Abstract
The chapter summarizes main aspects of brain informatics based big data interacting with a social-cyber-physical space of Wisdom Web of Things (W2T). It describes how to realize human-level collective intelligence as a big data sharing mind—a harmonized collectivity of consciousness on the W2T by developing brain inspired intelligent technologies to provide wisdom services, and it proposes five guiding principles to deeper understand the nature of the vigorous interaction and interdependence of brain-body-environment.
Access this chapter
Tax calculation will be finalised at checkout
Purchases are for personal use only
Similar content being viewed by others
References
N. Zhong, J.H. Ma, R.H. Huang, J.M. Liu, Y.Y. Yao, Y.X. Zhang, J.H. Chen, Research challenges and perspectives on wisdom Web of things (W2T). The Journal of Supercomputing 64(3), 862882 (2013)
N. Zhong, J.M. Bradshaw, J. Liu, J.G. Taylor, Brain informatics. IEEE Intelligent Systems 26(5), 16–21 (2011)
J. Chen, J.H. Ma, N. Zhong, Y.Y. Yao, J. Liu, R.H. Huang, W. Li, Z. Huang, Y. Gao, J. Cao, WaaS—Wisdom as a service. IEEE Intelligent Systems 29(6), 40–47 (2014)
D. Douglas, The limits of intelligence. Scientific American 37–43, (July 2011)
F. Heylighen, The global superorganism: an evolutionary-cybernetic model of the emerging network society. Social Evolution & History 6(1), 58119 (2007)
T. Murata, N. Matsui, S. Miyauchi, Y. Kakita, T. Yanagida, Discrete stochastic process underlying perceptual rivalry. NeuroReport 14, 1347–1352 (2003)
O. Sporns, Making sense of brain network data. Nature Methods 10(6), 491–493 (2013)
H.-J. Park, Karl Friston, Structural and functional brain networks: From connections to cognition. Science 342, 1238411 (2013)
T. Horikawa, M. Tamaki, Y. Miyawaki, Y. Kamitani, Neural decoding of visual imagery during sleep. Science 340, 639–642 (2013)
T. Cukur, S. Nishimoto, A.G. Huth, J.L. Gallant, Attention during natural vision warps semantic representation across the human brain. Nature Neuroscience 16, 763–770 (2013)
V.K. Lee, L.T. Harris, How social cognition can inform social decision making. Front Neuroscience. (2013). doi:10.3389/fnins
M. Haruno, C. Frith, Activity in the amygdala elicited by unfair divisions predicts social value orientation. Nature Neuroscience 13, 160–161 (2013)
N. Turk-Browne, Functional interactions as big data in the human brain. Science 342, 580–584 (2013)
T.M. Mitchell, S.V. Shinkareva, A. Carlson, K.M. Chang, V.L. Malave, R.A. Mason, M.A. Just, Predicting human brain activity associated with the meanings of nouns. Science 320, 1191–1195 (2008)
T.A. Keller, M.A. Just, Altering cortical connectivity: Remediation-induced changes in the white matter of poor readers. Neuron 64, 624–631 (2009)
S. Nishimoto, A. T. Vu, T. Naselaris, Y. Benjamini, B. Yu, J. L. Gallant. Reconstructing visual experiences from brain activity evoked by natural movies. Current Biology 21, 1641–1646 (2011)
B. Hu, D. Majoe, M. Ratcliffe, Y. Qi, Q. Zhao, H. Peng, D. Fan, F. Zheng, M. Jackson, P. Moore, EEG-based cognitive interfaces for ubiquitous applications: developments and challenges. IEEE Intelligent Systems 26(5), 46–53 (2011)
D. Fensel, F. van Harmelen, B. Andersson, P. Brennan, H. Cunningham, E.D. Valle, F. Fischer, Z.S. Huang, A. Kiryakov, T.K.-I. Lee, L. Schooler, V. Tresp, S. Wesner, M. Witbrock, N. Zhong, Towards LarKC: a platform for Web-scale reasoning. Proc. ICSC 524–529, 2008 (2008)
N. Zhong, J. Chen, Constructing a new-style conceptual model of brain data for systematic brain informatics. IEEE Transactions on Knowledge and Data Engineering 24(12), 2127–2142 (2012)
G.Y. Wang, J. Xu, Granular computing with multiple granular layers for brain big data processing. Brain Informatics (2014). doi:10.1007/s40708-014-0001-z
G.E. Hinton, R.R. Salakhutdinov, Reducing the dimensionality of data with neural networks. Science 313, 504–507 (2006)
Y. Anzai, Human-robot interaction by information sharing. Proc. HRI 65–66, 2013 (2013)
J.H. Ma, J. Wen, R.H. Huang, B.X. Huang, Cyber-individual meets brain informatics. IEEE Intelligent Systems 26(5), 30–37 (2011)
S. Shimojo, C. Simion, E. Shimojo, C. Scheier, Gaze bias both reflects and influences preference. Nature Neuroscience 6, 1317 (2003)
I. Murakami, A. Kitaoka, H. Ashida, A positive correlation between fixation instability and the strength of illusory motion in a static display. Vision Research 46, 24212431 (2006)
G. Ishimura and S. Shimojo. Voluntary action captures visual motion. Investigative Ophthalmology and Visual Science (Suppl.), 35: 1275, 1994
J.P. Lindsen, R. Jones, S. Shimojo, J. Bhattachary, Neural components underlying subjective preferential decision making. NeuroImage 50, 16261632 (2010)
Acknowledgments
This work was supported by grants from the National Basic Research Program of China (2014CB744600), the International Science & Technology Cooperation Program of China (2013DFA32180), the National Natural Science Foundation of China (61420106005 and 61272345), the Beijing Natural Science Foundation (4132023), and the JSPS Grants-in-Aid for Scientific Research of Japan (26350994).
Author information
Authors and Affiliations
Corresponding author
Editor information
Editors and Affiliations
Rights and permissions
Copyright information
© 2016 Springer International Publishing Switzerland
About this chapter
Cite this chapter
Zhong, N. et al. (2016). Brain Big Data in Wisdom Web of Things. In: Zhong, N., Ma, J., Liu, J., Huang, R., Tao, X. (eds) Wisdom Web of Things. Web Information Systems Engineering and Internet Technologies Book Series. Springer, Cham. https://doi.org/10.1007/978-3-319-44198-6_15
Download citation
DOI: https://doi.org/10.1007/978-3-319-44198-6_15
Published:
Publisher Name: Springer, Cham
Print ISBN: 978-3-319-44196-2
Online ISBN: 978-3-319-44198-6
eBook Packages: Computer ScienceComputer Science (R0)