1. bookTom 5 (2015): Zeszyt 3 (July 2015)
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eISSN
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30 Dec 2014
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Open Access

Accumulative Information Enhancement In The Self-Organizing Maps And Its Application To The Analysis Of Mission Statements

Data publikacji: 23 Sep 2015
Tom & Zeszyt: Tom 5 (2015) - Zeszyt 3 (July 2015)
Zakres stron: 161 - 176
Informacje o czasopiśmie
License
Format
Czasopismo
eISSN
2449-6499
Pierwsze wydanie
30 Dec 2014
Częstotliwość wydawania
4 razy w roku
Języki
Angielski

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