5,982 research outputs found
Stochastic Block Transition Models for Dynamic Networks
There has been great interest in recent years on statistical models for
dynamic networks. In this paper, I propose a stochastic block transition model
(SBTM) for dynamic networks that is inspired by the well-known stochastic block
model (SBM) for static networks and previous dynamic extensions of the SBM.
Unlike most existing dynamic network models, it does not make a hidden Markov
assumption on the edge-level dynamics, allowing the presence or absence of
edges to directly influence future edge probabilities while retaining the
interpretability of the SBM. I derive an approximate inference procedure for
the SBTM and demonstrate that it is significantly better at reproducing
durations of edges in real social network data.Comment: To appear in proceedings of AISTATS 201
NIR/Optical Selected Local Mergers --- Spatial Density and sSFR Enhancement
Mergers play important roles in triggering the most active objects in the
universe, including (U)LIRGs and QSOs. However, whether they are also important
for the total stellar mass build-up in galaxies in general is unclear and
controversial. The answer to that question depends on the merger rate and the
average strength of merger induced star formation. In this talk, I will review
studies on spatial density and sSFR enhancement of local mergers found in
NIR/optical selected pair samples. In line with the current literature on
galaxy formation/evolution, special attention will be paid to the dependence of
the local merger rate and of the sSFR enhancement on four fundamental
observables: (1) stellar mass, (2) mass ratio, (3) separation, and (4)
environment.Comment: A review talk; 8 pages; to appear on the Conference Proceedings for
"Galaxy Mergers in an Evolving Universe", held in Hualien, Taiwan (October
2011
Personalized Degrees: Effects on Link Formation in Dynamic Networks from an Egocentric Perspective
Understanding mechanisms driving link formation in dynamic social networks is
a long-standing problem that has implications to understanding social structure
as well as link prediction and recommendation. Social networks exhibit a high
degree of transitivity, which explains the successes of common neighbor-based
methods for link prediction. In this paper, we examine mechanisms behind link
formation from the perspective of an ego node. We introduce the notion of
personalized degree for each neighbor node of the ego, which is the number of
other neighbors a particular neighbor is connected to. From empirical analyses
on four on-line social network datasets, we find that neighbors with higher
personalized degree are more likely to lead to new link formations when they
serve as common neighbors with other nodes, both in undirected and directed
settings. This is complementary to the finding of Adamic and Adar that neighbor
nodes with higher (global) degree are less likely to lead to new link
formations. Furthermore, on directed networks, we find that personalized
out-degree has a stronger effect on link formation than personalized in-degree,
whereas global in-degree has a stronger effect than global out-degree. We
validate our empirical findings through several link recommendation experiments
and observe that incorporating both personalized and global degree into link
recommendation greatly improves accuracy.Comment: To appear at the 10th International Workshop on Modeling Social Media
co-located with the Web Conference 201
A Generalized Coupon Collector Problem
This paper provides analysis to a generalized version of the coupon collector
problem, in which the collector gets distinct coupons each run and she
chooses the one that she has the least so far. On the asymptotic case when the
number of coupons goes to infinity, we show that on average runs are needed to collect sets
of coupons. An efficient exact algorithm is also developed for any finite case
to compute the average needed runs exactly. Numerical examples are provided to
verify our theoretical predictions.Comment: 20 pages, 6 figures, preprin
- β¦