how to solve predict.lm() error: variable 'aff

2019-02-25 11:19发布

I have a simple linear model:

mylm = lm(formula = prodRate~affinity, mydf)

where mydf is a dataframe which looks like:

 prodRate    affinity

1  2643.5744 0.005164040

2  2347.6923 0.004439970

3  1783.6819 0.003322830

when I use predict.lm() an error came up:

my_pred= predict(mylm,newdata=data.frame(affinity=seq(0,1,0.1)) )

Error: variable 'affinity' was fitted with type "nmatrix.1" but type "numeric" was supplied.

Why is that? how to fix it? Thanks!

标签: r predict
1条回答
仙女界的扛把子
2楼-- · 2019-02-25 12:15

Thanks to the discussion with user20650 (see above), the bug was identified:

The mydf in mylm = lm(formula = prodRate~affinity, mydf) was created by adding an matrix-like column to the existed dataframe mydf as following:

mydf$affinity = matrix(somenumber)

i.e. the "affinity" column in mydf is made from a matrix and its structure remains as matrix. This matrix structure is NOT consistent with the "affinity" column in newdata=data.frame(affinity=seq(0,1,0.1)) in predict(mylm,newdata=...), which is a numeric vector.

solution1: fix mydf as following mydf <- data.frame(prodRate , affinity). i.e. make sure that the affinity column of mydf has a vector-like structure

solution2: keep the original mydf but enforce mydf$affinity as vector in the fomular: mylm <- lm(formula = prodRate ~ as.vector(affinity), mydf) so that the independent variable "affinity" in the linear model "mylm" has the vector-like structure instead of matrix-like structure, which will be consistent with the newdata=data.frame(affinity=seq(0,1,0.1)) in predict(mylm,newdata=...), which is a numeric vector.

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