Just to be clear #1 was about new items, not users. New users will work as long 
as you have history for them.

On Mar 10, 2015, at 3:34 PM, Kevin Zhang <zhangyongji...@yahoo.com.INVALID> 
wrote:

I see. Thank you, Pat. 




On Tuesday, March 10, 2015 3:17 PM, Pat Ferrel <p...@occamsmachete.com> wrote:



The latest user actions work just fine as the query against the last time you 
ran spark-itemsimilairty. Go to the Demo site https://guide.finderbots.com and 
run through the “trainer” those things you pick are instantly used to make 
recs. spark-itemsimilarity was not re-run. The only time you really have to 
re-run it is:
1) you have new items with interactions. You can only recommend what you 
trained with.
2) you have enough new user data to significantly change the model.

There is no incremental way to update the model (yet) but it can be rerun in a 
few minutes and as I said you get recs with realtime user history, even for new 
users not in the training data.


On Mar 10, 2015, at 3:07 PM, Kevin Zhang <zhangyongji...@yahoo.com.INVALID> 
wrote:

Hi,

Does anybody have any idea about how to do incremental update for the item 
similarity? I mean how I can apply latest user action data for example today's 
data? Do I have to run it again for the entire dataset?

Thanks,
Kevin

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