showed that the proposed system could extract local
topics and events. In our future work, we are go-
ing to evaluate using variety types of local topics and
events. Moreover, some local bursty keywords are re-
lated each other; however, the proposed system shows
these keywords individually. We are developing sum-
marizing method for local bursty keywords.
ACKNOWLEDGEMENTS
This work was supported by JSPS KAKENHI Grant
Number 26330139 and Hiroshima City University
Grant for Special Academic Research (General Stud-
ies).
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