Automatic Image Caption Generation Using CNN, RNN and LSTM
Research Paper | Journal Paper
Vol.9 , Issue.8 , pp.60-62, Aug-2021
CrossRef-DOI: https://doi.org/10.26438/ijcse/v9i8.6062
Abstract
The paper aims at generating automated captions by learning the contents of the image. At present images are annotated with human intervention and it becomes nearly impossible task for huge commercial databases. The image database is given as input to a deep neural network (Convolutional Neural Network (CNN)) encoder for generating “thought vector” which extracts the features and nuances out of our image and RNN (Recurrent Neural Network) decoder is used to translate the features and objects given by our image to obtain sequential, meaningful description of the image .In this paper we are going to explain the survey about image captioning and our proposed system.
Key-Words / Index Term
image annotation, deep learning, CNN, RNN, LSTM, python3, flask, etc.
References
[1]. Vinyals, Oriol, et al. Show and tell: A neural image caption generator. Proceedings of the IEEE conference on computer vision and pattern recognition, 2015.
[2]. Deepak A Vidhate, Parag Kulkarni, 2019, International Journal of Computational Systems Engineering, Inderscience Publishers (IEL), Volume 5, Issue 3, pp 169-178.
[3]. Fang, Hao, et al. From captions to visual concepts and back. Proceedings of the IEEE conference on computer vision and pattern recognition, 2015.
[4]. Deepak A Vidhate, Parag Kulkarni, Information and Communication Technology for Intelligent Systems, Springer, Singapore, pp 693-703, 2019.
[5]. Y. Bin, Y. Yang, F. Shen, X. Xu, and H. T. Shen, Bidirectional long short term memory for video description, in Proceedings of the 2016 ACM on Multimedia Conference. ACM, pp. 436440, 2016.
[6]. Deepak A Vidhate, Parag Kulkarni, Communications in Computer and Information Science, Springer, Singapore, Volume 905, pp 352-361, 2018.
[7]. K. Cho, A. Courville, and Y. Bengio, Describing multimedia content using attention-based encoder decoder networks, IEEE Transactions on Multimedia, vol.17, no. 11, pp. 18751886, 2015.
[8]. Deepak A Vidhate, Parag Kulkarni, Smart Trends in Information Technology and Computer Communications. SmartCom 2017, Volume 876, pp 71-81, 2018.
[9]. B. Qu, X. Li, D. Tao, and X. Lu, Deep semantic understanding of high resolution remote sensing image, in Proc. Int. Conf. Computational., Inf. Telecommunication. Syst., Jul.2016, pp. 15, 2016.
[10]. X. Lu, B. Wang, X. Zheng, and X. Li, Exploring models and data for remote sensing image caption generation, IEEE Trans. Geosci. Remote Sens., vol. 56, no. 4, pp.21832195, Apr., 2018.
[11]. X. Zhang, X. Wang, X.Tang, H.Zhou , and c.Li, Description generation for remote sensing images using attribute attention mechanism, Remote Sens., vol. 11, no. 6, p.612, 2019.
Citation
S.S. Pophale, Praveen Mokate, Sandip Najan, Sandesh Gajare, Sanket Swami, "Automatic Image Caption Generation Using CNN, RNN and LSTM," International Journal of Computer Sciences and Engineering, Vol.9, Issue.8, pp.60-62, 2021.
Simulation Based Exploration of SKC Block Cipher AlgorithmAn Exploration of Monetary Based Approach (MBA) in Peer-to-peer system Network: A Review
Review Paper | Journal Paper
Vol.9 , Issue.8 , pp.63-71, Aug-2021
CrossRef-DOI: https://doi.org/10.26438/ijcse/v9i8.6371
Abstract
The major concept of the Monetary Based Approach (MBA) network uses the Label Switch Path (LSP) technique that pro- vides high performance in packet delivery without routing table lookup. Nevertheless, it needs more overhead to rebuild a new path when occurring link failure in the MBA network. MBA (Monetary Based Approach) networks are currently evolving towards a universal and convergent network, capable of flowing multiservice traffic (voice, data and video) over the same IP based infrastructure. Quality of Service (QoS) is more and more becoming a necessity for emerging applications carried by MBA networks. This fact stimulates service providers to improve network planning techniques to adequately provide network resources and overcome all failures. The paper presents typical network failures, which cause path recovery in MBA networks and experimental results of network failures, when MBA is used.
Key-Words / Index Term
Label Switch Path (LSP), Monetary Based Approach (MBA), peer-to-peer system, Quality of Service (QoS)
References
[1] Xu, F., Peng, M., Esmaeili, M., Rahnamay-Naeini, M., Khan, S., Ghani, N., & Hayat, M. Post-fault restoration in multi-domain networks with multiple failures. In 2010-MILCOM 2010 MILITARY COMMUNICATIONS CONFERENCE, pp. 593- 598, 2010. IEEE.
[2] Capone, A., Cascone, C., Nguyen, A. Q., & Sanso, B. Detour planning for fast and reliable failure recovery in SDN with Open-State. In 2015 11th International Conference on the Design of Reliable Communication Networks (DRCN), pp. 25-32, 2015, March. IEEE.
[3] Almandhari, T. M., & Shiginah, F. A. A performance study framework for Monetary Based Approach (MBA) networks. In 2015 IEEE 8th GCC Conference & Exhibition pp. 1-6, 2015, February. IEEE.
[4] Attar, H., Alhihi, M., Samour, M., Solyman, A. A., Igorovich, S. S., Georgievna, K. N., & Khalil, F. A Mathematical Model for Managing the Distribution of Information Flows for MBA -TE Networks under Critical Conditions. Communications and Network, 10(02), 31-42, 2018.
[5] Hanshi, S. M., & Al-Khateeb, W. (2010, September). Enhancing QoS protection in MBA networks. In 2010 Second International Conference on Network Applications, Protocols and Services (pp. 95-100). IEEE.
[6] Hassan, N., Baig, A., Qadir, J., & Din, I. , Recovery and bandwidth sharing techniques in MBA networks. In 8th International Conference on High-capacity Optical Networks and Emerging Technologies pp. 193-200, 2011, December. IEEE.
[7] Ridwan, M. A., Radzi, N. A. M., Ahmad, W. S. H. M. W., Abdullah, F., Jamaludin, M. Z., & Zakaria, M.
[8] N.,. Recent trends in MBA networks: Technologies, Applications and Challenges. IET Communications. 2019.
[9] Karakus, M., & Durresi, A. (2019, May). Economic analysis of software defined networking (sdn) under various network failure scenarios. In ICC. 2019-2019 IEEE International Conference on Communications (ICC) pp. 1-6, 2019.. IEEE.
[10] Li, S. M., & Liang, H. Y., A model of path fault recovery of MBA VPN and simulation. In 2011 International Conference on Electric Information and Control Engineering pp. 1925- 1928, 2011, April. IEEE.
[11] Lin, J. W., & Liu, H. Y. (2010). Redirection based recovery for MBA network systems. Journal of Systems and Software, 83(4), 609-620.
[12] Qiu, Y., Zhu, H., Zhou, Y., & Gu, J. (2010, November). A Research of MBA -based Network Fault Recovery. In 2010 Third International Conference on Intelligent Networks and Intelligent Systems (pp. 699-702). IEEE.
[13] Cascone, C., Sanvito, D., Pollini, L., Capone, A., & Sanso, B. (2017). Fast failure detection and recovery in SDN with stateful data plane. International Journal of Network Management, 27(2), e1957.
[14] Wang, S., Xu, H., Huang, L., Yang, X., & Liu, J. (2019, August). Fast Recovery for Single Link Failure with Segment Routing in SDNs. In 2019 IEEE 21st International Conference on High Performance Computing and Communications; IEEE 17th International Conference on Smart City; IEEE 5th International Conference on Data Science and Systems (HPCC/SmartCity/DSS) (pp. 2013-2018). IEEE.
[15] Lawrence, J. (2001). Designing multiprotocol label switching networks. IEEE Communications Magazine, 39(7), 134-142.
[16] Geary, N., Antonopoulos, A., Drakopoulos, E., & O`Reilly, J. (2001, April). Analysis of optimisation issues in multi-period DWDM network planning. In Proceedings IEEE INFOCOM 2001. Conference on Computer Communications. Twentieth Annual Joint Conference of the IEEE Computer and Communications Society (Cat. No. 01CH37213) (Vol. 1, pp. 152-158). IEEE.
[17] Saad, T., Yang, T., Makrakis, D., & Groza, V. (2001). Diff-Serv-enabled adaptive traffic engineering over MBA. In 2001 International Conferences on Info-Tech and Info-Net. Proceedings (Cat. No. 01EX479) (Vol. 2, pp. 128- 133). IEEE.
[18] Xiao, X., Hannan, A., Bailey, B., & Ni, L. M. (2000). Traffic Engineering with MBA in the Internet. IEEE network, 14(2), 28-33.
[19] Nadeau, T., Srinivasan, C., Farrel, A., Hall, T., & Harrison, E. (2007). Generalized multiprotocol label switching (GMBA) label switching router (LSR) management information base. RFC4803, Feb.
[20] Wu, J., & Zhang, Y. (2010, September). A layered MBA network architecture. In 2010 6th International Conference on Wireless Communications Networking and Mobile Computing (WiCOM) (pp. 1-4). IEEE.
[21] Aazam, M., Syed, A. M., & Huh, E. N. (). Redefining flow label in IPv6 and MBA headers for end-to-end QoS in virtual networking for thin client. In 2013 19th Asia-Pacific Conference on Communications (APCC) (pp. 585- 590, 2013, August). IEEE.
[22] Wu, J., & Zhang, Y., A layered MBA network architecture. In 2010 6th International Conference on Wireless Communications Networking and Mobile Computing (WiCOM) (pp. 1-4, 2010, September). IEEE.
[23] Fineberg, V., QoS Support in MBA networks. MBA /FR Alliance. 2003.
[24] Han, L., Wang, J., Wang, C., & Cai, L., A variable forwarding equivalence class for MBA networks. In 2009 International Conference on Multimedia Information Networking and Security (Vol. 1, pp. 273-276, 2009, November). IEEE.
[25] Farrel, A., Papadimitriou, D., Vasseur, J. P., & Ayyangar, A. (). Encoding of attributes for multiprotocol label switching (MBA) label switched path (LSP) establishment using resource reservation protocol-traffic engineering (RSVP- TE). RFC 4420 (Proposed Standard), Internet Engineering Task Force, 2006.
[26] Vasseur, J. P., Le Roux, J. L., Yasukawa, S., Previdi, S., Psenak, P., & Mabbey, P., Routing Extensions for Discovery of Multiprotocol (MBA) Label Switch Router (LSR) Traffic Engineering (TE) Mesh Membership. RFC, 4972, 1-15, 2007.
[27] Smith, D., Mullooly, J., Jaeger, W., & Scholl, T., Label Edge Router Forwarding of IPv4 Option Packets. In RFC 6178 (Proposed Standard). Internet Engineering Task Force, 2011.
[28] Lasserre, M., & Kompella, V. (). Virtual private LAN service (VPLS) using label distribution protocol (LDP) signaling. RFC 4762, January. 2007.
[29] Haroon, M., Tripathi, M. M., & Ahmad, F., Application of Machine Learning In Forensic Science. In Critical Concepts, Standards, and Techniques in Cyber Forensics, pp. 228-239, 2020. IGI Global.
[30] Ahmad, F., Darbari, M., & Asthana, R., Different Approaches of Soft Computing Techniques (Inference System) which are used in Clinical Decision Support System for Risk based Prioritization. Asian Journal of Computer and Information Systems, 3(1). 2015.
[31] Ahmad, F., & Khalid, S., Scalable Design of Service Discovery Mechanism for Adhoc Network Using Wireless Mesh Network. International Journal of Smart Sensors and Ad Hoc Networks (IJSSAN) ISSN No. 2248?9738 Volume, 1., 2012.
[32] Saba Khalid, F. A., & Beg, M. R., Secure key pre-distribution in wireless sensor networks using combinatorial design and traversal design based key distribution, 2012.
[33] Ahmad, F., Khalid, S., & Hussain, M. S., Encrypting data using the features of memetic algorithm and cryptography. International Journal of Engineering Research and Applications, 2011. ISSN, 2248-9622.
[34] M. Z. Khan, M. S. Kidwai, F. Ahamad and M. U. Khan, "Hadoop based EMH framework: A Big Data approach," 2021 International Conference on Advance Computing and Innovative Technologies in Engineering (ICACITE), pp. 1068-1070, 2021, doi: 10.1109/ICACITE51222.2021.9404710.
[35] Husain, M. S., & Khan, M. Z. (Eds.). (2019). Critical Concepts, Standards, and Techniques in Cyber Forensics. IGI Global, 2019.
[36] M. Suhaib Kidwai and M. Zunnun Khan, "A new perspective of detecting and classifying neurological disorders through recurrence and machine learning classifiers," 2021 International Conference on Advance Computing and Innovative Technologies in Engineering (ICACITE), pp. 200-206, 2021, doi: 10.1109/ICACITE51222.2021.9404645.
Citation
Durba Das Gupta, Faiyaz Ahamad, Mohammad Zunnun Khan, "Simulation Based Exploration of SKC Block Cipher AlgorithmAn Exploration of Monetary Based Approach (MBA) in Peer-to-peer system Network: A Review," International Journal of Computer Sciences and Engineering, Vol.9, Issue.8, pp.63-71, 2021.
Development of ZnO-doped SnO2 sensor for Detection of SO2 and Performance Validation through Artificial Neural Network
Research Paper | Journal Paper
Vol.9 , Issue.8 , pp.72-75, Aug-2021
CrossRef-DOI: https://doi.org/10.26438/ijcse/v9i8.7275
Abstract
In the present work we have fabricated a thick film SnO2 sensor on a 1?x1? alumina substrate. It consists of a gas sensitive layer (SnO2) doped with ZnO, a pair of electrodes underneath the gas sensing layer serving as a contact pad for sensor and a heater element on the backside of the substrate was printed. The sensitivity of sensor has been studied and measured at different temperatures (1500C - 3500C) upon exposure to SO2. An approach is made to measure the sensitivity of ZnO-doped SnO2 by using Artificial Neural Network tool. Finally we have shown the results that shows the potential of Artificial Neural Network as a design tool in the area of thick film gas sensor fabrication and development.
Key-Words / Index Term
Artificial Neural Network, Thick film sensor, sensitivity, ZnO
References
[1] T. Maekawa, K. Suzuki, T. Takada, T. Kobayashi, Egashira, Odor identification using a SnO2 based sensor array, Sens. Actuators B 80, pp. 51-58, 2001.
[2] S.C. Ray, M.K. Karanjai, D. Das Gupta, Tin dioxide based transparent semi conducting films deposited by the dip-coating technique, Surf. Coat. Tech. 102, pp. 73-80, 1998.
[3] Y.-S. Choe, New gas sensing mechanism for SnO2 thin-film gas sensors fabricated by using dual ion beam sputtering, Sens. Actuators B 77, pp. 200-208, 2001.
[4] Robertson, Electronic structure of SnO2, GeO2, PdO2, TeO2 and MgF2, Journal of Physics., C12, pp. 47-67, 1979.
[5] Roopali Srivastava, R. Dwivedi, S.K. Srivastava, Development of high sensitivity tin oxide based sensors for gas/odor detection at room temperature, Sensors and Actuators B 50, pp. 175-180, 1998.
[6] E. Cominia, M. Ferronib, V. Guidib, G. Fagliaa, G. Martinellib, G. Sberveglieria, Sensors and Actuators B 84, 26, 2002.
[7] G. Martinelli, M.C. Carotta, Thick film gas sensors, Sensors and Actuators B 23, pp. 157-161, 1995.
[8] S.R. Morrison, Selectivity in semi conducting gas sensors, Sensors and Actuators B 21, pp. 213-218, 1994.
[9] M.C. Carotta, C.Dallara, G. Martinelli, L. Passari, A. Camanzi, CH4 thick film gas sensors: characterization method and theoretical explanation, Sensors and Actuators B 3, pp. 191-196, 1991.
[10] Dr. S. N. Sivanandam, Dr. S. Sumathi and S.N. Deepa, “Introduction to Neural Network text book”.
[11] Garje A. D. and Sadakale S. N., “LPG sensing properties of platinum doped nano crystalline SnO2 based thick films with effect of dipping time and sintering temperature,” Advanced Material Letters, 4(1) , pp. 58-63, 2013.
[12] Wang S., Zhao Y., Huang J., Wang Y. , Wu S., Zhang S. and Huang W. , “ Low- temperature carbon monoxide gas sensors based gold/tin dioxide ,” Solid-State Electronics, 50(11) , pp. 1728–1735, 2006.
[13] Vaishampayan M.V, Deshmukh R. G. and Mulla I.S., “Influence of Pd doping on morphology and LPG response of SnO2,” Sensors and Actuators B, 131(1), pp. 665-672, 2008.
[14] Giberti A., Benetti M., Carotta M.C., Guidi V., Malagu C. and Martinelli G.,“ Heat exchange and temperature calculation in thick-film semiconductor gas sensor systems, ” Sensors and Actuators B, 130(1), pp. 277–280, 2009.
[15] Pfaff G., Effect of Powder preparation and sintering on the electrical properties of tin dioxide- based ceramic sensors, Sensors and Actuators B, 20, 1994.
[16] Fliegel W.,Behr G., Werner J. and Krabbes G., Preparation, development of microstructure,electrical and gas sensitive properties of pure and doped SnO2 powders, Sensors and Actuators B,19,pp. 1-3,1994.
[17] Honore M., Lenaerts S., Desmet J., Huyberechts G. and Roggen J.,Synthesis and Characterisation of Tin oxide powders for the realization of thick film gas sensors, Sensors and Actuators B, 19, pp. 1-3,1994.
Citation
Jitendra K. Srivastava, Deepak Kumar Verma, "Development of ZnO-doped SnO2 sensor for Detection of SO2 and Performance Validation through Artificial Neural Network," International Journal of Computer Sciences and Engineering, Vol.9, Issue.8, pp.72-75, 2021.
Development of Mobile App for College Math: MathTech
Research Paper | Journal Paper
Vol.9 , Issue.8 , pp.76-80, Aug-2021
CrossRef-DOI: https://doi.org/10.26438/ijcse/v9i8.7680
Abstract
The development of a mobile Application (Math Tech) is presented, base on the Scrum methodology, which shows an innovative way a set of mathematical formulas and examples of their use for the subjects of mathematics for pre-university courses, linear algebra, differential and integral calculus and operation research of the curricula by Instituto Tecnologico Superior de Comalcalco (ITSC). The App will be a great support in order to improve their abilities in Math. The use of Scrum, given its characteristics, allowed for the programming of the App in a clear, agile and simple way. Additionally, a variety of creative visuals elements have been included that give to the app a higher quality.
Key-Words / Index Term
Teaching mathematics, mobile App, m-learning, Scrum methodology, educational software
References
[1]. Relime, L. “Calculus in Engineering Careers: A Cognitive Study”. Scielo Scientific Electronic Library Online, 145-175, 2007.
[2]. Moreno, M “The role of didactics in the teaching of calculus: evolution, current state and future challenges”. University of Córdova, Gómez & Torralba Eds, Argentina,. 2005.
[3]. Hermon, P. McCartan, C, Cunningham, G. “Enhancing the educational development of individuals in group projects”. Queen´s University Belfast. Proceeding of the 5th International CDIO Conference, Singapure Polytechnic, Singapure, 2009.
[4]. Brioli, C. “Characteristics of the main educational modalities and other types of formal and non-formal education”. Thesis: Master`s in Education, Mention in Information and Communication Technologies. Universidad Central de Venezuela, Venezuela, 2010.
[5]. Aragón, E., Castro, C., Gómez, B. y González, P. “Learning Objects as didactic resources for teaching mathematics”. Journal of Educational Innovation - Universidad de Guadalajara. vol 9, issue. 11, 2009.
[6]. Heide, A., Stilborne, L. The Teacher’s Complete & Easy Guide to the Internet. Thifolium Books, USA, 2000.
[7]. Barrera-Osorio, F. y Linden L. “The use and misuse of computers in education: Evidence from a randomized experiment in Colombia”. The World Bank Human Development Network, Colombia, 2013.
[8]. Castells, M. “The impact of the internet on society: A global perspective. OpenMind, sharing knowledge for a better future”. Bbvaopenmid, España, 2012.
[9]. European Commission. “Opening up education: innovative teaching and learning for all through new technologies and open educational resources”. COM(654), 2013.
[10]. González, J. “B-learning using free software, a viable alternative in Higher Education”. Complutense Journal of Education, vol.17, issue 1, 2006.
[11]. Ascheri, M. E., Testa, O., Pizarro, R., Camiletti, P. y Díaz, L. “Use of mobile devices with Android operating system for mathematics. An app review”. Digital Repository, Faculty of Exact and Natural Sciences, National University of La Pampa, 2014.
[12]. Martel, A. “Practical Project Management with Scrum”. Createspace Independent publishing Edition, México, 2014.
[13]. Altman, H. “The first Agile Methodology to Manage Product Development Step by Step”. FrameWork edition, México, 2018.
[14]. Poole, D. “Linear Algebra”. A modern introduction. Cengage Learning, México, 2017.
[15]. Hernandez, M. “Linear Algebra”. Grupo Ed. Patria, México, 2018.
[16]. Coronel, C. “Operations research”. Pearson education, México, 2017.
Citation
J. Moreno, M. Sandoval, C. Morales, L. Castillo, "Development of Mobile App for College Math: MathTech," International Journal of Computer Sciences and Engineering, Vol.9, Issue.8, pp.76-80, 2021.
Classification of Pulsar Candidates Using an Ensemble Model
Research Paper | Journal Paper
Vol.9 , Issue.8 , pp.81-83, Aug-2021
CrossRef-DOI: https://doi.org/10.26438/ijcse/v9i8.8183
Abstract
In the past, researchers study candidate filters used to solve the problem for the last years. Pulsar is a type of star, which is interested in the great scientific topic. Through which we discover this celestial pulsar. Here we have used the decision tree under the new machine learning in this research. We use two classification techniques C4.5 Tree and classification and regression tree CART to classify the HTRU2 dataset and we set a model C4.5 Tree and CART from the ensemble of the classification and regression tree. The Model Ensemble C4.5 Tree and CART provides the best performance compared to the individual models of each classifier. Ensemble Model is useful for classifying candidates in pulsar and non-pulsar.
Key-Words / Index Term
Classification, C4.5, CART, Ensemble Model, HTRU2
References
[1] S. K. Saha, S. Sarkar, and P. Mitra, “Feature selection techniques for maximum entropy based biomedical named entity recognition,” J. Biomed. Inform., vol. 42, no. 5, pp. 905–911, 2009.
[2] P. S. Ramkumar and a. a. Deshpande, “Real-time signal processor for pulsar studies,” J. Astrophys. Astron., vol. 22, no. 4, pp. 321–342, 2001.
[3] E. Alpayd?n, “Introduction to machine learning,” Methods Mol. Biol., vol. 1107, pp. 105–128, 2014.
[4] R. J. Lyon, “WHY ARE PULSARS HARD TO FIND??,” 2016.
[5] R. J. Lyon, B. W. Stappers, S. Cooper, J. M. Brooke, and J. D. Knowles, “Fifty Years of Pulsar Candidate Selection?: From simple filters to a new principled real-time classification approach,” vol. 22, no. March, pp. 1–22, 2016.
[6] M. J. Keith et al., “The High Time Resolution Universe Pulsar Survey – I . System configuration and initial discoveries Introduction simulation and survey strategy,” vol. 627, pp. 619–627, 2010.
[7] Sivanandam and Deepa, Principles of Soft Computing, Second. wiley, 2014.
[8] A. Pujari, Data mining techniques, Third. University press, 2013.
[9] J. Han, M. Kamber, and J. Pei, Data mining: concepts and techniques, Third. Elsevier, 2012.
[10] S. Haykin, Neural Networks and Learning Machines, vol. 3. 2008.
[11] R. Lyon, “HTRU2,” 2016. [Online]. Available: https://figshare.com/articles/HTRU2/3080389/1. [Accessed: 01-Dec-2017].
Citation
Sanat Kumar Sahu, "Classification of Pulsar Candidates Using an Ensemble Model," International Journal of Computer Sciences and Engineering, Vol.9, Issue.8, pp.81-83, 2021.
Diabetes Risk Detection Review Using Machine Learning Techniques
Review Paper | Journal Paper
Vol.9 , Issue.8 , pp.84-86, Aug-2021
CrossRef-DOI: https://doi.org/10.26438/ijcse/v9i8.8486
Abstract
Data Mining (DM) and Machine Learning (ML) are used as training algorithm for learning classification and feature selection technique (FST) from data. The DM and ML are contemporary concepts that are used to classify data with remarkable accuracy and efficiency. This paper contains a collection of research publications that utilized DM and ML techniques to diagnose diabetes. The survey`s objective was to determine the study objective, diabetic type, data sets and technologies employed, as well as the results.
Key-Words / Index Term
Classification, data mining, diabetic disease, feature selection technique, machine learning
References
[1] J. Han, M. Kamber, and J. Pei, Data mining: concepts and techniques, Third. Elsevier, 2012.
[2] A. M. Altamimi, “Performance Analysis of Supervised Classifying Algorithms to Predict Diabetes in Children,” J. Xi’an Univ. Archit. Technol., vol. XII, no. III, pp. 2010–2017, 2020.
[3] A. Kareem, L. Shi, L. Wei, and Y. Tao, “A Comparative Analysis and Risk Prediction of Diabetes at Early Stage using Machine Learning Approach A Comparative Analysis and Risk Prediction of Diabetes at Early Stage using Machine Learning Approach,” Int. J. Futur. Gener. Commun. Netw., vol. 13, no. 3, pp. 4151–4163, 2020.
[4] G. A. Pethunachiyar, “Classification of diabetes patients using kernel based support vector machines,” in 2020 International Conference on Computer Communication and Informatics, ICCCI 2020, 2020, pp. 22–25.
[5] H. Kaur and G. Kaur, “Prediction of Diabetes Using Support Vector Machine,” Int. J. Res. Eng. Appl. Manag., vol. 05, no. 02, pp. 470–473, 2019.
[6] J. Zhang et al., “Diagnostic Method of Diabetes Based on Support Vector Machine and Tongue Images,” Hindawi BioMed Res. Int. Res. Int., vol. 2017, 2017.
[7] S. Perveen, M. Shahbaz, A. Guergachi, and K. Keshavjee, “Performance Analysis of Data Mining Classification Techniques to Predict Diabetes,” in Procedia Computer Science, 2016, vol. 82, no. March, pp. 115–121.
[8] L. Han, S. Luo, J. Yu, L. Pan, and S. Chen, “Rule extraction from support vector machines using ensemble learning approach: An application for diagnosis of diabetes,” IEEE J. Biomed. Heal. Informatics, vol. 19, no. 2, pp. 728–734, 2015.
[9] O. S.Soliman and E. AboElhamd, “Classification of Diabetes Mellitus using Modified Particle Swarm Optimization and Least Squares Support Vector Machine,” Int. J. Comput. Trends Technol., vol. 8, no. 1, pp. 38–44, 2014.
[10] A. Kumari and R. Chitra, “Classification Of Diabetes Disease Using Support Vector Machine,” Int. J. Eng. Res. Appl., vol. 3, no. 2, pp. 1797–1801, 2013.
[11] M. S. Uzer, N. Yilmaz, and O. Inan, “Feature selection method based on artificial bee colony algorithm and support vector machines for medical datasets classification,” Sci. World J., vol. 2013, 2013.
[12] D. Giveki, H. Salimi, G. Bahmanyar, and Y. Khademian, “Automatic Detection of Diabetes Diagnosis using Feature Weighted Support Vector Machines based on Mutual Information and Modified Cuckoo Search,” cornell, 2012.
[13] M. Rambhajani, W. Deepanker, and N. Pathak, “A Survey on Implementation of Machine Learning Techniques for Dermatology Diseases Classification,” Int. J. Adv. Eng. Technol., vol. 8, no. 2, pp. 194–202, 2015.
[14] M. He, D. Jianan, and Z. Sinian, “Kaggle Competition?: Product Classification,” Kaggle Compet. Prod. Classif., 2015.
[15] M. Leshno, “Chapter 25 statistical methods for data mining,” no. Dm, 2005.
Citation
Sanat Kumar Sahu, "Diabetes Risk Detection Review Using Machine Learning Techniques," International Journal of Computer Sciences and Engineering, Vol.9, Issue.8, pp.84-86, 2021.