TY - JOUR
T1 - Ethological data mining
T2 - An automata-based approach to extract behavioral units and rules
AU - Kakishita, Yasuki
AU - Sasahara, Kazutoshi
AU - Nishino, Tetsuro
AU - Takahasi, Miki
AU - Okanoya, Kazuo
PY - 2009/6
Y1 - 2009/6
N2 - We propose an efficient automata-based approach to extract behavioral units and rules from continuous sequential data of animal behavior. By introducing novel extensions, we integrate two elemental methods-the N-gram model and Angluin's machine learning algorithm into an ethological data mining framework. This allows us to obtain the minimized automaton-representation of behavioral rules that accept (or generate) the smallest set of possible behavioral patterns from sequential data of animal behavior. With this method, we demonstrate how the ethological data mining works using real birdsong data; we use the Bengalese finch song and perform experimental evaluations of this method using artificial birdsong data generated by a computer program. These results suggest that our ethological data mining works effectively even for noisy behavioral data by appropriately setting the parameters that we introduce. In addition, we demonstrate a case study using the Bengalese finch song, showing that our method successfully grasps the core structure of the singing behavior such as loops and branches.
AB - We propose an efficient automata-based approach to extract behavioral units and rules from continuous sequential data of animal behavior. By introducing novel extensions, we integrate two elemental methods-the N-gram model and Angluin's machine learning algorithm into an ethological data mining framework. This allows us to obtain the minimized automaton-representation of behavioral rules that accept (or generate) the smallest set of possible behavioral patterns from sequential data of animal behavior. With this method, we demonstrate how the ethological data mining works using real birdsong data; we use the Bengalese finch song and perform experimental evaluations of this method using artificial birdsong data generated by a computer program. These results suggest that our ethological data mining works effectively even for noisy behavioral data by appropriately setting the parameters that we introduce. In addition, we demonstrate a case study using the Bengalese finch song, showing that our method successfully grasps the core structure of the singing behavior such as loops and branches.
KW - Behavioral units and rules
KW - Learning from positive data
KW - N-gram models
UR - https://www.scopus.com/pages/publications/65049092288
U2 - 10.1007/s10618-008-0122-1
DO - 10.1007/s10618-008-0122-1
M3 - 記事
AN - SCOPUS:65049092288
SN - 1384-5810
VL - 18
SP - 446
EP - 471
JO - Data Mining and Knowledge Discovery
JF - Data Mining and Knowledge Discovery
IS - 3
ER -