of episodes which consist of events. Considering two
episodes E and F we define the episode distance as
d
ep
(E,F) = 1 −
∑
e∈E
∑
f ∈F
d
b
(e, f )
!
|E|·|F|
, (14)
where d
b
is a discrete distance which is 0 if the re-
sult of the index-distinct distance is below a certain
boundary b:
d
b
(e, f ) =
0 if d
i
(e, f ) < b
1 if d
i
(e, f ) ≥ b
(15)
This means we compare every event e of episode
E to every event f in episode F and count the num-
ber of matches. This number is then divided by the
product of the number of all elements in E and F and
then subtracted from 1. A smaller result means that
the episodes are more similar.
Note that depending on how b is selected it can
be sufficient if only one or two indices of the events
to compare are similar enough. If e.g. b = 1 −
2
6
two
events would match if two indices are alike.
6 CONCLUSIONS & OUTLOOK
We have introduced an event metric and an episode
metric which our virtual guide employs to select
memories matching to the current situation. He uti-
lizes this memories in his decision process what to do
next.
Next steps of our work embrace collecting more
data, that means that our agent has to give many more
tours to accumulate rich memories. With that we plan
to evaluate the performance of the memory system
and measure the quality of the chosen actions.
ACKNOWLEDGEMENTS
This project is supported by the Cognitive Interaction
Technology Excellence Center (CITEC). We grate-
fully acknowledge the MPI for Biological Cybernet-
ics for providing us with Virtual T
¨
ubingen.
REFERENCES
Aamodt, A. and Plaza, E. (1994). Case-based reasoning:
Foundational issues, methodological variations, and
system approaches. AI Communications, 7(1):39–59.
Allen, P. A., Kaut, K. P., and Lord, R. R. (2008). Emo-
tion and episodic memory. In Dere, E., Easton, A.,
Nadel, L., and Huston, J. P., editors, Handbook of
Episodic Memory, pages 115–132. Elsevier, Amster-
dam, Netherlands.
Becker, C., Leßmann, N., Kopp, S., and Wachsmuth, I.
(2006). Connecting feelings and thoughts - modeling
the interaction of emotion and cognition in embodied
agents. In Fum, D., Del Missier, F., and Stocco, A.,
editors, Proceedings of ICCM06, pages 32–37, Tri-
este, Italy. Edizioni Goliardiche.
Becker-Asano, C. and Wachsmuth, I. (2010). Affective
computing with primary and secondary emotions in
a virtual human. Autonomous Agents and Multi-Agent
Systems, 20:32–49.
Bergmann, R. (2002). Experience Management, volume
2432 of LNAI. Springer, Berlin, Germany.
Kolodner, J. L. (1993). Case-Based Reasoning. Morgan
Kaufmann, San Mateo, CA.
Leßmann, N., Kopp, S., and Wachsmuth, I. (2006). Situ-
ated interaction with a virtual human – perception, ac-
tion, and cognition. In Rickheit, G. and Wachsmuth,
I., editors, Situated Communication, pages 287–323.
Mouton de Gruyter, Berlin, Germany.
Mattar, N. and Wachsmuth, I. (2012). Who are you? on the
acquisition of information about people for an agent
that remembers. In Filipe, J. and Fred, A., editors,
Proceedings of ICAART 2012, volume 2, pages 98–
105, Vilamoura, Portugal. SciTePress.
Nuxoll, A. M. and Laird, J. E. (2012). Enhancing intelli-
gent agents with episodic memory. Cognitive Systems
Research, 17–18:34–48.
Rabe, F. and Wachsmuth, I. (2012). Cognitively moti-
vated episodic memory for a virtual guide. In Fil-
ipe, J. and Fred, A., editors, Proceedings of ICAART
2012, volume 1, pages 524–527, Vilamoura, Portugal.
SciTePress.
Tecuci, D. and Porter, B. (2009). Memory based goal
schema recognition. In Lane, H. C. and Guesgen,
H. W., editors, Proceedings of FLAIRS-09, Menlo
Park, CA. AAAI Press.
Tecuci, D. G. and Porter, B. W. (2007). A Generic Memory
Module for Events. In Wilson, D. C. and Sutcliffe, G.
C. J., editors, Proceedings of FLAIRS-07, pages 152–
157, Menlo Park, California. The AAAI Press.
Tulving, E. (1972). Episodic and semantic memory. In Tul-
ving, E. and Donaldson, W., editors, Organization of
Memory, pages 381–403. Academic Press, New York.
Zacks, J. M. and Tversky, B. (2001). Event structure in
perception and conception. Psychological Bulletin,
127(1):3–21.
Zwaan, R. A., Langston, M. C., and Graesser, A. C. (1995).
The construction of situation models in narrative com-
prehension: An event-indexing model. Psychological
Science, 6(5):292–297.
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