Пример готовой курсовой работы по предмету: Статистика
Содержание
1. Содержание изучаемой сферы деятельности. География
2. История внедрения математических исследований в географии
3. Основные математические методы обработки и анализа данных в географии
4. Наиболее интересные статистические исследования, проведенные в изучении географии, и полученные результаты на конкретных примерах
5. Перспективы и опыт компьютеризации исследований
Литература
Выдержка из текста
Использование статистических методов в географии
Список использованной литературы
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