Kirlin, Phillip B.Yust, Jason2020-01-222020-01-222017-04-04Phillip B. Kirlin & Jason Yust (2016) Analysis of analysis: Using machine learning to evaluate the importance of music parameters for Schenkerian analysis, Journal of Mathematics and Music, 10:2, pp. 127-148. https://doi.org/10.1080/17459737.2016.1209588https://hdl.handle.net/2144/39133While criteria for Schenkerian analysis have been much discussed, such discussions have generally not been informed by data. Kirlin [Kirlin, Phillip B., 2014 “A Probabilistic Model of Hierarchical Music Analysis.” Ph.D. thesis, University of Massachusetts Amherst] has begun to fill this vacuum with a corpus of textbook Schenkerian analyses encoded using data structures suggested byYust [Yust, Jason, 2006 “Formal Models of Prolongation.” Ph.D. thesis, University of Washington] and a machine learning algorithm based on this dataset that can produce analyses with a reasonable degree of accuracy. In this work, we examine what musical features (scale degree, harmony, metrical weight) are most significant in the performance of Kirlin's algorithm.Schenkerian analysisMachine learningHarmonyMelodyMathematicsComputer scienceSound and music computingRhythmFeature selectionAnalysis of analysis: importance of different musical parameters for Schenkerian analysisArticle10.1080/17459737.2016.1209588348971