271, 2018.
[3] M Marmion and A Hindley , “ Tourism and Health: Understanding the Relationship”, Good Health and Well-Being. pp.738-746, 2019.
[4] D. R. Medina-Muñoz, R. D. Medina-Muñoz, and F. J. Gutiérrez-Pérez, “The impacts of tourism on poverty alleviation: an integrated research framework,” Journal of Sustainable Tourism, Vol.. 24, Issue. 2, pp. 270–298, Oct. 2015.
[5] S. Lee and T. Jamal, “Environmental Justice and Environmental Equity in Tourism: Missing Links to Sustainability,” Journal of Ecotourism, Vol.. 7, Issue. 1, pp. 44–67, 2008.
[6] M Futagami. , “Global Sustainable Tourism Standards and Certification Schemes: How Transnational Private Meta-Governance Operates at the Destination Level”, 2019.
[7] M. A. Marhraoui and A. El Manouar, “IT Innovation and Firm’s Sustainable Performance: The Intermediary Role of Organizational Agility – An Empirical Study,” International Journal of Information Engineering and Electronic Business, Vol.l. 10, Issue. 3, pp. 1–7, 2018.
[8] D. Xia and F. Wu, “Towards More Sustainability: A Dynamic Recycling Framework of Discarded Products Based on SD Theory,” International Journal of Intelligent Systems and Applications, Vol. 3, Issue. 1, pp. 43–50, 2011.
[9] J. A. Stone, “A Sustainability Theme for Introductory Programming Courses,” International Journal of Modern Education and Computer Science, Vol. 11, Issue. 2, pp. 1–8, 2019.
[10] T. Wu and J. Guan, “Analysis on Financial Policy of Enterprise and Sustainable Growth,” International Journal of Engineering and Manufacturing, Vol. 2, Issue. 5, pp. 78–82, 2012.
[11] W. Zeng, K. Wang, and Y. Jia, “An Empirical Study on Determinants of Sustainable Development of Coastal Eco-tourism,” International Journal of Education and Management Engineering, Vol. 2, Issue. 6, pp. 34–40, 2012.
[12] A. A. Nasser, A. A. Alkhulaidi, M. N. Ali, M. Hankal, and Al-olofe M., “A Weighted Euclidean Distance - Statistical Variance Procedure based Approach for Improving The Healthcare Decision Making System In Yemen,” Indian Journal of Science and Technology, Vol. 12, Issue. 3, pp. 1–15, 2019.
[13] F. Buffa, M. Franch, and D. Rizio, “Environmental management practices for sustainable business models in small and medium sized hotel enterprises,” Journal of Cleaner Production, Vol. 194, pp. 656–664, 2018.
[14] A. H. Abdou, T. H. Hassan, and M. M. El Dief, “A Description of Green Hotel Practices and Their Role in Achieving Sustainable Development,” Sustainability, Vol. 12, Issue. 22, p. 9624, 2020.
[15] S. Asadi, S. OmSalameh Pourhashemi, M. Nilashi, R. Abdullah, S. Samad, E. Yadegaridehkordi, N. Aljojo, and N. S. Razali, “Investigating influence of green innovation on sustainability performance: A case on Malaysian hotel industry,” Journal of Cleaner Production, Vol. 258, p. 120860, Jun. 2020.
[16] H. Han, J. Yu, J.-S. Lee, and W. Kim, “Impact of hotels’ sustainability practices on guest attitudinal loyalty: application of loyalty chain stages theory,” Journal of Hospitality Marketing & Management, Vol. 28, Issue. 8, pp. 905–925, 2019.
[17] P. Jones, D. Hillier, and D. Comfort, “Sustainability in the global hotel industry,” International Journal of Contemporary Hospitality Management, Vol. 26, Issue. 1, pp. 5–17, Feb. 2014.
[18] I. Falqi, S. Alsulamy, and M. Mansour, “Environmental Performance Evaluation and Analysis Using ISO 14031 Guidelines in Construction Sector Industries,” Sustainability, Vol. 12, Issue. 5, p. 1774, Feb. 2020.
[19] P. Morone, “Sustainability Transition towards a Biobased Economy: Defining, Measuring and Assessing,” Sustainability, Vol. 10, Issue. 8, p. 2631, Jul. 2018.
[20] P. Yi, W. Li, and D. Zhang, “Assessment of City Sustainability Using MCDM with Interdependent Criteria Weight,” Sustainability, Vol. 11, Issue. 6, p. 1632, Mar. 2019
[21] P. Chowdhury and S. K. Paul, “Applications of MCDM methods in research on corporate sustainability,” Management of Environmental Quality: An International Journal, Vol. 31, Issue. 2, pp. 385–405, Feb. 2020.
[22] A. Alameeri, M. M. Ajmal, M. Hussain, and P. Helo, “Sustainable management practices in UAE hotels,” International Journal of Culture, Tourism and Hospitality Research, Vol. 12, Issue. 4, pp. 440–466, Oct. 2018.
[23] A. S. A. Alghawli, A. A. Nasser, and M. N. Aljober, “A Fuzzy MCDM Approach for Structured Comparison of the Health Literacy Level of Hospitals,” International Journal of Advanced Computer Science and Applications, Vol. 12, Issue. 7, 2021
[24] Adel A Nasser, Abdualmajed Al-Khulaidi and Mijahed N. Aljober, “ Measuring the Information Security Maturity of Enterprises under Uncertainty Using Fuzzy AHP,” International Journal of Information Technology and Computer Science(IJITCS), Vol. 10, pp. 10-25, 2018.
[25] F. Deraman, N. Ismail, A. I. M. Arifin and M. I. A. Mostafa, “ Green practices in hotel industry: Factors influencing the implementation,” Journal of Tourism, Hospitality & Culinary Arts (JTHCA), vol 9, pp 1-12, 2017.
[26] S. Hashemkhani Zolfani, M. Pourhossein, M. Yazdani, and E. Kazimieras Zavadskas, “Evaluating construction projects of hotels based on environmental sustainability with MCDM framework,” Alexandria Engineering Journal, Vol. 57, Issue. 1, pp. 357–365, Mar. 2018.
[27] M Wickham, L French and T Wong, “Marriott`s strategic sustainability priorities in the Chinese hotel industry,” International Journal of Sustainable Strategic Management, vol 8, no 1, p 77- 97, 2020;
[28] R. Mosadeghi, J. Warnken, R. Tomlinson, and H. Mirfenderesk, “Comparison of Fuzzy-AHP and AHP in a spatial multi-criteria decision making model for urban land-use planning,” Computers, Environment and Urban Systems, Vol. 49, pp. 54–65, Jan. 2015.
[29] J. S. Horng, C. H. Liu, S. F. Chou, C. Y. Tsai and Y. C. Chung, “From innovation to sustainability: Sustainability innovations of eco-friendly hotels in Taiwan,” International Journal of Hospitality Management, vol 63, pp 44-52, 2017.
[30] P. M. Melé, J. M. Gómez, and M. J. Sousa, “Influence of sustainability practices and green image on the re-visit intention of small and medium-size towns,” Sustainability, vol 12, no 3, p 930, 2020.
[31] V. K. Verma and B. Chandra, “ An application of theory of planned behavior to predict young Indian consumers` green hotel visit intention,” Journal of Cleaner Production, vol 172, pp. 1152-1162, 2018
[32] A. A. Nasser, A. A. Alkhulaidi, M. N. Ali, M. Hankal, and Al-olofe M., “A Study on the impact of multiple methods of the data normalization on the result of SAW, WED and TOPSIS ordering in Healthcare Multi-attributtes Decision Making Systems based on EW, ENTROPY, CRITIC and SVP weighting approaches,” Indian Journal of Science and Technology, Vol. 12, Issue. 4, pp. 1–21, Jan. 2019..
[33] A. A., A. A. Alkhulaidi, M. N. Ali, M. Hankal, and Al-olofe M., “A Weighted Euclidean Distance - Statistical Variance Procedure based Approach for Improving The Healthcare Decision Making System In Yemen,” Indian Journal of Science and Technology, Vol. 12, Issue. 3, pp. 1–15, Jan. 2019.
[34] T. L. Saaty, “Optimization by the Analytic Hierarchy Process,” Jan. 1979
[35] F. Talib, S. K Josaiman, and M. N. Faisal, “An integrated AHP and ISO14000, ISO26000 based approach for improving sustainability in supply chains,” International Journal of Quality & Reliability Management, Vol. 38, Issue. 6, pp. 1301–1327, Nov. 2020.
[36] Y.-M. Teng, K.-S. Wu, and M.-J. Wang, “Using the Analytic Hierarchy Process (AHP) and Delphi Analysis to Evaluate Key Factors in the Development of the Taiwan Cruise Tourism Industry,” Journal of Coastal Research, Vol. 36, Issue. 4, p. 828, Feb. 2020.
[37] J. H. Kim , “Developing an evaluation index (SCTEI) for slow city tourism: a Delphi-AHP approach, ,”. Dissertation, Hong Kong Polytechnic University, 2020.
[38] M. NAJAFINASAB, L. AGHELI, H. SADEGHI, and S. FARAJI DIZAJI, “Identifying and Prioritizing Strategies for Developing Medical Tourism in the Social Security Organization of Iran: A SWOT-AHP Hybrid Approach,” Iranian Journal of Public Health, Nov. 2020.
[39] R. Goral, “Prioritizing the Factors Which Affect the Selection of Hotels by Consumers Traveling for Vacation with Analytical Hierarchy Process (AHP) Method,” Journal of Tourism Management Research, Vol. 7, Issue. 1, pp. 11–31, 2020.
[40] Syed Saif Ahmad Abidi, Mohd. Faizan Farooqui, A.A Zilli, "Software Dependability Estimation: Implementation through Fuzzy AHP", International Journal of Computer Sciences and Engineering, Vol.7, Issue.4, pp.1-8, 2019.
[41] S. Pavani, R. Shukla, "Cloud Service Selection Using Integrated Approach Of Fuzzy AHP And Fuzzy Topsis", International Journal of Computer Sciences and Engineering, Vol.07, Special Issue.03, pp.48-54, 2019.
[42] R. Baki, “Evaluating hotel websites through the use of fuzzy AHP and fuzzy TOPSIS,” International Journal of Contemporary Hospitality Management, Vol. 32, Issue. 12, pp. 3747–3765, Nov. 2020.
[43] Y.-C. Chen, T.-H. Yu, P.-L. Tsui, and C.-S. Lee, “Erratum to: A fuzzy AHP approach to construct international hotel spa atmosphere evaluation model,” Quality & Quantity, Vol. 48, Issue. 4, pp. 2371–2371, May 2014.
[44] Y. He, “Research on the evaluation of hotel operation risk in mountain scenic resorts based on AHP and fuzzy comprehensive evaluation,” Risk Analysis Based on Data and Crisis Response Beyond Knowledge, pp. 382–389, Oct. 2019.
[45] A. Ishizaka, “Comparison of fuzzy logic, AHP, FAHP and hybrid fuzzy AHP for new supplier selection and its performance analysis,” International Journal of Integrated Supply Management, Vol. 9, Issue. 1/2, p. 1, 2014.
[46] ?. Ertu?rul and N. Karaka?o?lu, “Comparison of fuzzy AHP and fuzzy TOPSIS methods for facility location selection,” The International Journal of Advanced Manufacturing Technology, Vol. 39, Issue. 7–8, pp. 783–795, Oct. 2007.
[47] M. Moayeri, A. Shahvarani, M. H. Behzadi, and F. Hosseinzadeh-Lotfi, “Comparison of Fuzzy AHP and Fuzzy TOPSIS Methods for Math Teachers Selection,” Indian Journal of Science and Technology, Vol. 8, Issue. 13, Jul. 2015.
[48] V. Šoltés and B. Gavurová, “The functionality comparison of the health care systems by the analytical hierarchy process method,” E+M Ekonomie a Management, Vol. 17, Issue. 3, pp. 100–117, Sep. 2014.
[49] D.-Y. Chang, “Applications of the extent analysis method on fuzzy AHP,” European Journal of Operational Research, Vol. 95, Issue. 3, pp. 649–655, Dec. 1996.
[50] J. Martin Bland and D. Altman, “Statistical methods for assessing agreement between two methods of clinical measurement,” The Lancet, Vol. 327, Issue. 8476, pp. 307–310, Feb. 1986.
[51] J. M. Bland and D. G. Altman, “Measuring agreement in method comparison studies,” Statistical Methods in Medical Research, Vol. 8, Issue. 2, pp. 135–160, Jun. 1999.
Citation
Adel A. Nasser, M.M. Saeed, Mijahed N. Aljober, "Application of Selected MCDM Methods for Developing a Multi-Functional Framework for Eco-Hotel Planning in Yemen," International Journal of Computer Sciences and Engineering, Vol.9, Issue.10, pp.7-18, 2021.
Query Processing In Text Mining
Research Paper | Journal Paper
Vol.9 , Issue.10 , pp.19-23, Oct-2021
Abstract
Companies often use relational database management systems (RDBMS) such as Oracle and Inform mix, to store their data persistently. The database technology developed and deployed in RDBMS is relatively mature. Besides efficient storage and retrieval, this technology provides many additional features such as concurrency control, recoverability, and high availability. Thirdly, the rigid structure of relational data makes it amenable to complex queries and analysis such as on-line analytical processing (OLAP), the predecessor of data mining. There are many different techniques and algorithms for relational data that can be classified as data mining. There are roughly four broad classes i.e. clustering, classification, sequence analysis, and associations. We consider data mining for structured data from a database perspective. As a consequence in association rules will be featured more prominently than the other three classes of mining problems. Query flocks are an elegant framework for a large class of data mining problems over relational data. The main features of query flocks are declarative formulation of a large class of mining queries. Systematic optimization and processing of such queries Integration with relational DBMS, taking full advantage of existing capabilities. This paper focus mainly on the declarative formulation of mining problems as query flocks.
Key-Words / Index Term
RDBMS, Clustering, Query flocks, Query Optimization, Relational data, Classification, Clustering, sequence Analysis
References
[1]. R. Agrawal, T. Imilienski, and A. Swami. “Mining association rules between sets of items in large databases” in the Proceedings of ACM SIGMOD International Conference on Management of Data, pages 207{216, May 1993.
[2]. S. Brin, R. Motwani, D. Tsur, and J. Ullman. “Dynamic itemset counting and implication rules for market basket data.” in the Proceedings of ACM SIGMOD International Conference on Management of Data, pages 255{264, Tucson,Arizona, June 1997.
[3]. R. Srikant and R. Agrawal. “Fast algorithms for mining association rules” in the Proceedings of the 21th International Conference on Very Large Data Bases, pages 407{419, Zurich, Switzerland, September 1995.
[4]. E. Han, G. Karypis, and V. Kumar “Scalable parallel data mining for association rules” in the Proceedings of ACM SIGMOD International Conference on Management of Data, pages 277{288, Tucson, Arizona, June 1997.
[5]. D. W. Cheung, J. Han, V. Ng, and C. Y. Wong. “Maintenance of discovered association rules in large databases: An incremental updating technique” in the Proceedings of ICDE, pages 106{114, New Orleans, Louisiana, February 1996.
[6]. R. Motwani, E. Cohen, M. Datar, S. Fujiware, A. Gionis, P. Indyk, J. Ullman, and C. Yang, “ Finding interesting associations without support pruning”In Proceedings of ICDE, San Diego, California, March 2000.
[7]. S. Fujiware, R. Motwani, and J. Ullman " Dynamic miss-counting algorithms: Finding Implication and similarity rules with con dence pruning”, in the Proceed-ings of ICDE, San Diego, California, March 2000.
[8]. H. Mannila “Methods and problems in data mining” in the Proceedings of International Conference on Database Theory, pages 41{55, Delphi, Greece, January 1997.
[9]. R. Ng, L. Lakshmanan, J. Han, and A. Pang. “Exploratory mining and pruning optimizations of constrained associations rules” in the Proceedings of ACM SIG-MOD International Conference on Management of Data, pages 13{24, Seattle,Washington, June 1998.
[10]. A. Chandra and P. Merlin “Optimal implementation of conjunctive queries in relational databases” in the Proceedings of 9th Annual ACM Symposium on the Theory of Computing, pages 77{90, Boulder, Colorado, May 1977.
[11]. J.D. Ullman “Principles of Database and Knowledge-Base Systems” in Volume I - Fundamental Concepts. Computer Science Press, Rockville, Maryland, 1988.
[12]. J.D. Ullman and J. Widom. A First Course in Database Systems. Addison Wesley, Reading, Massachusetts, 1997.
[13]. B. Wang, S. Yu, W. Lou, and Y. T. Hou, “Privacy-preserving multi keyword fuzzy search over encrypted data in the cloud,” in IEEE INFOCOM, 2014.
[14]. V.Kaltsa, K. Avgerinakis, A. Briassouli, I. Kompatsiaris and M. Strintzis, "Dynamic texture recognition and localization in machine vision for outdoor environments," Computers in Industry, vol. 98, 2018.
Citation
N. BhanuPrakash, E. Kesavulu Reddy, "Query Processing In Text Mining," International Journal of Computer Sciences and Engineering, Vol.9, Issue.10, pp.19-23, 2021.
Judgment Robotically Mining Facets for Requests from Their Exploration Consequences
Research Paper | Journal Paper
Vol.9 , Issue.10 , pp.24-27, Oct-2021
CrossRef-DOI: https://doi.org/10.26438/ijcse/v9i10.2427
Abstract
Web look inquiries are regularly questionable or multi-faceted, which makes a straightforward positioned rundown of results deficient. To help data finding for such faceted inquiries, we investigate a system that unequivocally speaks to intriguing aspects of an inquiry utilizing gatherings of semantically related terms separated from list items. For instance, for the inquiry "stuff remittance", these gatherings may be distinctive aircrafts, diverse flight types (household, global), or diverse travel classes (first, business, economy). We name these gatherings inquiry aspects and the terms in these gatherings feature terms. We build up a regulated methodology dependent on a graphical model to perceive inquiry features from the boisterous hopefuls found. The graphical model figures out how likely a competitor term is to be a feature term just as how likely two terms are to be assembled together in a question aspect, and catches the conditions between the two elements. We propose two calculations for estimated surmising on the graphical model since correct derivation is immovable. Our assessment consolidates review and exactness of the aspect terms with the gathering quality. Trial results on an example of web questions demonstrate that the directed technique fundamentally beats existing methodologies, which are generally unsupervised, proposing that inquiry feature extraction can be adequately learned.
Key-Words / Index Term
Query, Facet, Faceted Search, Query Suggestion, Query Reformulation, Query Summarization
References
[1] .E. Stoica and M. A. Hearst, “Nearly-automated metadata hierarchy creation,” in HLT-NAACL 2004: Short Papers, pp. 117–120, 2004.
[2]. O. Ben-Yitzhak, N. Golbandi, N. Har’El, R. Lempel, A. Neumann,S. Ofek-Koifman, D. Sheinwald, E. Shekita, B. Sznajder, and S.Yogev, “Beyond basic faceted search,” in Proc. Int. Conf. Web Search Data Mining, pp. 33–44, 2008.
[3]. M. Diao, S. Mukherjea, N. Rajput, and K. Srivastava, “Faceted search and browsing of audio content on spoken web,” in Proc.19th ACM Int. Conf. Inf. Knowl. Manage., pp. 1029–1038, 2010.
[4]. D. Dash, J. Rao, N. Megiddo, A. Ailamaki, and G. Lohman, “Dynamic faceted search for discovery-driven analysis,” in ACM Int. Conf. Inf. Knowl. Manage., pp. 3–12, 2008.
[5]. M. J. Cafarella, A. Halevy, D. Z. Wang, E. Wu, and Y. Zhang. “Web tables: exploring the power of tables on the web,” VLDB, :538–549, August 2008.
[6]. T. Cheng, X. Yan, and K. C.-C. Chang. “Supporting entity search a large-scale prototype search engine,” In Proceedings of SIGMOD ’07, pages 1144–1146, 2007.
[7]. H. Zhang, M. Zhu, S. Shi, and J.-R. Wen,” Employing topic models for pattern-based semantic class discovery,” In Proceedings of ACL-IJCNLP ’09, 2009.
[8] Y. Hu, Y. Qian, H. Li, D. Jiang, J. Pei, and Q. Zheng, “Mining query subtopics from search log data”, In Proceedings of SIGIR ’ 12, pages 305–314, 2012.
[9]. Weize Kong ,“Extending Faceted Search to the Open-Domain Web”, ACM SIGIR Forum Vol. 50 No. 1 June 2016.
[10]. L. Bing, W. Lam, T.-L. Wong, and S. Jameel, “Web query reformulation via joint modeling of latent topic dependency and term con- text,” ACM Trans. Inf. Syst., vol. 33, no. 2, pp. 6:1– 6:38, eb. 2015.
[11]. R. Baeza-Yates, C. Hurtado, and M. Mendoza, “Query recommendation uses query logs in search engines,” in Proc. Int. Conf. Cur- rent Trends Database Technol., pp. 588–596, 2004.
[12].I. Szpektor, A. Gionis, and Y. Maarek, “Improving recommendation for long-tail queries via templates,” in Proc. 20th Int.Conf. World Wide Web, pp. 47–56, 2011.
[13]. L. Li, L. Zhong, Z. Yang, and M. Kitsuregawa, “Qubic: An adaptive approach to query-based recommendation,” J. Intell Inf. Syst., vol. 40, no. 3, pp. 555–587, Jun. 2013.
[14]. Z. Zhang and O. Nasraoui, “Mining search engine query logs for query recommendation,” in Proc. 15th Int. Conf. World Wide Web, pp. 1039–1040, 2006.
[15]. Zhicheng Dou, Zhengbao Jiang, Sha Hu, Ji-Rong Wen, and Ruihua Song,” Automatically Mining Facets for Queries from Their Search Results”, IEEE Transactions On Knowledge And Data Engineering, Vol. 28, No. 2, February 2016.
[16]. Pratiksha Gopale, Prof. Bhagwan Kurhe,” Survey on Search Result Based Mining Facet for Queries,” International Journal of Innovative Research in Computer and Communication Engineering, Vol. 5, Issue1, January 2017.
[17]. Sunita Sarawagi, Shiby Thomas, Rakesh Agrawal,” integrating Association rule mining with relational database systems, Proceedings of the 1998 ACM SIGMOD International conference on Management of data, Volume 27 Issue 2.
[18] D. Mirela, G.Stefan, T. PentiucIolanda. Mining Association Rules Inside a Relational Database – A Case Study. The Sixth International Multi-Conference on Computing in the Global Information Technology (ICCGI 2011). June 19-24, 2011 Luxembourg.14-19.
Citation
N. Bhanu Prakash, E. Kesavulu Reddy, "Judgment Robotically Mining Facets for Requests from Their Exploration Consequences," International Journal of Computer Sciences and Engineering, Vol.9, Issue.10, pp.24-27, 2021.
Effective Image Pre-Processing Techniques with Deep Learning for Leukemia Detection
Research Paper | Journal Paper
Vol.9 , Issue.10 , pp.28-36, Oct-2021
CrossRef-DOI: https://doi.org/10.26438/ijcse/v9i10.2836
Abstract
Leukemia is a cancerous disease characterised by an uncontrollable development of abnormal White Blood Cells (WBC). The identification of acute leukaemia is based on the percentage of WBC in the peripheral blood. In practice, the manual microscopic examination methods are used for acute leukemia detection. Despite the use of hardware autofocus mechanisms, large image collections acquired by automated microscopes often contain some fraction of low quality, out-of-focus images. More complicated cell morphology, with a wide range of size, border, position, and colour contrast were also obtained. Moreover, when the images are captured, the contrast between the cell border and the background in peripheral blood smears is influenced by the lighting position, and the effects of unwanted noise on blood leukemia images can results .in inaccurate diagnosis. So, an efficient pre-processing method is required to highlights the edges of nuclei. This paper describes in detail about the proposed Image Pre-Processing Techniques with Deep Learning Method for Detecting Leukemia in Microscopic Blood Images. This automated system will detect leukemia cells from the blood cancer affected patient’s collected blood sample. The image processing techniques used for the diagnosis include optimized contrast stretching (OCS) to enhance the image and detect the nuclei, also the k-means clustering algorithm for nuclei segmentation. A features extraction based on geometry, colour, texture, and statistics information are extracted, as well as fuzzy rule based decision system are performed to get better results of leukemia detection.
Key-Words / Index Term
Leukemia, microscopic examination, Deep Learning method, contrasts stretching, k-means clustering
References
[1]. Dharani, T., & Hariprasath, S, “Diagnosis of Leukemia and its types Using Digital Image Processing Techniques”, 3rd International Conference on Communication and Electronics Systems (ICCES) . IEEE, pp. 275-279, 2018 October.
[2]. Van Maele-Fabry, G., Lantin, A. C., Hoet, P., & Lison, D, “Childhood leukaemia and parental occupational exposure to pesticides: a systematic review and meta-analysis”, Cancer Causes & Control, 21(6), 787-809, 2010.
[3]. Agaian, S., Madhukar, M., & Chronopoulos, A. T. “Automated screening system for acute myelogenous leukemia detection in blood microscopic images”, IEEE Systems journal, 8(3), 995-1004, 2014.
[4]. Haidekker, M. “Advanced biomedical image analysis”, John Wiley & Sons, 2010.
[5]. Kazemi, F., Najafabadi, T. A., & Araabi, B. N, “Automatic recognition of acute myelogenous leukemia in blood microscopic images using k-means clustering and support vector machine”, Journal of medical signals and sensors, 6(3), 183, 2016.
[6]. Kumar, S., Mishra, S., & Asthana, P, “Automated detection of acute leukemia using k-mean clustering algorithm”, Advances in Computer and Computational Sciences. Springer, Singapore, pp. 655-670, 2018.
[7]. Vogado, L. H., Veras, R. M., Araujo, F. H., Silva, R. R., & Aires, K. R, “Leukemia diagnosis in blood slides using transfer learning in CNNs and SVM for classification”, Engineering Applications of Artificial Intelligence, 72, 415-422, 2018.
[8]. Negm, A. S., Hassan, O. A., & Kandil, A. H, “A decision support system for Acute Leukaemia classification based on digital microscopic images”, Alexandria engineering journal, 57(4), 2319-2332, 2018.
[9]. Salem, N., Sobhy, N. M., & El Dosoky, M, “A comparative study of white blood cells segmentation using Otsu threshold and watershed transformation”, Journal of Biomedical Engineering and Medical Imaging, 3(3), 15-15, 2016.
[10]. Li, Y., Zhu, R., Mi, L., Cao, Y., & Yao, D, “Segmentation of white blood cell from acute lymphoblastic leukemia images using dual-threshold method”, Computational and mathematical methods in medicine, 2016.
[11]. Choudhary, R. R., Sharma, S., & Meena, G, “Detection of Leukemia in Human Blood Samples through Image Processing”, International Conference on Next Generation Computing Technologies. Springer, Singapore, pp. 824-834, 2017 October.
[12]. Mishra, S., Majhi, B., Sa, P. K., & Sharma, L, “Gray level co-occurrence matrix and random forest based acute lymphoblastic leukemia detection”, Biomedical Signal Processing and Control, 33, 272-280, 2017.
[13]. https://www.kaggle.com/paultimothymooney/blood-cells.
[14]. Chitade, A. Z., & Katiyar, S. K., “Colour based image segmentation using k-means clustering”, International Journal of Engineering Science and Technology, 2(10), 5319-5325, 2010.
[15]. Sassi, O. B., Sellami, L., Slima, M. B., Chtourou, K., & Hamida, A. B, “Improved spatial gray level dependence matrices for texture analysis”, International Journal of Computer Science & Information Technology, 4(6), 209, 2012.
[16]. Anuradha, K. “Statistical feature extraction to classify oral cancers”, Journal of Global Research in Computer Science, 4(2), 8-1, 2013.
[17]. Castellano, G., Castiello, C., Pasquadibisceglie, V., & Zaza, G, “Fisdet: Fuzzy inference system development tool”, International Journal of Computational Intelligence Systems, 10(1), 13-22, 2017
[18]. Laosai, J., & Chamnongthai, K, “Acute leukemia classification by using SVM and K-Means clustering”, IEEE, International Electrical Engineering Congress (iEECON) pp. 1-4, 2014.
[19]. Jagadev, P., & Virani, H. G, (2017, May). “Detection of leukemia and its types using image processing and machine learning”, IEEE, International Conference on Trends in Electronics and Informatics (ICEI), pp. 522-526, 2017.
[20]. Singh, A, “Detection of brain tumor in MRI images, using combination of fuzzy c-means and SVM”, IEEE, 2nd International Conference on Signal Processing and Integrated Networks (SPIN), pp. 98-102, 2015.
Citation
R. Suriyagrace, M. Devapriya, "Effective Image Pre-Processing Techniques with Deep Learning for Leukemia Detection," International Journal of Computer Sciences and Engineering, Vol.9, Issue.10, pp.28-36, 2021.
A Seamless Handover Management for VANETs across Heterogeneous Networks
Research Paper | Journal Paper
Vol.9 , Issue.10 , pp.37-40, Oct-2021
CrossRef-DOI: https://doi.org/10.26438/ijcse/v9i10.3740
Abstract
Today, Vehicular Ad Hoc Network (VANET) is an emerging technology. Mobility management is the emerging research area in the field of VANET for supporting different aspects of Intelligent Transportation System (ITS) applications. Mobility solutions for VANET can be classified into two categories namely, inter domain and intra domain. Therefore, the mobility management for vehicular networks is required. However most of Mobility model currently used are very simple. In this paper we will focus on the Network Mobility Approach in Vehicular Ad Hoc Network, this model is well suited for highway and city environment, and provides efficient and timely route establishment between the moving vehicles from one network to another network.
Key-Words / Index Term
VANETs, VANEMO, Access Router and IEEE802.11p
References
[1] Himanshu Tyagi1, A. K. Vatsa1.,. “Seamless Handoff through Information Retrieval in VANET Using Mobile Agent”, International Journal of Computer Science, Issue Vol8, No2. 2011.
[2] Muhammad Nawaz Khan,Ishtiaq Wahid & Gulzar Mehmood;, “A Global Mobility ManagementScheme for Reducing Overall Handover Latency in IP based VANETs”, International Journal of Ad hoc, Sensor & Ubiquitous Computing (IJASUC) Vol.3, No.1., 2012.
[3] Latency in IP based VANETs”, International Journal of Ad hoc, Sensor & Ubiquitous Computing (IJASUC) Vol.3, No.1.
[4] Ardian Ulvan, Robert Bestak and Melvi Ulvan.,” Handover Scenario and Procedure in LTE-based Femtocell Networks”, The Fourth International Conference on Mobile Ubiquitous Computing, Systems, Services and Technologies. 2010.
[5] Ines Ben Jemaa, Manabu Tsukada,Hamid Menourar and Thierry Ernst,” Validation and evolution of NEMO in VANET using geographic routing” , in ITST. 2010.
[6] Roberto Baldessari, Andress Festag and JulienAbeille.,.“Nemo Meets VANET : A Deployability analysis of Network Mobility in Vehicular Communication,” In ,IEEE.. 2007.
[7] Reinaldo Bezerra Braga and Herve Martin.,. “Understanding Geographic Routing in Vehicular Ad Hoc Network,” in IARIA M. Young, The Technical Writer`s Handbook. Mill Valley, CA: University Science, 1989. 2011.
[8] Sherali Zeadally • Ray Hunt • Yuh-Shyan Chen •Angela Irwin • Aamir Hassan.,. ”Vehicular ad hoc networks (VANETS): status, results, and challenges,” in Springer Science+Business Media, LLC. 2010.
[9] Elmar Schoch, Frank Kargl, and Michael Weber.,.“Communication Patterns in VANETs” in IEEE. 2008.
[10] Kun Zhu, Dusit Niyato, Ping Wang, Ekram Hossain and Dong In Kim.,“ Mobility and Handoff Management in Vehicular Networks: A Survey,” Published online in Wiley InterScience. 2009.
[11] Ana Gainaru, Ciprian Dobre, Valentin Cristea., “A Realistic Mobility Model based on Social Networks for the Simulation of VANETs,” in IEEE. 2009.
[12] Mrs. Vaishali D. Khairnar, Dr. S.N. Pradhan ,“Mobility Models for Vehicular Ad-hoc Network Simulation,” in IEEE. 2011.
[13] Kun-chan Lan and Chien-Ming Chou., “Realistic Mobility Models for Vehicular Ad hoc Network (VANET) Simulations,” in IEEE. 2008.
[14] Md. Asif Nashiry, Md. Abdullah-Al-Mahmud, Md. Mahbubur Rahman, Md. Nashid Anjum., “Evaluation of TCP Performance over Mobile IP Wired-cum-Wireless Networks,” in IEEE. 2008.
[15] Gustavo Marfia,Giovanni Pau,Eugenio Giordanotl,Enzo De Senat, Mario Gerla., “VANET: On Mobility Scenarios and Urban Infrastructure,” in IEEE. 2007.
Citation
Chandrakant Kumar Singh, Narendra Kumar Shukla, "A Seamless Handover Management for VANETs across Heterogeneous Networks," International Journal of Computer Sciences and Engineering, Vol.9, Issue.10, pp.37-40, 2021.