[R] memory limit in aov

Lucy Crooks Lucy.Crooks at env.ethz.ch
Thu Feb 2 11:35:03 CET 2006


Thanks for your reply.

Thanks for info on aov-hadn't been able to tell which to use from  
help pages. There are no random effects so will switch to lm().

The data are amino acid sequences, with factor being position and  
level which amino acid is present. There are indeed an average of  
around 8 per position (from 2 to 20). I don't think I can collapse  
the levels at least to start with as I don't know in advance which  
effect fitness (the y variable).

 From what you say R should be able to do the smaller analysis. So  
have increased the RAM and will try this again.

Lucy Crooks

On Feb 1, 2006, at 3:45 PM, Peter Dalgaard wrote:
> You do not want to use aov() on unbalanced data, and especially not on
> large data sets if random effects are involved. Rather, you need to
> look at lmer() or just lm() if no random effects are present.
>
> However, even so, if you really have 29025 parameters to estimate, I
> think you're out of luck. 8 billion (US) elements is 64G and R is not
> able to handle objects of that size - the limit is that the size must
> fit in a 32 bit integer (about 2 billion elements).
>
> A quick calculation suggests that your factors have around 8 levels
> each. Is that really necessary, or can you perhaps collapse some
> levels?
>
>
>
> -- 
>    O__  ---- Peter Dalgaard             Øster Farimagsgade 5, Entr.B
>   c/ /'_ --- Dept. of Biostatistics     PO Box 2099, 1014 Cph. K
>  (*) \(*) -- University of Copenhagen   Denmark          Ph:  (+45)  
> 35327918
> ~~~~~~~~~~ - (p.dalgaard at biostat.ku.dk)                  FAX: (+45)  
> 35327907


> Lucy Crooks <Lucy.Crooks at env.ethz.ch> writes:
>> I want to do an unbalanced anova on 272,992 observations with 405
>> factors including 2-way interactions between 1 of these factors and
>> the other 404. After fitting only 11 factors and their interactions I
>> get error messages like:
>>
>> Error: cannot allocate vector of size 1433066 Kb
>> R(365,0xa000ed68) malloc: *** vm_allocate(size=1467461632) failed
>> (error code=3)
>> R(365,0xa000ed68) malloc: *** error: can't allocate region
>> R(365,0xa000ed68) malloc: *** set a breakpoint in szone_error to  
>> debug
>>
>> I think that the anova involves a matrix of 272,992 rows by 29025
>> columns (using dummy variables)=7,900 million elements. I realise
>> this is a lot! Could I solve this if I had more RAM or is it just too
>> big?
>>
>> Another possibility is to do 16 separate analyses on 17,062
>> observations with 404 factors (although statistically I think the
>> first approach is preferable). I get similar error messages then:
>>
>> Error: cannot allocate vector of size 175685 Kb
>> R(365,0xa000ed68) malloc: *** vm_allocate(size=179904512) failed
>> (error code=3)
>>
>> I think this analysis requires a 31 million element matrix.
>>
>> I am using R version 2.2.1 on a Mac G5 with 1 GB RAM running OS
>> 10.4.4. Can somebody tell me what the limitations of my machine (or
>> R) are likely to be? Whether this smaller analysis is feasible? and
>> if so how much more memory I might require?
>>
>> The data is in R in a data frame of 272,992 rows by 406 columns. I
>> would really appreciate any helpful input.
>>




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