289 research outputs found
Computational models of consumer confidence from large-scale online attention data: crowd-sourcing econometrics
Economies are instances of complex socio-technical systems that are shaped by
the interactions of large numbers of individuals. The individual behavior and
decision-making of consumer agents is determined by complex psychological
dynamics that include their own assessment of present and future economic
conditions as well as those of others, potentially leading to feedback loops
that affect the macroscopic state of the economic system. We propose that the
large-scale interactions of a nation's citizens with its online resources can
reveal the complex dynamics of their collective psychology, including their
assessment of future system states. Here we introduce a behavioral index of
Chinese Consumer Confidence (C3I) that computationally relates large-scale
online search behavior recorded by Google Trends data to the macroscopic
variable of consumer confidence. Our results indicate that such computational
indices may reveal the components and complex dynamics of consumer psychology
as a collective socio-economic phenomenon, potentially leading to improved and
more refined economic forecasting.Comment: 21 pages, 6 figures, 13 table
An Algorithm to Determine Peer-Reviewers
The peer-review process is the most widely accepted certification mechanism
for officially accepting the written results of researchers within the
scientific community. An essential component of peer-review is the
identification of competent referees to review a submitted manuscript. This
article presents an algorithm to automatically determine the most appropriate
reviewers for a manuscript by way of a co-authorship network data structure and
a relative-rank particle-swarm algorithm. This approach is novel in that it is
not limited to a pre-selected set of referees, is computationally efficient,
requires no human-intervention, and, in some instances, can automatically
identify conflict of interest situations. A useful application of this
algorithm would be to open commentary peer-review systems because it provides a
weighting for each referee with respects to their expertise in the domain of a
manuscript. The algorithm is validated using referee bid data from the 2005
Joint Conference on Digital Libraries.Comment: Rodriguez, M.A., Bollen, J., "An Algorithm to Determine
Peer-Reviewers", Conference on Information and Knowledge Management, in
press, ACM, LA-UR-06-2261, October 2008; ISBN:978-1-59593-991-
How the Scientific Community Reacts to Newly Submitted Preprints: Article Downloads, Twitter Mentions, and Citations
We analyze the online response to the preprint publication of a cohort of
4,606 scientific articles submitted to the preprint database arXiv.org between
October 2010 and May 2011. We study three forms of responses to these
preprints: downloads on the arXiv.org site, mentions on the social media site
Twitter, and early citations in the scholarly record. We perform two analyses.
First, we analyze the delay and time span of article downloads and Twitter
mentions following submission, to understand the temporal configuration of
these reactions and whether one precedes or follows the other. Second, we run
regression and correlation tests to investigate the relationship between
Twitter mentions, arXiv downloads and article citations. We find that Twitter
mentions and arXiv downloads of scholarly articles follow two distinct temporal
patterns of activity, with Twitter mentions having shorter delays and narrower
time spans than arXiv downloads. We also find that the volume of Twitter
mentions is statistically correlated with arXiv downloads and early citations
just months after the publication of a preprint, with a possible bias that
favors highly mentioned articles.Comment: 15 pages, 7 Figures, 3 Tables. PLoS One, in pres
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