TY - GEN
T1 - Linking motif sequences with tale types by machine learning
AU - Ofek, Nir
AU - Darányi, Sándor
AU - Rokach, Lior
PY - 2013/1/1
Y1 - 2013/1/1
N2 - units of narrative content called motifs constitute sequences, also known as tale types. However whereas the dependency of tale types on the constituent motifs is clear, the strength of their bond has not been measured this far. Based on the observation that differences between such motif sequences are reminiscent of nucleotide and chromosome mutations in genetics, i.e., constitute "narrative DNA", we used sequence mining methods from bioinformatics to learn more about the nature of tale types as a corpus. 94% of the Aarne-Thompson-Uther catalogue (2249 tale types in 7050 variants) was listed as individual motif strings based on the Thompson Motif Index, and scanned for similar subsequences. Next, using machine learning algorithms, we built and evaluated a classifier which predicts the tale type of a new motif sequence. Our findings indicate that, due to the size of the available samples, the classification model was best able to predict magic tales, novelles and jokes.
AB - units of narrative content called motifs constitute sequences, also known as tale types. However whereas the dependency of tale types on the constituent motifs is clear, the strength of their bond has not been measured this far. Based on the observation that differences between such motif sequences are reminiscent of nucleotide and chromosome mutations in genetics, i.e., constitute "narrative DNA", we used sequence mining methods from bioinformatics to learn more about the nature of tale types as a corpus. 94% of the Aarne-Thompson-Uther catalogue (2249 tale types in 7050 variants) was listed as individual motif strings based on the Thompson Motif Index, and scanned for similar subsequences. Next, using machine learning algorithms, we built and evaluated a classifier which predicts the tale type of a new motif sequence. Our findings indicate that, due to the size of the available samples, the classification model was best able to predict magic tales, novelles and jokes.
KW - Machine learning
KW - Motifs
KW - Narrative DNA
KW - Tale types
KW - Type-motif correlation
UR - http://www.scopus.com/inward/record.url?scp=84905818397&partnerID=8YFLogxK
U2 - 10.4230/OASIcs.CMN.2013.166
DO - 10.4230/OASIcs.CMN.2013.166
M3 - Conference contribution
AN - SCOPUS:84905818397
SN - 9783939897576
T3 - OpenAccess Series in Informatics
SP - 166
EP - 182
BT - 2013 Workshop on Computational Models of Narrative, CMN 2013
PB - Schloss Dagstuhl- Leibniz-Zentrum fur Informatik GmbH, Dagstuhl Publishing
T2 - 2013 Workshop on Computational Models of Narrative, CMN 2013
Y2 - 4 August 2013 through 6 August 2013
ER -