Musiplectics: Computational Assessment of the Complexity of Music Scores

In the Western classical tradition, musicians play music from notated sheet music, called a score. When playing music from a score, a musician translates its visual symbols into sequences of instrument-specific physical motions. Hence, a music score's overall complexity represents a sum of the...

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Main Author: Holder, Ethan Graham
Other Authors: Computer Science
Format: Others
Published: Virginia Tech 2015
Subjects:
Online Access:http://hdl.handle.net/10919/52376
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spelling ndltd-VTETD-oai-vtechworks.lib.vt.edu-10919-523762020-09-29T05:47:34Z Musiplectics: Computational Assessment of the Complexity of Music Scores Holder, Ethan Graham Computer Science Tilevich, Eli Gillick, Amy Knapp, R. Benjamin Music Scores Music Complexity Assessment Novel Computing Domains MusicXML In the Western classical tradition, musicians play music from notated sheet music, called a score. When playing music from a score, a musician translates its visual symbols into sequences of instrument-specific physical motions. Hence, a music score's overall complexity represents a sum of the cognitive and mechanical acuity required for its performance. For a given instrument, different notes, intervals, articulations, dynamics, key signatures, and tempo represent dissimilar levels of difficulty, which vary depending on the performer's proficiency. Individual musicians embrace this tenet, but may disagree about the degrees of difficulty. This thesis introduces musiplectics (musiplectics = music + plectics, Greek for the study of complexity), a systematic and objective approach to computational assessment of the complexity of a music score for any instrument. Musiplectics defines computing paradigms for automatically and accurately calculating the complexity of playing a music score on a given instrument. The core concept codifies a two-phase process. First, music experts rank the relative difficulty of individual musical components (e.g., notes, intervals, dynamics, etc.) for different playing proficiencies and instruments. Second, a computing engine automatically applies this ranking to music scores and calculates their respective complexity. As a proof of concept of musiplectics, we present an automated, Web-based application called Musical Complexity Scoring (MCS) for music educators and performers. Musiplectics can engender the creation of practical computing tools for objective and expeditious assessment of a music score's suitability for the abilities of intended performers. This thesis is based on research submitted for publication at ONWARD'15. Master of Science 2015-05-21T08:00:57Z 2015-05-21T08:00:57Z 2015-05-20 Thesis vt_gsexam:5322 http://hdl.handle.net/10919/52376 In Copyright http://rightsstatements.org/vocab/InC/1.0/ ETD application/pdf Virginia Tech
collection NDLTD
format Others
sources NDLTD
topic Music Scores
Music Complexity Assessment
Novel Computing Domains
MusicXML
spellingShingle Music Scores
Music Complexity Assessment
Novel Computing Domains
MusicXML
Holder, Ethan Graham
Musiplectics: Computational Assessment of the Complexity of Music Scores
description In the Western classical tradition, musicians play music from notated sheet music, called a score. When playing music from a score, a musician translates its visual symbols into sequences of instrument-specific physical motions. Hence, a music score's overall complexity represents a sum of the cognitive and mechanical acuity required for its performance. For a given instrument, different notes, intervals, articulations, dynamics, key signatures, and tempo represent dissimilar levels of difficulty, which vary depending on the performer's proficiency. Individual musicians embrace this tenet, but may disagree about the degrees of difficulty. This thesis introduces musiplectics (musiplectics = music + plectics, Greek for the study of complexity), a systematic and objective approach to computational assessment of the complexity of a music score for any instrument. Musiplectics defines computing paradigms for automatically and accurately calculating the complexity of playing a music score on a given instrument. The core concept codifies a two-phase process. First, music experts rank the relative difficulty of individual musical components (e.g., notes, intervals, dynamics, etc.) for different playing proficiencies and instruments. Second, a computing engine automatically applies this ranking to music scores and calculates their respective complexity. As a proof of concept of musiplectics, we present an automated, Web-based application called Musical Complexity Scoring (MCS) for music educators and performers. Musiplectics can engender the creation of practical computing tools for objective and expeditious assessment of a music score's suitability for the abilities of intended performers. This thesis is based on research submitted for publication at ONWARD'15. === Master of Science
author2 Computer Science
author_facet Computer Science
Holder, Ethan Graham
author Holder, Ethan Graham
author_sort Holder, Ethan Graham
title Musiplectics: Computational Assessment of the Complexity of Music Scores
title_short Musiplectics: Computational Assessment of the Complexity of Music Scores
title_full Musiplectics: Computational Assessment of the Complexity of Music Scores
title_fullStr Musiplectics: Computational Assessment of the Complexity of Music Scores
title_full_unstemmed Musiplectics: Computational Assessment of the Complexity of Music Scores
title_sort musiplectics: computational assessment of the complexity of music scores
publisher Virginia Tech
publishDate 2015
url http://hdl.handle.net/10919/52376
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