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Probabilistic models for melodic prediction

机译:旋律预测的概率模型

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摘要

Chord progressions are the building blocks from which tonal music is constructed. The choice of a particular representation for chords has a strong impact on statistical modeling of the dependence between chord symbols and the actual sequences of notes in polyphonic music. Melodic prediction is used in this paper as a benchmark task to evaluate the quality of four chord representations using two probabilistic model architectures derived from Input/Output Hidden Markov Models (IOHMMs). Likelihoods and conditional and unconditional prediction error rates are used as complementary measures of the quality of each of the proposed chord representations. We observe empirically that different chord representations are optimal depending on the chosen evaluation metric. Also, representing chords only by their roots appears to be a good compromise in most of the reported experiments.
机译:和弦进行是构成音调音乐的基础。选择和弦的特定表示形式对和弦符号与复音音乐中实际音符序列之间的依存关系的统计建模有很大影响。本文将旋律预测用作基准任务,以使用从输入/输出隐藏马尔可夫模型(IOHMM)派生的两种概率模型体系结构来评估四个和弦表示的质量。可能性以及有条件和无条件的预测错误率都用作对每个建议的和弦表示质量的补充度量。我们从经验上观察到,根据所选择的评估指标,不同的和弦表示形式是最佳的。同样,在大多数已报告的实验中,仅以根源表示和弦似乎是一个很好的折衷方案。

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