[1]HUANG Heyan,CAO Zhao,FENG Chong.Opportunities and challenges of big data intelligence analysis[J].CAAI Transactions on Intelligent Systems,2016,11(6):719-727.[doi:10.11992/tis.201610025]

Opportunities and challenges of big data intelligence analysis

[1] GINSBERG J, MOHEBBI M H, PATEL R S, et al. Detecting influenza epidemics using search engine query data[J]. Nature, 2009, 457(7232):1012-1014.
[2] 包昌火. 情报研究方法论[M]. 北京:科学技术文献出版社, 1990. BAO Changhuo. Information research methodology[M]. Beijing:Science and Technology Literature Publishing House, 1990.
[3] WEISS G. A Modern approach to distributed artificial intelligence[J]. IEEE transactions on systems man & cybernetics-part c applications & reviews, 1999, 22(2).
[4] MANYIKA J, CHUI M, BUGHIN J, et al. Big data:the next frontier for innovation, competition, and productivity[R]. McKinsey Global Institute, 2011.
[5] ETEMADPOUR R, MURRAY P, FORBES A G. Evaluating density-based motion for big data visual analytics[C]//Proceedings of IEEE International Conference on Big Data. Washington, DC, USA, 2014:451-460.
[6] SONG Jingkuan, YANG Yang, YANG Yi, et al. Inter-media hashing for large-scale retrieval from heterogeneous data sources[C]//Proceedings of the 2013 ACM SIGMOD International Conference on Management of Data. New York, NY, USA, 2013:785-796.
[7] RAGHUPATHI W, RAGHUPATHI V. Big data analytics in healthcare:promise and potential[J]. Health information science and systems, 2014, 2:3.
[8] PIRES A J M. Big data analytics in healthcare:are end-users ready[D]. Braga:Universidade Católica Portuguesa, 2014.
[9] SHVACHKO K, KUANG Hairong, RADIA S, et al. The hadoop distributed file system[C]//Proceedings of the 2010 IEEE 26th Symposium on Mass Storage Systems and Technologies. Incline Village, NV, USA, 2010:1-10.
[10] ZAHARIA M, CHOWDHURY M, FRANKLIN M J, et al. Spark:cluster computing with working sets[C]//Proceedings of the 2nd USENIX Conference on Hot Topics in Cloud Computing. Berkeley, CA, USA, 2010:10.
[11] JUNG K, KIM K I, JAIN A K. Text information extraction in images and video:a survey[J]. Pattern recognition, 2004, 37(5):977-997.
[12] SODERLAND S. Learning information extraction rules for semi-structured and free text[J]. Machine learning, 1999, 34(1/2/3):233-272.
[13] ZHANG Yongmian, JI Qiang. Active and dynamic information fusion for facial expression understanding from image sequences[J]. IEEE transactions on pattern analysis and machine intelligence, 2005, 27(5):699-714.
[14] SU Xueyuan, SWART G. Oracle in-database hadoop:when mapreduce meets RDBMS[C]//Proceedings of the 2012 ACM SIGMOD International Conference on Management of Data. Scottsdale, AZ, USA, 2012:779-790.
[15] TAHANI H, KELLER J M. Information fusion in computer vision using the fuzzy integral[J]. IEEE transactions on systems, man, and cybernetics, 1990, 20(3):733-741.
[16] WANG Jun, HU Yiming. WOLF-a novel reordering write buffer to boost the performance of log-structured file system[C]//Proceedings of the 1st USENIX Conference on File and Storage Technologies. Monterey, CA, USA, 2002:4.
[17] 孟小峰, 慈祥. 大数据管理:概念、技术与挑战[J]. 计算机研究与发展, 2013, 50(1):146-169. MENG Xiaofeng, CI Xiang. Big data management:concepts, techniques and challenges[J]. Journal of computer research and development, 2013, 50(1):146-169.
[18] WU Xindong, ZHU Xingquan, WU Gongqing, et al. Data mining with big data[J]. IEEE transactions on knowledge and data engineering, 2014, 26(1):97-107.
[19] KOVAR L, GLEICHER M. Automated extraction and parameterization of motions in large data sets[J]. ACM transactions on graphics, 2004, 23(3):559-568.
[20] LAZER D, KENNEDY R, KING G, et al. The parable of Google flu:traps in big data analysis[J]. Science, 2014, 343(6176):1203-1205.
[21] FAN Jianqing, HAN Fang, LIU Han. Challenges of big data analysis[J]. National science review, 2014, 1(2):293-314.
[22] SCHMIDHUBER J. Deep learning in neural networks:an overview[J]. Neural networks, 2015, 61:85-117.
[23] CARLSON A, BETTERIDGE J, KISIEL B, et al. Toward an architecture for never-ending language learning[C]//AAAI 2010 Twenty-Fourth AAAI Conference on Artificial Intelligence. Atlanta, Georgia, USA, 2010:529-573.
[24] BLUM A L, LANGLEY P. Selection of relevant features and examples in machine learning[J]. Artificial intelligence, 1997, 97(1/2):245-271.
[25] JIN Songchang, LIN Wangqun, YIN Hong, et al. Community structure mining in big data social media networks with MapReduce[J]. Cluster computing, 2015, 18(3):999-1010.
[26] TANG Jiliang, LIU Huan. Unsupervised feature selection for linked social media data[C]//Proceedings of the 18th ACM SIGKDD International Conference on Knowledge Discovery and Data Mining. Beijing, China, 2012:904-912.
[27] CASSIDY A S, MEROLLA P, ARTHUR J V, et al. Cognitive computing building block:a versatile and efficient digital neuron model for neurosynaptic cores[C]//Proceedings of the 2013 International Joint Conference on Neural Networks. Dallas, TX, USA, 2013:1-10.
[28] PREISSL R, WONG T M, DATTA P, et al. Compass:a scalable simulator for an architecture for cognitive computing[C]//Proceedings of the 2012 International Conference on High Performance Computing, Networking, Storage and Analysis. Salt Lake City, UT, USA, 2012:1-11.
[29] KEIM D, QU Huamin, MA K L. Big-data visualization[J]. IEEE computer graphics and applications, 2013, 33(4):20-21.
[30] MEYEROVICH L A, TOROK M E, ATKINSON E, et al. Superconductor:a language for big data visualization[M]. Shenzhen, China:ACM, 2013.
[31] HACHET M, KRUIJFF E. Guest editor’s introduction:special section on the ACM symposium on virtual reality software and technology[J]. IEEE transactions on visualization and computer graphics, 2010, 16(1):2-3.
[32] CHILDS H, BRUGGER E, BONNELL K, et al. A contract based system for large data visualization[C]//Proceedings of VIS 05. IEEE Visualization. Minneapolis, MN, USA, 2005:191-198.
[33] KANOV K, PERLMAN E, BURNS R, et al. I/O streaming evaluation of batch queries for data-intensive computational turbulence[C]//Proceedings of 2011 International Conference for High Performance Computing, Networking, Storage and Analysis. Seattle, WA, USA, 2011:1-10.
[34] FRASCA M, PRABHAKAR R, RAGHAVAN P, et al. Virtual I/O caching:dynamic storage cache management for concurrent workloads[C]//Proceedings of 2011 International Conference on High Performance Computing Networking, Storage and Analysis. Seattle, WA, USA, 2011:1-11.
[35] 张建勋, 古志民, 郑超. 云计算研究进展综述[J]. 计算机应用研究, 2010, 27(2):429-433. ZHANG Jianxun, GU Zhimin, ZHENG Chao. Survey of research progress on cloud computing[J]. Application research of computers, 2010, 27(2):429-433.
[36] WANG Guojun, LIU Qin, WU Jie. Hierarchical attribute-based encryption for fine-grained access control in cloud storage services[C]//Proceedings of the 17th ACM conference on Computer and communications security. Chicago, Illinois, USA, 2010:735-737.
[37] CHANG F, DEAN J, GHEMAWAT S, et al. Bigtable:a distributed storage system for structured data[J]. ACM transactions on computer systems, 2008, 26(2):4.
[38] ARMBRUST M, FOX A, GRIFFITH R, et al. Above the clouds:a Berkeley view of cloud computing[R]. Technical Report No. UCB/EECS-2009-28. Berkeley:EECS Department University of California Berkeley, 2009:50-58.
[39] DEAN J, Ghemawat S. MapReduce:simplified data processing on large clusters[C]//Proceedings of the 6th Conference on Symposium on Opearting Systems Design & Implementation. San Francisco, CA, USA, 2004:107-113.
[40] IQBAL M H, SOOMRO T R. Big data analysis:apache storm perspective[J]. International journal of computer trends and technology, 2015, 19(1):9-14.
[41] WANG Cong, CHOW S S M, WANG Qian, et al. Privacy-preserving public auditing for secure cloud storage[J]. IEEE transactions on computers, 2013, 62(2):362-375.
[42] KATSUNO H, MENDELZON A O. Propositional knowledge base revision and minimal change[J]. Artificial intelligence, 1991, 52(3):263-294.
[43] HOFFART J, SUCHANEK F M, BERBERICH K, et al. YAGO2:a spatially and temporally enhanced knowledge base from Wikipedia[J]. Artificial intelligence, 2013, 194:28-61.
[44] LEHMANN D, MAGIDOR M. What does a conditional knowledge base entail[J]. Artificial intelligence, 1992, 55(1):1-60.
[45] BARBARá D, GARCIA-MOLINA H, PORTER D. The management of probabilistic data[J]. IEEE transactions on knowledge and data engineering, 1992, 4(5):487-502.
[46] KOUBARAKIS M, SKIADOPOULOS S, TRYFONOPOULOS C. Logic and computational complexity for Boolean information retrieval[J]. IEEE transactions on knowledge and data engineering, 2006, 18(12):1659-1666.
Similar References:



Last Update: 1900-01-01

Copyright © CAAI Transactions on Intelligent Systems