Addressing Underspecified Lineage Queries on Provenance

State-of-the-art provenance systems accumulate data over time, creating deep lineage trees. When queried for the lineage of an object, these systems can return excessive results due to the longevity and depth of their provenance. Such a query is underspecified: it does not constrain its result to a finite span of history. Unfortunately, specifying queries correctly often requires in-depth knowledge of the data set. We address the problem of underspecified lineage queries on provenance with techniques inspired by Web search. We present two metrics, SubRank and ProvRank, that measure the frequency of a particular result across the space of all possible lineage queries. We then use these metrics to define a subset of the lineage with which to respond to a query. These metric-defined result sets closely approximate a user’s conceptual view of relevant history. We evaluate our techniques on diverse workflows ranging from Wikipedia revision data to fMRI processing.