As part of my data analysis, I am using linear regression analysis to check whether I can predict tomorrow's value using today's data.

My data are about 100 time series of company returns. Here is my code so far:

```
returns <- read.zoo("returns.csv", header=TRUE, sep=",", format="%d-%m-%y")
returns_lag <- lag(returns)
lm_univariate <- lm(returns_lag$companyA ~ returns$companyA)
```

This works without problems, now I wish to run a linear regression for every of the 100 companies. Since setting up each linear regression model manually would take too much time, I would like to use some kind of loop (or apply function) to shorten the process.

My approach:

```
test <- lapply(returns_lag ~ returns, lm)
```

But this leads to the error "unexpected symbol in "test2" " since the tilde is not being recognized there.

So, basically I want to run a linear regression for every company separately.

The only question that looks similar to what I wanted is Linear regression of time series over multiple columns , however there the data seems to be stored in a matrix and the code example is quite messy compared to what I was looking for.