Molecular reconstruction of vacuum gas oils using a general molecule library through entropy maximization

Author(s):  
Na Wang ◽  
Chong Peng ◽  
Zhenmin Cheng ◽  
Zhiming Zhou
Keyword(s):  
1988 ◽  
Vol 38 (7) ◽  
pp. 2288-2290 ◽  
Author(s):  
Fujio Takagi ◽  
Tatsuo Tsukamoto

2003 ◽  
Author(s):  
Renata Smolikova ◽  
Mark P. Wachowiak ◽  
Jacek M. Zurada

2014 ◽  
Vol 17 (03n04) ◽  
pp. 1450016 ◽  
Author(s):  
V. I. YUKALOV ◽  
D. SORNETTE

The idea is advanced that self-organization in complex systems can be treated as decision making (as it is performed by humans) and, vice versa, decision making is nothing but a kind of self-organization in the decision maker nervous systems. A mathematical formulation is suggested based on the definition of probabilities of system states, whose particular cases characterize the probabilities of structures, patterns, scenarios, or prospects. In this general framework, it is shown that the mathematical structures of self-organization and of decision making are identical. This makes it clear how self-organization can be seen as an endogenous decision making process and, reciprocally, decision making occurs via an endogenous self-organization. The approach is illustrated by phase transitions in large statistical systems, crossovers in small statistical systems, evolutions and revolutions in social and biological systems, structural self-organization in dynamical systems, and by the probabilistic formulation of classical and behavioral decision theories. In all these cases, self-organization is described as the process of evaluating the probabilities of macroscopic states or prospects in the search for a state with the largest probability. The general way of deriving the probability measure for classical systems is the principle of minimal information, that is, the conditional entropy maximization under given constraints. Behavioral biases of decision makers can be characterized in the same way as analogous to quantum fluctuations in natural systems.


Author(s):  
Apurba Roy ◽  
Santi P. Maity

In many practical situations, magnetic resonance imaging (MRI) needs reconstruction of images at low measurements, far below the Nyquist rate, as sensing process may be very costly and slow enough so that one can measure the coefficients only a few times. Segmentation of such subsampled reconstructed MR images for medical analysis and diagnosis becomes a challenging task due to the inherent complex characteristics of the MR images. This paper considers reconstruction of MR images at compressive sampling (or compressed sensing (CS)) paradigm followed by its segmentation in an integrated platform. Image reconstruction is done from incomplete measurement space with random noise injection iteratively. A weighted linear prediction is done for the unobserved space followed by spatial domain denoising through adaptive recursive filtering. The reconstructed images, however, suffer from imprecise and/or missing edges, boundaries, lines, curvatures etc. and residual noise. Curvelet transform (CT) is purposely used for removal of noise and for edge enhancement through hard thresholding and suppression of approximate subbands, respectively. Then a fuzzy entropy-based clustering, using genetic algorithms (GAs), is done for segmentation of sharpen MR Image. Extensive simulation results are shown to highlight performance improvement of both image reconstruction and segmentation of the reconstructed images along with relative gain over the existing works.


Nature ◽  
1992 ◽  
Vol 355 (6361) ◽  
pp. 605-609 ◽  
Author(s):  
W. Dong ◽  
T. Baird ◽  
J. R. Fryer ◽  
C. J. Gilmore ◽  
D. D. MacNicol ◽  
...  

2009 ◽  
Vol 373 (36) ◽  
pp. 3230-3234 ◽  
Author(s):  
G. Baris Bagci ◽  
Ugur Tirnakli

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