567 research outputs found
Modeling adoption of innovations in agriculture using discrete choice models
This paper is concerned with the development of varieties and fertilization techniques of greenhouse tomatoes, and their spatial diffusion in the northwestern region of the Negev in Israel. The main objective of the paper is to identify the factors affecting the farmers’ decision to adopt innovations and the factors inducing the process of knowledge-diffusion in the rural region. The approach adopted is the use of discrete choice models based on random utility theory. Results of the empirical analysis when applying the disaggregate Logit Model indicate that the regional, local and individual attributes have a significant bearing on the farmers’ decision-making process in regard to choosing among alternative tomato varieties and fertilization techniques. The findings indicate that the models constructed for this study may be used as a planning tool for the purpose of evaluating the effect of different factors on the spatial diffusion of innovations in rural regions. The results of the research could also assist decision-makers in formulating development policies for rural regions. Keywords: Spatial diffusion; discrete choice models; greenhouse tomatoes; nested logit
Breakdown of the Internet under intentional attack
We study the tolerance of random networks to intentional attack, whereby a
fraction p of the most connected sites is removed. We focus on scale-free
networks, having connectivity distribution of P(k)~k^(-a) (where k is the site
connectivity), and use percolation theory to study analytically and numerically
the critical fraction p_c needed for the disintegration of the network, as well
as the size of the largest connected cluster. We find that even networks with
a<=3, known to be resilient to random removal of sites, are sensitive to
intentional attack. We also argue that, near criticality, the average distance
between sites in the spanning (largest) cluster scales with its mass, M, as
sqrt(M), rather than as log_k M, as expected for random networks away from
criticality. Thus, the disruptive effects of intentional attack become relevant
even before the critical threshold is reached.Comment: Latex, 4 pages, 3 eps figure
Anomalous biased diffusion in networks
We study diffusion with a bias towards a target node in networks. This
problem is relevant to efficient routing strategies in emerging communication
networks like optical networks. Bias is represented by a probability of the
packet/particle to travel at every hop towards a site which is along the
shortest path to the target node. We investigate the scaling of the mean first
passage time (MFPT) with the size of the network. We find by using theoretical
analysis and computer simulations that for Random Regular (RR) and
Erd\H{o}s-R\'{e}nyi (ER) networks, there exists a threshold probability,
, such that for the MFPT scales anomalously as ,
where is the number of nodes, and depends on . For
the MFPT scales logarithmically with . The threshold value of the
bias parameter for which the regime transition occurs is found to depend only
on the mean degree of the nodes. An exact solution for every value of is
given for the scaling of the MFPT in RR networks. The regime transition is also
observed for the second moment of the probability distribution function, the
standard deviation.Comment: 13 Pages, To appear in PR
Modeling adoption of innovations in agriculture using discrete choice models
This paper is concerned with the development of varieties and fertilization techniques of greenhouse tomatoes, and their spatial diffusion in the northwestern region of the Negev in Israel. The main objective of the paper is to identify the factors affecting the farmers’ decision to adopt innovations and the factors inducing the process of knowledge-diffusion in the rural region. The approach adopted is the use of discrete choice models based on random utility theory. Results of the empirical analysis when applying the disaggregate Logit Model indicate that the regional, local and individual attributes have a significant bearing on the farmers’ decision-making process in regard to choosing among alternative tomato varieties and fertilization techniques. The findings indicate that the models constructed for this study may be used as a planning tool for the purpose of evaluating the effect of different factors on the spatial diffusion of innovations in rural regions. The results of the research could also assist decision-makers in formulating development policies for rural regions. Keywords: Spatial diffusion; discrete choice models; greenhouse tomatoes; nested logi
Distributed Computations with Layered Resolution
Modern computationally-heavy applications are often time-sensitive, demanding
distributed strategies to accelerate them. On the other hand, distributed
computing suffers from the bottleneck of slow workers in practice. Distributed
coded computing is an attractive solution that adds redundancy such that a
subset of distributed computations suffices to obtain the final result.
However, the final result is still either obtained within a desired time or
not, and for the latter, the resources that are spent are wasted. In this
paper, we introduce the novel concept of layered-resolution distributed coded
computations such that lower resolutions of the final result are obtained from
collective results of the workers -- at an earlier stage than the final result.
This innovation makes it possible to have more effective deadline-based
systems, since even if a computational job is terminated because of timing, an
approximated version of the final result can be released. Based on our
theoretical and empirical results, the average execution delay for the first
resolution is notably smaller than the one for the final resolution. Moreover,
the probability of meeting a deadline is one for the first resolution in a
setting where the final resolution exceeds the deadline almost all the time,
reducing the success rate of the systems with no layering
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