on the site in the bread shop by a result report
association excellent team and the sales site was
given by cooperation in the Co-op sales in the
current year (bread shop challenge). The testing
period was two weeks from October 19, 2009, to
October 30, 2009. The team of report 2 took charge
in the first week (20:30 was assumed to be business
hours from 8:30 on weekdays) and the team of
report 1 took charge of the second week.
The main work is as follows.
1: Order work (done two days before the sales day)
2: Carrying work (exhibition of confirmation and
commodity of order goods)
3: Verification work (set sales goods decision, sale
notice of time, and POP substitution)
4: Abandonment commodity (The one to be
abandoned with daily goods that remained
unsold on that day is selected).
3.3 Comment on a Challenge
Students in both the teams said that the period of one
week, during which they managed some part of the
Co-op store, was too short. They had to order
products that would be sold out within one week.
They also said that if they had had another week,
they could have ordered a variety of products, which
would have satisfied customers’ demands. We must
take these opinions into account in order to make our
educational project in future more valuable and
enjoyable for students.
4 CONCLUSIONS
In this program, students are requested to obtain a
useful finding from the extensive POS data collected
for a long-term period of one year or more by the
group work. Students should (1) understand the
features of the commodity, customer’s purchasing
pattern, and features of the store; (2) analyze data
through trial and error while combining several
analysis tools; and (3) solve this problem in the
limited class time. Here, it is understood that
information technology plays a prominent role. That
is, the data mining software with high speed of
computational speed and GUI known by intuition,
an excellent display, and the presentation
environment are needed in addition to a naturally
necessary data mining and statistical model analysis.
It is thought that the education effect that these
functions are the following is brought;
1. It is necessary to verify various hypotheses to
obtain a significant result from a large amount of
capricious POS data. Therefore, it is necessary to
analyze the data repeatedly. For this, the system
with strong calculation ability is useful.
2. It is effective in obtaining the analysis result in a
short time, correcting the hypothesis, making the
model easy, and sustaining students’ interest and
concentration. As a result, the possibility of
reaching a satisfactory result increases.
3. It is necessary to allot the analysis business for
the findings by team work. The easiness of the
operation by GUI software is lost in the
difference of the capacity for the analysis of the
students in the team and contributes to the
decrease of time loss as a team.
4. The computer network to share an individual
analysis result mutually makes the group work
extremely efficient.
5. A big display and the presentation device are
effective in bringing the result together and
obtaining a final finding.
Our system meets a necessary requirement for
executing this program.
There has been much discussion on the POS data
with respect to the reality of the business process. To
solve this and to obtain an effective finding, our
educational system has adequate power. However,
we think that we can use only a part of this power.
We wish to draw out the power kept secret by
teacher and student’s collaborations.
ACKNOWLEDGEMENTS
This program is financially supported by the
program for Promoting High-Quality University
Education of the Ministry of Education, Culture,
Sports, Science, and Technology in Japan.
REFERENCES
Kay,J., Maisonneuve, N., Yacef, K., Zaiane, O., Mining
Patterns of Events in Students' Teamwork Data,
Proceedings of Educational Data Mining Workshop,
held in conjunction with Intelligent Tutoring Systems
(ITS), Taiwan, June 26, 2006.
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