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From: Dmitri_Rachkovskij@p4.f110.n463.z2.fidonet.carrier.kiev.ua (Dmitri Rachkovskij)
Subject: NN for data analysis
Message-ID: <2_463/110_4_2f8dbee4@fidonet.org>
Date: Fri, 14 Apr 95  00:16:00 +0300
X-Gate: GooGate ver 2.12  Apr 04 1995
Lines: 37


>I am working for Mitsubishi Materials Corporation in Japan. In our
>department,
>expert system, process controll system and database system are developed.
>I am interested in using neural networks in classifying huge dataset (
>production condition and its consequence of a ceratin product).
>I would be appreciate it if anyone could give me information that he has
>experience working on this kind of data or has pointers to individuals
>who have
>done works on that.
>Thanks

>*************** Keiichi Tsujimoto *******************************
>*************** Mitsubishi Materials Corporation ****************
>*************** email: kei@kid.enec.mmc.co.jp *******************


We develop and use advanced neural network classifiers
However to understand if we work on relevant problem, please,
could you define more precisely
1. the number and type (binary, integer, float, symbolic, etc.)
of input parameters (features)
2. the number and type of output parameters (classes).
3. the number of samples in dataset.

Regards
Dmitri
*****************************************************************************
Dmitri A. Rachkovskij, Ph.D.                    Internet: dar@infrm.kiev.ua
Senior Researcher,                              Fax:      7-(044)-266-1570
Neural Information Processing Systems Dept.,    Tel:      7-(044)-267-6996
V.M.Glushkov Institute of Cybernetics,          Fidonet:  2:463/110.4
Pr. Acad. Glushkova 40,
Kiev 252207, Ukraine
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