Team:NTNU Trondheim/Modeling
From 2011.igem.org
(Difference between revisions)
(→The Models) |
|||
Line 20: | Line 20: | ||
== The Models== | == The Models== | ||
- | |||
=== Systems of ODE === | === Systems of ODE === | ||
Line 27: | Line 26: | ||
=== Bayesian Hierarchy === | === Bayesian Hierarchy === | ||
We then wish to model the reliability for the observations... That is the probability of false positive/negative results | We then wish to model the reliability for the observations... That is the probability of false positive/negative results | ||
- | + | P(RTF = 1|stress)<sup>T</sup> | |
and opposite. | and opposite. | ||
Having the observations from the lab | Having the observations from the lab | ||
- | + | x = (x<sub>1</sub> , x<sub>2</sub> , · · · · , x<sub>n</sub>) | |
- | were | + | were x<sub>i</sub> is under condition C = 1 (stress) , and y<sub>j</sub> is under condition C = 0 (no stress). |
=== Linear Classification === | === Linear Classification === |
Revision as of 20:58, 11 July 2011
Modeling
3 types of models: Systems of ODE, Bayesian hierarchy and linear classification problems (LDA or similar). To be continued....
Model Introduction
-What to model
-How to model
The Models
Systems of ODE
Bayesian Hierarchy
We then wish to model the reliability for the observations... That is the probability of false positive/negative results P(RTF = 1|stress)T and opposite. Having the observations from the lab
x = (x1 , x2 , · · · · , xn)
were xi is under condition C = 1 (stress) , and yj is under condition C = 0 (no stress).
Linear Classification
Non-linear Classification
Model Validation
References