scholarly journals Inferring propagation paths for sparsely observed perturbations on complex networks

2016 ◽  
Vol 2 (10) ◽  
pp. e1501638 ◽  
Author(s):  
Francesco Alessandro Massucci ◽  
Jonathan Wheeler ◽  
Raúl Beltrán-Debón ◽  
Jorge Joven ◽  
Marta Sales-Pardo ◽  
...  

In a complex system, perturbations propagate by following paths on the network of interactions among the system’s units. In contrast to what happens with the spreading of epidemics, observations of general perturbations are often very sparse in time (there is a single observation of the perturbed system) and in “space” (only a few perturbed and unperturbed units are observed). A major challenge in many areas, from biology to the social sciences, is to infer the propagation paths from observations of the effects of perturbation under these sparsity conditions. We address this problem and show that it is possible to go beyond the usual approach of using the shortest paths connecting the known perturbed nodes. Specifically, we show that a simple and general probabilistic model, which we solved using belief propagation, provides fast and accurate estimates of the probabilities of nodes being perturbed.

2019 ◽  
Author(s):  
JUAN DAVID LUJÁN VILLAR

There are different perspectives of the complexity sciences (CC) and the complex. A large part of the academic community of the social sciences is the same synonymous with uncertainty (Wallerstein, 2005), for other thinkers related to a literary perspective the matter a form of thought (Morin, 2005). Other views take into account the CC as an area that causes problems related to the study of the social with an innumerable range of impacts (Reynoso, 2016). This writing part of the reflection was carried out during the development of a social science research (Luján, 2016). Epistemological debt in the sense of explaining the task of understanding the aspects of covering complexity beyond the usual jargon in the concepts of non-linearity, self-organization, fractals and complex networks, among others.


Author(s):  
Vinicius M. Netto ◽  
Edgardo Brigatti ◽  
João Meirelles ◽  
Fabiano Ribeiro ◽  
Bruno Pace ◽  
...  

From physics to the social sciences, information is now seen as a fundamental component of reality. However, a form of information seems still underestimated, perhaps precisely because it is so pervasive that we take it for granted: the information encoded in the very environment we live in. We still do not fully understand how information takes the form of cities, and how our minds deal with it in order to learn about the world, make daily decisions, and take part in the complex system of interactions we create as we live together. This paper addresses three related problems that need to be solved if we are to understand the role of environmental information: (1) the physical problem: how can we create and preserve information in the built environment? (2) The semantic problem: how do we make environmental information meaningful? And (3) the pragmatic problem: how do we enact environmental information in our lives? Attempting to devise a solution to these problems, it proposes a framework to approach how information bridges minds, environment and society, and helps us create large-scale systems of interaction.


Methodology ◽  
2006 ◽  
Vol 2 (1) ◽  
pp. 42-47 ◽  
Author(s):  
Bonne J. H. Zijlstra ◽  
Marijtje A. J. van Duijn ◽  
Tom A. B. Snijders

The p 2 model is a random effects model with covariates for the analysis of binary directed social network data coming from a single observation of a social network. Here, a multilevel variant of the p 2 model is proposed for the case of multiple observations of social networks, for example, in a sample of schools. The multilevel p 2 model defines an identical p 2 model for each independent observation of the social network, where parameters are allowed to vary across the multiple networks. The multilevel p 2 model is estimated with a Bayesian Markov Chain Monte Carlo (MCMC) algorithm that was implemented in free software for the statistical analysis of complete social network data, called StOCNET. The new model is illustrated with a study on the received practical support by Dutch high school pupils of different ethnic backgrounds.


Methodology ◽  
2019 ◽  
Vol 15 (1) ◽  
pp. 19-30 ◽  
Author(s):  
Knut Petzold ◽  
Tobias Wolbring

Abstract. Factorial survey experiments are increasingly used in the social sciences to investigate behavioral intentions. The measurement of self-reported behavioral intentions with factorial survey experiments frequently assumes that the determinants of intended behavior affect actual behavior in a similar way. We critically investigate this fundamental assumption using the misdirected email technique. Student participants of a survey were randomly assigned to a field experiment or a survey experiment. The email informs the recipient about the reception of a scholarship with varying stakes (full-time vs. book) and recipient’s names (German vs. Arabic). In the survey experiment, respondents saw an image of the same email. This validation design ensured a high level of correspondence between units, settings, and treatments across both studies. Results reveal that while the frequencies of self-reported intentions and actual behavior deviate, treatments show similar relative effects. Hence, although further research on this topic is needed, this study suggests that determinants of behavior might be inferred from behavioral intentions measured with survey experiments.


1970 ◽  
Vol 15 (9) ◽  
pp. 586-587
Author(s):  
JOEL SMITH

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