An interesting question that belongs to the subject of text mining and information retrieval. Usually you can achieve described matching using stemming (lemmatization) algorithms or even through a simpler heuristics.
1.) The latter case would be to process both strings to get the normalized versions of each and then do the comparison. We can replace larger whitespaces with one space and downcase all characters on both strings. Example of string normalization:
string.gsub(/\s+/, ' ').downcase
This wouldn't work on abbreviations tough.
2.) You can get better results if you use a stemmer to normalize each word token into common base form. Few examples of stemmings: words=>word, feet=>foot, construction=>construct, ... Once you get the word bases (also called lemas), you can join them into a string. And then make a comparison. Usually the stemmer will do the downcase for you so you can skip that step.
So both of those two strings:
"Hazard Const. Company"
"hazard construction company"
Get converted to:
"hazard construct company"
The code depends on the actual stemmer used. For example, you can look at this one: https://github.com/aurelian/ruby-stemmer
The actual output of stemmed words will also depend on the stemmer used. The way stemmers (lemmatizers) work is not just through some kind of trimming rules, but they also try to match words to internal library of word bases (lemas). Therefore a good lemmatizer will recognize Const. abbreviation and match it against construct lema.
Since not all abbreviations can be recognized (but for example just 90% of them), it is better not to match the exact strings. But try calculating their similarity through distance calculation (as @7stud suggested) and tweaking a threshold of acceptable similarity based on the test data results. This is the usual approach in information retrieval. The more you can customize and specialize your text processing, the better results you will get. And other way around - the more you try to build generic processing, the harder it gets and the results will be worse.