Title of article :
Probabilistic models for melodic prediction Original Research Article
Author/Authors :
Jean-François Paiement، نويسنده , , Samy Bengio، نويسنده , , Douglas Eck، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2009
Abstract :
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.
Keywords :
Music models , Probabilistic algorithms , Graphical models , Machine learning
Journal title :
Artificial Intelligence
Journal title :
Artificial Intelligence