Difference between revisions of "2018:Patterns for Prediction Results"

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'''Figure 1.''' Pattern discovery v segmentation. (A) Bars 1-12 of Mozart’s Piano Sonata in E-flat major K282 mvt.2, showing some ground-truth themes and repeated sections; (B-D) Three linear segmentations. Numbers below the staff in Fig. 1A and below the segmentation in Fig. 1D indicate crotchet beats, from zero for bar 1 beat 1.
 
 
  
 
For a more detailed introduction to the task, please see [[2018:Patterns for Prediction]].
 
For a more detailed introduction to the task, please see [[2018:Patterns for Prediction]].

Revision as of 08:15, 18 September 2018

Introduction

THIS PAGE IS UNDER CONSTRUCTION!

The task: ...

Contribution

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For a more detailed introduction to the task, please see 2018:Patterns for Prediction.

Training and Test Datasets

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Sub code Submission name Abstract Contributors
Task Version symMono
EN1 Algo name here PDF Eric Nichols
FC1 Algo name here PDF Florian Colombo
MM Markov model N/A Intended as 'baseline'
Task Version symPoly
FC1 Algo name here PDF Florian Colombo
MM Markov model N/A Intended as 'baseline'

Table 1. Algorithms submitted to Patterns for Prediction 2018.

Results

An intro spiel here...

(For mathematical definitions of the various metrics, please see 2018:Patterns_for_Prediction#Evaluation_Procedure.)

SymMono

Here are some results (cf. Figures 1-3), and some interpretation. Don't forget these as well (Figures 4-6), showing something.

Remarks on runtime appropriate here too.

SymPoly

And so on.

Discussion

The new compression evaluation measures are not highly correlated with the metrics measuring retrieval of annotated patterns. This may be caused by the fact that lossless compression is lower for algorithms which find overlapping patterns: human annotators, and also some pattern discovery algorithms, may find valid overlapping patterns, as patterns may be hierarchically layered (e.g., motifs which are part of themes). We will add new, prediction based measures, and new ground truth pieces to the task next year.

Berit Janssen, Iris Ren, Tom Collins, Anja Volk.

Figures

SymMono

2017 Mono R est.png

Figure 1. Establishment recall averaged over each piece/movement. Establishment recall answers the following question. On average, how similar is the most similar algorithm-output pattern to a ground-truth pattern prototype?

2017 Mono P est.png

Figure 2. Establishment precision averaged over each piece/movement. Establishment precision answers the following question. On average, how similar is the most similar ground-truth pattern prototype to an algorithm-output pattern?

2017 Mono F1 est.png

Figure 3. Establishment F1 averaged over each piece/movement. Establishment F1 is an average of establishment precision and establishment recall.

2017 Mono R occ 75.png

Figure 4. Occurrence recall () averaged over each piece/movement. Occurrence recall answers the following question. On average, how similar is the most similar set of algorithm-output pattern occurrences to a discovered ground-truth occurrence set?

2017 Mono P occ 75.png

Figure 5. Occurrence precision () averaged over each piece/movement. Occurrence precision answers the following question. On average, how similar is the most similar discovered ground-truth occurrence set to a set of algorithm-output pattern occurrences?

2017 Mono F1 occ75.png

Figure 6. Occurrence F1 () averaged over each piece/movement. Occurrence F1 is an average of occurrence precision and occurrence recall.

2017 Mono R3.png

Figure 7. Three-layer recall averaged over each piece/movement. Rather than using as a similarity measure (which is the default for establishment recall), three-layer recall uses , which is a kind of F1 measure.

2017 Mono P3.png

Figure 8. Three-layer precision averaged over each piece/movement. Rather than using as a similarity measure (which is the default for establishment precision), three-layer precision uses , which is a kind of F1 measure.

2017 Mono TLF1.png

Figure 9. Three-layer F1 (TLF) averaged over each piece/movement. TLF is an average of three-layer precision and three-layer recall.

Mono Coverage.png

Figure 10. Coverage of the discovered patterns of each piece/movement. Coverage measures the fraction of notes of a piece covered by discovered patterns.

2017 Mono LC.png

Figure 11. Lossless compression achieved by representing each piece/movement in terms of patterns discovered by a given algorithm. Next to patterns and their repetitions, also the uncovered notes are represented, such that the complete piece could be reconstructed from the compressed representation.

SymPoly

2017 Poly R est.png

Figure 12. Establishment recall averaged over each piece/movement. Establishment recall answers the following question. On average, how similar is the most similar algorithm-output pattern to a ground-truth pattern prototype?

2017 Poly P est.png

Figure 13. Establishment precision averaged over each piece/movement. Establishment precision answers the following question. On average, how similar is the most similar ground-truth pattern prototype to an algorithm-output pattern?

2017 Poly F1 est.png

Figure 14. Establishment F1 averaged over each piece/movement. Establishment F1 is an average of establishment precision and establishment recall.

2017 Poly R occ 75.png

Figure 15. Occurrence recall () averaged over each piece/movement. Occurrence recall answers the following question. On average, how similar is the most similar set of algorithm-output pattern occurrences to a discovered ground-truth occurrence set?

2017 Poly P occ 75.png

Figure 16. Occurrence precision () averaged over each piece/movement. Occurrence precision answers the following question. On average, how similar is the most similar discovered ground-truth occurrence set to a set of algorithm-output pattern occurrences?

2017 Poly F1 occ 75.png

Figure 17. Occurrence F1 () averaged over each piece/movement. Occurrence F1 is an average of occurrence precision and occurrence recall.

2017 Poly R3.png

Figure 18. Three-layer recall averaged over each piece/movement. Rather than using as a similarity measure (which is the default for establishment recall), three-layer recall uses , which is a kind of F1 measure.

600px

Figure 19. Three-layer precision averaged over each piece/movement. Rather than using as a similarity measure (which is the default for establishment precision), three-layer precision uses , which is a kind of F1 measure.

2017 Poly TLF1.png

Figure 20. Three-layer F1 (TLF) averaged over each piece/movement. TLF is an average of three-layer precision and three-layer recall.

2017 Poly Coverage.png

Figure 21. Coverage of the discovered patterns of each piece/movement. Coverage measures the fraction of notes of a piece covered by discovered patterns.

2017 Poly LC.png

Figure 22. Lossless compression achieved by representing each piece/movement in terms of patterns discovered by a given algorithm. Next to patterns and their repetitions, also the uncovered notes are represented, such that the complete piece could be reconstructed from the compressed representation.

Tables

SymMono

Click to download SymMono pattern retrieval results table

Click to download SymMono compression results table

SymPoly

Click to download SymPoly pattern retrieval results table

Click to download SymPoly compression results table