Property store information and an aggregation of a plurality of ranking
mechanisms, including a learning mechanism, are leveraged to provide
performant query results with increased user relevancy. The learning
mechanism permits query feedback to be accepted to facilitate in
optimizing user relevance. This mechanism can also be incorporated with
traditional Information Retrieval (IR) components, each supplying
independent ranking to a relevance aggregation function that determines
relevancy at a high level. This precludes diminishing the value of query
feedback that occurs when the data is fed into traditional IR algorithms.
By allowing the query feedback to maintain its proper weighting and
utilizing scope and bias capabilities of the property store information,
relevance increases in a highly performant manner.