JU,

are you refering to this dataset?

http://labrosa.ee.columbia.edu/millionsong/tasteprofile

On 18.03.2013 17:47, Sean Owen wrote:
> One word of caution, is that there are at least two papers on ALS and they
> define lambda differently. I think you are talking about "Collaborative
> Filtering for Implicit Feedback Datasets".
> 
> I've been working with some folks who point out that alpha=40 seems to be
> too high for most data sets. After running some tests on common data sets,
> alpha=1 looks much better. YMMV.
> 
> In the end you have to evaluate these two parameters, and the # of
> features, across a range to determine what's best.
> 
> Is this data set not a bunch of audio features? I am not sure it works for
> ALS, not naturally at least.
> 
> 
> On Mon, Mar 18, 2013 at 12:39 PM, Han JU <[email protected]> wrote:
> 
>> Hi,
>>
>> I'm wondering has someone tried ParallelALS with implicite feedback job on
>> million song dataset? Some pointers on alpha and lambda?
>>
>> In the paper alpha is 40 and lambda is 150, but I don't know what are their
>> r values in the matrix. They said is based on time units that users have
>> watched the show, so may be it's big.
>>
>> Many thanks!
>> --
>> *JU Han*
>>
>> UTC   -  Université de Technologie de Compiègne
>> *     **GI06 - Fouille de Données et Décisionnel*
>>
>> +33 0619608888
>>
> 

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