Corpus ID: 230524151

Predicting Residential Property Value in Catonsville, Maryland: A Comparison of Multiple Regression Techniques

  title={Predicting Residential Property Value in Catonsville, Maryland: A Comparison of Multiple Regression Techniques},
  author={Lee Whieldon and Huthaifa I. Ashqar},
Predicting Residential Property Value in Catonsville, Maryland: A Comparison of Multiple Regression Techniques 

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