In mahout, I'm setting up a GenericUserBasedRecommender, pretty straight forward for now, typical settings.
In generating a "preference" value for an item, we have the following 5 data points:
- User converted on item (highest possible sign of interest)
- Normal like (user expressed interest, e.g. like buttons)
- Indirect expression of interest (clicks, cursor movements, measuring "eyeballs")
- Indifference (items the user ignored when active on other items, a vague expression of disinterest)
- Active dislike (thumbs down, remove item from my view, etc)
Over what range I should express these different attributes, let's use a 1-100 scale for discussion?
- Should I be keeping the 'Active dislike' and 'Indifference' clustered close together, for example, at 1 and 5 respectively, with all the likes clustered in the 90-100 range?
- Should 'Indifference' and 'Indirect expressions of interest' by closer to the center? As in 'Indifference' in the 20-35 range and 'Indirect like' in the 60-70 range?
- Should 'User conversion' blow the scale away and be heads and tails higher than the others? As in: 'User Conversion' @ 100, 'Lesser likes' @ ~65, 'Dislikes' clustered in the 1-10 range?
- On the scale of 1-100 is 50 effectively "null", or equivalent to no data point at all?
I know the final answer lies in trial and error and in the meaning of our data, but as far as the algorithm goes, I'm trying to understand at what point I need to tip the scales between interest and disinterest for the algorithm to function properly.