Discrete time survival function
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Hello, Please I am still very new to MATLAB. I would like to know how to correctly write the overall survival function for each individual in my sample. That is, the likelihood that each individual survives up to the end of the duration less 1. Any help provided will be greatly appreciated. Thanks.
8 comentarios
Image Analyst
el 20 de En. de 2018
Editada: Image Analyst
el 20 de En. de 2018
Impossible to answer. See this link. What is the time periods when you are going to check? Like every 0.01 or something? What is the probability to go from one time period to the next time period. Are you using the equation
numLeft = startingNumber * decayRatePerPeriod ^ numPeriods;
God'stime Eigbiremolen
el 20 de En. de 2018
Walter Roberson
el 20 de En. de 2018
prod(1-h)
for vector h.
That is, each h(i) is a probability of a hazard killing the individual, and the individual does not survive unless it survives all of the hazards, 1-h(i) is the probability of survival, so prod(1-h) is the probability of surviving all of them.
God'stime Eigbiremolen
el 20 de En. de 2018
Walter Roberson
el 20 de En. de 2018
Editada: Walter Roberson
el 20 de En. de 2018
Are the hazards different for each individual? If not then you just calculate survival_rate = prod(1-h) once overall, and after that survival is just
individual_lives = rand(1, number_of_individuals_in_population) <= survival_rate;
to generate a logical vector of whether each individual survives.
God'stime Eigbiremolen
el 20 de En. de 2018
Walter Roberson
el 20 de En. de 2018
If it is the same number of hazards for each (even if that means a bunch of hazards with 0 threat) then you can prod() along the appropriate dimension to get the survival rate for each individual. I do not see any reason to cumprod() at the moment.
God'stime Eigbiremolen
el 21 de En. de 2018
Respuestas (1)
Star Strider
el 20 de En. de 2018
1 voto
There are several discussions of survival analysis in the Statistics and Machine learning Toolbox documentation. See for example the coxphfit (link) function. Follow the links at the end of that page for other extended discussions on the same topic.
4 comentarios
God'stime Eigbiremolen
el 20 de En. de 2018
Star Strider
el 20 de En. de 2018
I did not realise you are using grouped data.
God'stime Eigbiremolen
el 20 de En. de 2018
Star Strider
el 20 de En. de 2018
My pleasure.
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