1,018 research outputs found
Estimating mutual information and multi--information in large networks
We address the practical problems of estimating the information relations
that characterize large networks. Building on methods developed for analysis of
the neural code, we show that reliable estimates of mutual information can be
obtained with manageable computational effort. The same methods allow
estimation of higher order, multi--information terms. These ideas are
illustrated by analyses of gene expression, financial markets, and consumer
preferences. In each case, information theoretic measures correlate with
independent, intuitive measures of the underlying structures in the system
From modes to movement in the behavior of C. elegans
Organisms move through the world by changing their shape, and here we explore
the mapping from shape space to movements in the nematode C. elegans as it
crawls on a planar agar surface. We characterize the statistics of the
trajectories through the correlation functions of the orientation angular
velocity, orientation angle and the mean-squared displacement, and we find that
the loss of orientational memory has significant contributions from both
abrupt, large amplitude turning events and the continuous dynamics between
these events. Further, we demonstrate long-time persistence of orientational
memory in the intervals between abrupt turns. Building on recent work
demonstrating that C. elegans movements are restricted to a low-dimensional
shape space, we construct a map from the dynamics in this shape space to the
trajectory of the worm along the agar. We use this connection to illustrate
that changes in the continuous dynamics reveal subtle differences in movement
strategy that occur among mutants defective in two classes of dopamine
receptors
Information based clustering
In an age of increasingly large data sets, investigators in many different
disciplines have turned to clustering as a tool for data analysis and
exploration. Existing clustering methods, however, typically depend on several
nontrivial assumptions about the structure of data. Here we reformulate the
clustering problem from an information theoretic perspective which avoids many
of these assumptions. In particular, our formulation obviates the need for
defining a cluster "prototype", does not require an a priori similarity metric,
is invariant to changes in the representation of the data, and naturally
captures non-linear relations. We apply this approach to different domains and
find that it consistently produces clusters that are more coherent than those
extracted by existing algorithms. Finally, our approach provides a way of
clustering based on collective notions of similarity rather than the
traditional pairwise measures.Comment: To appear in Proceedings of the National Academy of Sciences USA, 11
pages, 9 figure
The role of input noise in transcriptional regulation
Even under constant external conditions, the expression levels of genes
fluctuate. Much emphasis has been placed on the components of this noise that
are due to randomness in transcription and translation; here we analyze the
role of noise associated with the inputs to transcriptional regulation, the
random arrival and binding of transcription factors to their target sites along
the genome. This noise sets a fundamental physical limit to the reliability of
genetic control, and has clear signatures, but we show that these are easily
obscured by experimental limitations and even by conventional methods for
plotting the variance vs. mean expression level. We argue that simple, global
models of noise dominated by transcription and translation are inconsistent
with the embedding of gene expression in a network of regulatory interactions.
Analysis of recent experiments on transcriptional control in the early
Drosophila embryo shows that these results are quantitatively consistent with
the predicted signatures of input noise, and we discuss the experiments needed
to test the importance of input noise more generally.Comment: 11 pages, 5 figures minor correction
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