Similarity Metric
   - One simple similarity metric is Euclidean Distance.
 
   - Remember the Pythagorean Theorem.
 
   - A^2+B^2 = C^2
 
   - This works in N dimensions.
 
   - In the bank example, the distance between the three tuples that
       describe the cases is a simple similarity metric.
 
   - Is it generalizable?
 
   - You could also use a city-block metric.
 
   - Similarity and Search Spaces
 
   - The key is that the similarity metric needs to work.
 
   - That is, in the similarity space, cases with the same answer
       need to cluster together.
 
   - With Euclidean or city-block distance, you can make features more
       important by multiplying their values by a constant greater than
       one for the similarity metric.
 
   - With scalars, you can  make a table to say how similar features are.
 
   - You can also take advantage of ontologies and semantic distance
       in a semantic net.