Biomedical Engineering Reference
In-Depth Information
200. Chandler D. 1987. Introduction to modern statistical mechanics . Oxford UP, Oxford.
201. Reed WJ, Hughes BD. 2002. From gene families and genera to incomes and Internet file sizes:
why power laws are so common in nature. Phys Rev E 66:067103.
202. Bak P, Tang C, Wiesenfeld K. 1987. Self-organized criticality: An explanation of 1/f noise.
Phys Rev Lett 59 :381-384.
203. Jensen HJ. 1998. Self-organized criticality: emergent complex behavior in physical and bio-
logical systems . Cambridge UP, Cambridge.
204. Carlson JM, Doyle J. 1999. Highly optimized tolerance: A mechanism for power laws in de-
signed systems. Phys Rev E 60 :1412-1427.
205. Carlson JM, Doyle J. 2000. Highly optimized tolerance: robustness and design in complex
systems. Phys Rev Lett 84 :2529-2532.
206. Newman MEJ, Girvan M, Farmer JD. 2002. Optimal design, robustness, and risk aversion.
Phys Rev Lett 89:028301 (http://arxiv.org/abs/cond-mat/0202330).
207. Shirky C. 2003. Power laws, weblogs, and inequality. In Extreme democracy . Ed. M Ratcliffe,
J Lebkowsky. Forthcoming. First published online February 2003 (http://www.shirky.com/
writings/powerlaw_weblog.html).
208. Drenzer D, Farrell H. 2004. The power and politics of blogs. Persp Politics . Submitted
(http://www.utsc.utoronto.ca/~farrell/blogpaperfinal.pdf).
209. Crutchfield JP, Shalizi CR. 1999. Thermodynamic depth of causal states: objective complexity
via minimal representations. Phys Rev E 59 :275-283 (http://arxiv.org/abs/cond-mat/9808147).
210. Huberman BA, Hogg T. 1986. Complexity and adaptation. Physica D 22 :376-384.
211. Wolpert DH, Macready WG. 2000. Self-dissimilarity: an empirically observable measure of
complexity. In Unifying themes in complex systems . Ed. Y Bar-Yam. Perseus Books, Boston
(http://www.santafe.edu/research/publications/wpabstract/199712087).
212. Sporns O, Tononi G, Edelman GM. 2000. Connectivity and complexity: the relationship be-
tween neuroanatomy and brain dynamics. Neural Networks 13 :909-992 (http://php.indiana.
edu/~osporns/nn_connectivity.pdf).
213. Sporns O, Tononi G, Edelman GM. 2000. Theoretical neuroanatomy: Relating anatomical
and functional connectivity in graphs and cortical connection matrices. Cerebral Cortex
10 :127-141.
214. Sporns O, Tononi G. 2002. Classes of network connectivity and dynamics. Complexity 7 :28-
38 (http://php.indiana.edu/~osporns/complexity_2002.pdf).
215. Bates J, Shepard H. 1993. Measuring complexity using information fluctuation. Phys Lett A
172 :416-425 (http://physics.unh.edu/people/profiles/bates_shepard.pdf).
216. Boffetta G, Cencini M, Falcioni M, Vulpiani A. 2002. Predictability: A way to characterize
complexity. Phys Rep 356 :367-474 (http://arxiv.org/abs/nlin.CD/0101029).
217. Feldman DP, Crutchfield JP. 1998. Measures of statistical complexity: why? Phys Lett A
238 :244-252 (http://hornacek.coa.edu/dave/Publications/MSCW.html).
218. Axelrod R, Cohen MD. 1999. Harnessing complexity: organizational implications of a scien-
tific frontier . Free Press, New York.
219. Flake GW. 1998. The computational beauty of nature: computer explorations of fractals,
chaos, complex systems and adaptation . MIT Press, Cambridge.
220. Holland JH. 1998. Emergence: from chaos to order . Addison-Wesley, Reading.
221. Simon HA. 1996. The sciences of the artificial , 3rd ed. MIT Press, Cambridge.
222. Boccara N. 2004. Modeling complex systems . Springer, Berlin.
223. Hand D, Mannila H, Smyth P. 2001. Principles of data mining . MIT Press, Cambridge.
224. Kearns MJ, Vazirani UV. 1994. An introduction to computational learning theory . MIT Press,
Cambridge.
225. Vapnik VN. 1979/1982. Estimation of dependencies based on empirical data . Transl. S Kotz.
Springer, Berlin. From Vosstanovlyenie Zavicimostei po Empiricheckim Dannim , Nauka, Mos-
cow.
226. Vapnik VN. 1998. Statistical learning theory . Wiley, New York.
Search WWH ::




Custom Search