If you roll your own solution, I have had good success with the .NET pluralization capabilities:
Essentially, you can pass a word in its plural form and receive a singular version and vice versa.
This could be fairly intensive depending on how often the content changed, i.e. this wouldn't be a good choice to search thousands of words in real time.
Assuming that you can pre-process/cache the results or that the source file is small, you could:
Identify all candidate words from the source file.
Parse/split phrases and pass them through the pluralization libraries to determine their plural counterparts.
Generate (and precompile) simple regular expressions to locate the words that you do want to match. For example, if you want to match "dog" but not "dogs" you could create a regex like
dog[^s] which could then be executed against the text.
Run Whenever a Search/Replace is Needed
- Run your list of source expressions against the text in question. I would suggest ordering the expressions from shortest to longest (otherwise a short expression may replace a word that was just parsed by a longer expression).
Again, this would be processor intensive to run in real-time (most solutions will be). As always, if you are parsing HTML, you should use an HTML parser, not a regular expression. In this case, you might use a proper parser to locate all text nodes and then perform the search/replace on them.
An alternative solution would be to put the text and keyword list into a database and use SQL Server Full Text Indexing which tends to be pretty smart about these things and supports intelligent match predicates. You could even combine this with a CLR stored procedure to handle things that .NET excels at (like string parsing).
Regardless of the approach, this will not be an exact science.