Exponential Distribution
- Let T = time until next (y=1) occur
- Fixes the “event” and says “how much time goes by until an event occurs”
Remember this about the survival function for exponential distribution:
\(S(t) = P(T>t)\) \(P(T>t) = 1-P(T \leq t)\) \(1-P(T \leq t) = 1-F(t)\) \(1-F(t) = 1-[1 - e^{-\lambda t}]\) \(S(t) = e^{-\lambda t}\)
The lambda sign in the survival function is the hazard. So it can be re-written as
\[S(t) = e^{HAZ * t}\]In order to estimate the survival function for exponential model, we think of the survival model as a negative exponential curve. To estimate the rate at which survival is decreasing, we can model the hazard in two ways:
\(HAZ = e^{b_0 + b_1 X_1 ... b_k X_k}\) \(ln(HAZ) = b_0 + b_1 X_1 ... b_k X_k\)
- b-naught is the the log-hazard for reference at
t=0
Graph:
- 113.020.010.10.20 Regression models - Exponential Distribution to 113.020.010.10 Regression - Regression Models
- 113.020.010.10 Regression - Regression Models to 113.020.010.10.20 Regression models - Exponential Distribution
- 113.020.010.10.30 Regression models - Diff between Expo vs Weibull vs Cox to 113.020.010.10.20 Regression models - Exponential Distribution
- 113.020.020.50 Survival Analysis - Proportional Hazards PH to 113.020.010.10.20 Regression models - Exponential Distribution
- 113.020.020.50.10 Proportional Hazards - Mathematical desc of Cox PH to 113.020.010.10.20 Regression models - Exponential Distribution