I am trying to calculate a regression variable based on a range of variables in my data set. I would like the regression variable (ei: Threshold 1) to be calculated using a different variable set in each iteration of running the regression.

Aim to collected SSR values for each threshold range, and thus identify the ideal threshold based on the data.

Data (df) variables: Yield, Prec, Price, 0C, 1C, 2C, 3C, 4C, 5C, 6C, 7C, 8C, 9C, 10C

Each loop calculates "thresholds" by selecting a different "b" each time.

```
a <- df$0C
b <- df$1C
Threshold1 <- (a-b)
Threshold2 <- (b)
```

Where "b" would be changing in each loop, ranging from 1C to 9C.

Each individual threshold set (1 and 2) should be used to run a regression, and save the SSR for comparison with the subsequent regression utilizing thresholds based on a new "b" value (ranging from 1C TO 9C)

Regression:

```
reg <- lm(log(Yield)~Threshold1+Threshold2+log(Price)+prec+I(prec^2),data=df)
```

for each loop of the Regression, I vary the components of calculating thresholds in the following manner:

Current approach is centered around the following code:

```
df <- read.csv("Data.csv",header=TRUE)
names(df)
0C-9Cvarlist <- names(df)[9:19]
ssr.vec <- matrix(,21,1)
for(i in 1:length(varlist)){
a <- df$0C
b <- df$[i]
Threshold1 <- (a-b)
Threshold2 <- (b)
reg <- lm(log(Yield)~Threshold1+Threshold2+log(Price)+prec+I(prec^2),data=df)
r2 <- summary(reg)$r.squared
ssr.vec[i,] <- c(varlist,r2)
}
colnames(ssr.vec) <- c("varlist","r2")
```

I am failing to achieve the desired result with the above approach.

Thank you.