Аннотация. Статья посвящена разработке решения для выявления скрытых зависимостей в данных модуля SAP ERP «Техническое обслуживание и ремонт оборудования». Представлены алгоритмы первоначальной обработки сырых данных из базы данных с целью формирования факторного поля, пригодного для дальнейшего использования инструментария Data Mining. Ключевые слова: сырые данные, разнородные данные, количественные признаки, качественные признаки, расстояние между признаками, факторное поле.
The article proposes the algorithm to solve objects clustering problem for such subject areas as education and labour market. Such objects are competence, discipline, specialty, vacancy, etc. The main problem in clustering algorithm development proved to be the stage of attributes design since the named objects have descriptions in a natural language. Consequently, a descriptive model for the objects was designed at first. The model was based on the fact that all necessary concepts are characterised in the space of descriptors ”know”, ”can”, etc.
This allowed the object to be represented as a tuple based on the object name, descriptors (and their values) and keywords related to descriptors. To obtain such structures, the toolkit of context-relative text mining was used. The ability to represent the entities in question as a formal structure allowed the attribute space formation algorithm to be developed and complex metrics to be constructed to solve the stated clustering problem. The developed algorithm permits development of various services for a faster and more objective decision making process in educational and professional sectors.
As a result of the work, about two thousand vacancies were obtained and transformed into descriptor entities.
Based on the error matrix, it can be judged that the resulting descriptor entities have been clustered with a sufficient level of quality. This demonstrates the applicability of the model for presentation and analysis for elements from the subject area.
In this research, an algorithm for creating an optimal schedule for the production of petroleum products is proposed. For solving this problem, a commodity production math model is described. An algorithm for finding a valid point for a nonlinear optimization problem is considered. The algorithm used in the optimize.minimize method is described. A simulation experiment of calculating the optimal schedule by this method is carried out on the basis of the proposed technological scheme.
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