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Modeling Jazz Artist Influence Mathematically A Preliminary Investigation By Andres Calderon Jaramillo Mentor - Larry Lucas, Ph.D. University of Central.

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Presentation on theme: "Modeling Jazz Artist Influence Mathematically A Preliminary Investigation By Andres Calderon Jaramillo Mentor - Larry Lucas, Ph.D. University of Central."— Presentation transcript:

1 Modeling Jazz Artist Influence Mathematically A Preliminary Investigation By Andres Calderon Jaramillo Mentor - Larry Lucas, Ph.D. University of Central Oklahoma

2 Presentation Outline Project description and literature review. Musical background. Mathematical background. Methodology and potential. Questions.

3 Project Description Markov chains as tools in the modeling of influence between jazz artists (musical resemblance). Choice of primary artists: ▫Art Tatum (1909 – 1956). ▫Oscar Peterson (1925 – 2007). Only piano melodies are considered.

4 Literature Review Music cognition and perception. Composer identification. Style recognition. Automatic composition. ▫Improvising Jazz Using Markov Chains by Yuval Marom.

5 Musical Background Melody Notes Rhythm Velocity Pitch Duration Rests

6 Mathematical Background Stochastic process defined: ▫Family of random variables defined on some sample space . State space (S): ▫Set of distinct values assumed by a stochastic process. Source: Isaacson, D. L., & Madsen, R. W. (1976). Markov chains, theory and applications. John Wiley & Sons, Inc.

7 Mathematical Background – Cont’d Discrete-time Markov chain: ▫Discrete-time stochastic process. ▫Countable or finite state space. ▫Satisfies the Markov property. Transition probability matrix. Source: Isaacson, D. L., & Madsen, R. W. (1976). Markov chains, theory and applications. John Wiley & Sons, Inc.

8 Mathematical Background – Cont’d “Pop Goes the Weasel” fragment (pitches) C C D D D D C C C C E E G G E E S = {C, D, E, G}

9 Methodology Main goal: ▫A measure of musical resemblance. Building Markov chains for a piece: ▫“Naive” approach. ▫“Controlled” approach. ▫“Multidimensional” approach.

10 Methodology – Cont’d Variation: ▫Higher-order Markov chains. ▫Markov chains for “macroscopic” parameters. Some measures of resemblance: ▫Distribution of the pitch. ▫Distribution of the velocity. ▫Distribution of the duration. ▫Distribution of note and rest runs.

11 Simulation for Oscar Peterson Simulation for Art Tatum Methodology – Cont’d Possible new measurement: a2a2 a2a2 a3a3 a3a3 … … a1a1 a1a1 anan anan c2c2 c2c2 c3c3 c3c3 … … c1c1 c1c1 cncn cncn DISTANCE FUNCTION DISTANCE FUNCTION

12 Potential Extension of results to other genres and instruments. Applicability: ▫Learning styles by feedback. ▫Recruitment of musicians.

13 Questions?


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