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Automated valuation models (AVM) are designed to predict a home’s price based on comparing it with similar properties in the area. They do this using county property record data from thousands of offices around the country, comparing several attributes such as square footage, the number of bedrooms and bathrooms, and other property features. This data cannot take into consideration the specifics of the neighborhood or the details of the properties (lot size, improvements, quality of the maintenance…). It is my experience that while they can be a good first indication, and sometimes accurate, they miss the mark in roughly 30% to 40% of cases. Where all homes are similar, like in a condominium complex or a given tract of identical homes, they may be quite accurate. In places where each home is unique, in nature or in location, they can be quite off (think: Los Altos Hills, or Palo Alto to cite a few).
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Thanks for reading,
Francis
Silicon Valley real estate specialist
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