TY - JOUR
T1 - Uncertainty and Surprise Jointly Predict Musical Pleasure and Amygdala, Hippocampus, and Auditory Cortex Activity
AU - Cheung, Vincent K.M.
AU - Harrison, Peter M.C.
AU - Meyer, Lars
AU - Pearce, Marcus T.
AU - Haynes, John Dylan
AU - Koelsch, Stefan
PY - 2019/12
Y1 - 2019/12
N2 - Listening to music often evokes intense emotions [1, 2]. Recent research suggests that musical pleasure comes from positive reward prediction errors, which arise when what is heard proves to be better than expected [3]. Central to this view is the engagement of the nucleus accumbens—a brain region that processes reward expectations—to pleasurable music and surprising musical events [4–8]. However, expectancy violations along multiple musical dimensions (e.g., harmony and melody) have failed to implicate the nucleus accumbens [9–11], and it is unknown how music reward value is assigned [12]. Whether changes in musical expectancy elicit pleasure has thus remained elusive [11]. Here, we demonstrate that pleasure varies nonlinearly as a function of the listener's uncertainty when anticipating a musical event, and the surprise it evokes when it deviates from expectations. Taking Western tonal harmony as a model of musical syntax, we used a machine-learning model [13] to mathematically quantify the uncertainty and surprise of 80,000 chords in US Billboard pop songs. Behaviorally, we found that chords elicited high pleasure ratings when they deviated substantially from what the listener had expected (low uncertainty, high surprise) or, conversely, when they conformed to expectations in an uninformative context (high uncertainty, low surprise). Neurally, we found using fMRI that activity in the amygdala, hippocampus, and auditory cortex reflected this interaction, while the nucleus accumbens only reflected uncertainty. These findings challenge current neurocognitive models of music-evoked pleasure and highlight the synergistic interplay between prospective and retrospective states of expectation in the musical experience. Video Abstract: [Figure presented] Cheung et al. use a machine-learning model to mathematically quantify the predictive uncertainty and surprise of 80,000 chords in 745 commercially successful pop songs. The authors further show that chord uncertainty and surprise jointly modulate musical pleasure, as well as activity in the amygdala, hippocampus, and auditory cortex using fMRI.
AB - Listening to music often evokes intense emotions [1, 2]. Recent research suggests that musical pleasure comes from positive reward prediction errors, which arise when what is heard proves to be better than expected [3]. Central to this view is the engagement of the nucleus accumbens—a brain region that processes reward expectations—to pleasurable music and surprising musical events [4–8]. However, expectancy violations along multiple musical dimensions (e.g., harmony and melody) have failed to implicate the nucleus accumbens [9–11], and it is unknown how music reward value is assigned [12]. Whether changes in musical expectancy elicit pleasure has thus remained elusive [11]. Here, we demonstrate that pleasure varies nonlinearly as a function of the listener's uncertainty when anticipating a musical event, and the surprise it evokes when it deviates from expectations. Taking Western tonal harmony as a model of musical syntax, we used a machine-learning model [13] to mathematically quantify the uncertainty and surprise of 80,000 chords in US Billboard pop songs. Behaviorally, we found that chords elicited high pleasure ratings when they deviated substantially from what the listener had expected (low uncertainty, high surprise) or, conversely, when they conformed to expectations in an uninformative context (high uncertainty, low surprise). Neurally, we found using fMRI that activity in the amygdala, hippocampus, and auditory cortex reflected this interaction, while the nucleus accumbens only reflected uncertainty. These findings challenge current neurocognitive models of music-evoked pleasure and highlight the synergistic interplay between prospective and retrospective states of expectation in the musical experience. Video Abstract: [Figure presented] Cheung et al. use a machine-learning model to mathematically quantify the predictive uncertainty and surprise of 80,000 chords in 745 commercially successful pop songs. The authors further show that chord uncertainty and surprise jointly modulate musical pleasure, as well as activity in the amygdala, hippocampus, and auditory cortex using fMRI.
KW - aesthetics
KW - amygdala
KW - emotions
KW - fMRI
KW - information theory
KW - nucleus accumbens
KW - prediction
KW - predictive coding
KW - reward
KW - syntax
UR - http://www.scopus.com/inward/record.url?scp=85075427361&partnerID=8YFLogxK
U2 - 10.1016/j.cub.2019.09.067
DO - 10.1016/j.cub.2019.09.067
M3 - Journal article
C2 - 31708393
AN - SCOPUS:85075427361
SN - 0960-9822
VL - 29
SP - 4084-4092.e4
JO - Current Biology
JF - Current Biology
IS - 23
ER -