6,579 research outputs found
Modelling Epsilon Aurigae without solid particles
Three components can be expected to contribute to the emission of epsilon Aurigae. There is a primary F star. There is an opaque disk which occults it, and there is a gas stream which is observed to produce absorption lines. Evidence that the disk is not responsible for the gas stream lines comes both from the radial velocities, which are too small, and from the IR energy distribution out of eclipse, which shows free-free emission that would produce inadequate optical depth in electron scattering. The color temperature of the IR excess can give misleading indications of low temperature material. Free-free emission at 10,000 K between 10 and 20 microns has a color temperature of 350 K. Attempts to mold the system are discussed
Data mining using Matlab
Data mining is a relatively new field emerging in many disciplines. It is becoming more
popular as technology advances, and the need for efficient data analysis is required.
The aim of data mining itself is not to provide strict rules by analysing the full data
set, data mining is used to predict with some certainty while only analysing a small
portion of the data. This project seeks to compare the efficiency of a decision tree
induction method with that of the neural network method.
MATLAB has inbuilt data mining toolboxes. However the decision tree induction
method is not as yet implemented. Decision tree induction has been implemented in
several forms in the past. The greatest contribution to this method has been made by
DR John Ross Quinlan, who has brought forward this method in the form of ID3, C4.5
and C5 algorithms. The methodologies used within ID3 and C4.5 are well documented
and therefore provide a strong platform for the implementation of this method within
a higher level language.
The objectives of this study are to fully comprehend two methods of data mining,
namely decision tree induction and neural networks. The decision tree induction
method is to be implemented within the mathematical computer language MATLAB.
The results found when analysing some suitable data will be compared with the results
from the neural network toolbox already implemented in MATLAB.
The data used to compare and contrast the two methods included voting records from
the US House of Representatives, which consists of yes, no and undecided votes on sixteen
separate issues. The voters are grouped into categories according to their political
party. This can be either republican or democratic. The objective of using this data
set is to predict what party a congressman is affiliated with by analysing their voting
trends.
The findings of this study reveal that the decision tree method can accurately predict
outcomes if an ideal data set is used for building the tree. The neural network method
has less accuracy in some situations however it is more robust towards unexpected data
No Nogo Now Where to Go?
AbstractNogo-A, a reticulon protein expressed by oligodendrocytes, contributes to the axonal growth inhibitory action of central myelin in growth cone collapse and neurite outgrowth in vitro assays, and antibody and inhibitor studies have implicated a role for Nogo in regeneration in the adult CNS in vivo. Three independent labs have now produced Nogo knockout mice with, quite unexpectedly, three different regeneration phenotypes
Pain TRPs
Transient receptor potential (TRP) ion channels are molecular gateways in sensory systems, an interface between the environment and the nervous system. Several TRPs transduce thermal, chemical, and mechanical stimuli into inward currents, an essential first step for eliciting thermal and pain sensations. Precise regulation of the expression, localization, and function of the TRP channels is crucial for their sensory role in nociceptor terminals, particularly after inflammation, when they contribute to pain hypersensitivity by undergoing changes in translation and trafficking as well as diverse posttranslational modifications
Partially observed bipartite network analysis to identify predictive connections in transcriptional regulatory networks
<p>Abstract</p> <p>Background</p> <p>Messenger RNA expression is regulated by a complex interplay of different regulatory proteins. Unfortunately, directly measuring the individual activity of these regulatory proteins is difficult, leaving us with only the resulting gene expression pattern as a marker for the underlying regulatory network or regulator-gene associations. Furthermore, traditional methods to predict these regulator-gene associations do not define the relative importance of each association, leading to a large number of connections in the global regulatory network that, although true, are not useful.</p> <p>Results</p> <p>Here we present a Bayesian method that identifies which known transcriptional relationships in a regulatory network are consistent with a given body of static gene expression data by eliminating the non-relevant ones. The Partially Observed Bipartite Network (POBN) approach developed here is tested using <it>E. coli </it>expression data and a transcriptional regulatory network derived from RegulonDB. When the regulatory network for <it>E. coli </it>was integrated with 266 <it>E. coli </it>gene chip observations, POBN identified 93 out of 570 connections that were either inconsistent or not adequately supported by the expression data.</p> <p>Conclusion</p> <p>POBN provides a systematic way to integrate known transcriptional networks with observed gene expression data to better identify which transcriptional pathways are likely responsible for the observed gene expression pattern.</p
Joint distributions of waves and rain
The transfer of gases between the atmosphere and ocean is affected by a number of processes, of which wave action and rainfall are two of potential significance. Efforts have been made to quantify separately their contributions; however such assessments neglect the interaction of these phenomena. Here we look at the correlation statistics of waves and rain to note which regions display a strong association between rainfall and the local sea state. The conditional probability of rain varies from ~0.5% to ~15%, with most of the equatorial belt (which contains the ITCZ) showing a greater likelihood of rain at the lowest sea states. In contrast the occurrence of rain is independent of wave height in the Southern Ocean. The 1997/98 El NiƱo enhances the frequency of rain in some Pacific regions, with this change showing some association with wave conditions
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