I'm working with an API that maps my GTIN/EAN queries to product data.
Since the data returned originates from merchant product feeds, the following is almost universally the case:
- Multiple results per GTIN
- Products' titles are pretty much unstructured
- Products' titles are "polluted" with
- SEO-related stuff,
- information about the quantity contained,
- "buy two, get one free" offers,
- etc.
I'm looking for a programmatic way to either
- choose the "cleanest"/most canonical version available
- or generate a new one that represents the "lowest common denominator".
Consider the following example results for a single EAN query:
- Nivea Deo Roll-On Dry Impact for Men
- NIVEA DEO Roll on Dry/blau
- Nivea Deo Roll-On Dry Impact for Men, 50 ml, 3er Pack (3 x 50 ml)
- Nivea Deo Roll on Dry/blau 50 ml
- Nivea Deoroller 50ml dry for Men blau Mindestabnahme: 6 Stück (1 VE)
- NIVEA Deoroller, Dry Impact for Men
- NIVEA DEO Roll on Dry/blau_50 ml
My homebrew approach looks like this:
- Basic cleanup:
- Lowercase the titles,
- strip excessive whitespace,
- throw out apparent stopwords such as "buy" and "click"
- Build an array for
word => global occurence"Nivea" => 7"Deo" => 5"Deoroller" => 2…"VE" => 1
- Calculate the "cumulative word value" for each of the titles
"Nivea Deo" => 12"Nivea Deoroller VE" => 10
- Divide the cumulative value by the length of the title, resulting in a score
"Nivea Deo" => 6"Nivea Deoroller VE" => 3.34
Obviously, my approach is pretty basic, error-prone and biased towards short sentences with frequently used words – yielding more or less satisfactory results.
- Would you choose a different approach?
- Is there some NLP magic way to take care of the problem that I don't know of?