TY - JOUR
T1 - A Sonification of Cross-Cultural Differences in Happiness-Related Tweets
AU - LIEW, Kongmeng
AU - LINDBORG, PerMagnus
PY - 2020/1
Y1 - 2020/1
N2 - We report an approach to communicating cross-cultural differences in sentiment data through sonification. Sonification is a powerful technique for the translation of patterns into sound that is understandable, accessible, and musically pleasant. A machine-learning classifier was trained on sentiment information of two samples of Tweets with the keyword of “happiness,” from Singapore and New York. Positively valenced words, which we argue relate to the concept of “happiness,” showed stronger influences on the classifier than negative words. For mapping, Tweet frequency differences of the semantic variable “anticipation” affected tempo, “positive” affected pitch, “joy” affected loudness, and “trust” affected rhythmic regularity. We evaluated a sonification of the original two cities’ data, together with a control condition generated from random mappings, in a listening experiment. Results suggest that the original was rated as significantly more pleasant. No effects were found on ratings of interest or confidence in hearing a difference. We claim that our statistically informed approach to sonification enabled the making of better aesthetic decisions in the design of a pleasant listening experience. Further studies might employ extensive sentiment analysis of social media data and sonification with more input parameters and facilitate the communication of statistical results and a nuanced understanding of cross-cultural differences.
AB - We report an approach to communicating cross-cultural differences in sentiment data through sonification. Sonification is a powerful technique for the translation of patterns into sound that is understandable, accessible, and musically pleasant. A machine-learning classifier was trained on sentiment information of two samples of Tweets with the keyword of “happiness,” from Singapore and New York. Positively valenced words, which we argue relate to the concept of “happiness,” showed stronger influences on the classifier than negative words. For mapping, Tweet frequency differences of the semantic variable “anticipation” affected tempo, “positive” affected pitch, “joy” affected loudness, and “trust” affected rhythmic regularity. We evaluated a sonification of the original two cities’ data, together with a control condition generated from random mappings, in a listening experiment. Results suggest that the original was rated as significantly more pleasant. No effects were found on ratings of interest or confidence in hearing a difference. We claim that our statistically informed approach to sonification enabled the making of better aesthetic decisions in the design of a pleasant listening experience. Further studies might employ extensive sentiment analysis of social media data and sonification with more input parameters and facilitate the communication of statistical results and a nuanced understanding of cross-cultural differences.
KW - sonification
KW - emotion
KW - soncial media
KW - tweets
KW - happiness
UR - http://www.scopus.com/inward/record.url?scp=85091112242&partnerID=8YFLogxK
UR - https://www.scopus.com/record/pubmetrics.uri?eid=2-s2.0-85091112242&origin=recordpage
U2 - 10.17743/jaes.2019.0056
DO - 10.17743/jaes.2019.0056
M3 - RGC 21 - Publication in refereed journal
SN - 1549-4950
VL - 68
SP - 25
EP - 33
JO - AES: Journal of the Audio Engineering Society
JF - AES: Journal of the Audio Engineering Society
IS - 1/2
ER -