I have developed a sub-tool where the end-user should be able to see companies similar to the one that he is currently viewing. I have done this through tf-idf of company descriptions and subsequently calculating the cosine similarity to all companies in our database.
The results are good so far, but I want to be able to recognize when the output is bad (to be able to use an alternative engine when this is the case). I realized that when this is the case, the algorithm outputs companies from completely different sectors, that have nothing in common. I thus thought that I could calculate the cross-similarity between the 10 outputted results (thus 10x10 similarities) and take the average of that. My intuition was that when output is good, the companies are all from the same sector and fairly similar, while when output is bad, the companies are from random sectors and not similar at all. So the average similarity between the different results should be a pretty good proxy for the output quality, at least I thought!
Unfortunately, the average similarity between the outputted results does not correlate at all with the output quality! I have also tried to analyze whether the standard deviation of the cosine values of the first 10 results might have an influence on quality, but this unfortunately also isn't the case.
Would anybody know a metric through which I could predict whether the output of the recommendation engine is good or bad? I would like to fallback on an alternative engine when this is the case.