УЧЕБНИКИ
ДЛЯ ВУЗОВ

   
Обучать - значит вдвойне учиться.
Ж. Жубер

Учебники для вузов: Новинки



Для связи: info@vuz-uchebniki.ru




высшее образование / учебники для вузов / литература для студентов и педагогов / литература для аспирантов


Jurij Weinblat

Mining big annual statement datasets to predict highly lucrative companies using classification trees and forests




   
Страниц: 104
Формат: 148x210
The prediction models, which are described in this paper, can also be used by politicians to identify companies which are eligible for funding. Because growing companies oftentimes hire many employees, it might be meaningful to facilitate their development process by selective subsidies to reduce unemployment. Furthermore, it is possible to question the prediction results of a financial analyst if he came to a different conclusion than a model.
Since annual reports are often publically available for free, it is reasonable to take advantage of them for such a prediction. Additionally, various information providers maintain huge databases with annual reports. A big data approach promises to further improve accuracy of predictions. This paper introduces methods, which enable to generate knowledge out of these huge data sources to identify extraordinary lucrative firms.
To generate these prediction models, a data mining approach is used which is based on the approved CRISP-DM proceeding model for data mining processes. CRISP-DM ensures comparability and the consideration of best practices. The prediction models are based on classification trees and forests because they have some very substantial advantages over other methods like neural networks, which are frequently used in literature. For instance, the underlying algorithms of]]>
Категории каталога:
Бизнес образование






Студенту на заметку:
Проблемы современных студентов
Некоторые думают, что период обучения в ВУЗе – достаточно беззаботное время. Могут ли согласиться с этим современные студенты?


Проблемы с дисциплиной на уроках
У многих, в особенности, начинающих учителей возникают проблемы с дисциплиной во время проведения уроков.