Кафедра "Програмна інженерія та інтелектуальні технології управління ім. А. В. Дабагяна"

Постійне посилання колекціїhttps://repository.kpi.kharkov.ua/handle/KhPI-Press/1665

Офіційний сайт кафедри http://web.kpi.kharkov.ua/asu

Від січня 2022 року кафедра має назву "Програмна інженерія та інтелектуальні технології управління ім. А. В. ДАБАГЯНА" (тоді ж, у січні 2022 року в окремий підрозділ виділилася кафедра "Інформаційні системи та технології"), попередні назви – "Програмна інженерія та інформаційні технології управління" (від 2015), "Автоматизовані системи управління" (від 1977); первісна назва – кафедра автоматичного управління рухом.

Кафедра автоматичного управління рухом заснована в 1964 році задля підготовки інженерів-дослідників у галузі автоматичного управління рухом з ініціативи професора Харківського політехнічного інституту Арега Вагаршаковича Дабагяна та генерального конструктора КБ "Електроприладобудування" Володимира Григоровича Сергєєва.

Кафедра входить до складу Навчально-наукового інституту комп'ютерних наук та інформаційних технологій Національного технічного університету "Харківський політехнічний інститут".

У складі науково-педагогічного колективу кафедри працюють: 4 доктора технічних наук; 24 кандидата наук: 22 – технічних, 1 – фізико-математичних, 1 – економічних, 1 – доктор філософії; 3 співробітників мають звання професора, 19 – доцента, 1 – старшого наукового співробітника.

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  • Ескіз
    Документ
    Towards Improving the Search Quality on the Trading Platforms
    (Springer International Publishing AG, 2018) Cherednichenko, Olga; Vovk, Maryna Anatoliivna; Kanishcheva, Olga; Godlevskyi, Mikhail
    In this paper, the problem of the search quality on the trading platforms, such AliExpress, eBay and others is explored, the major types of problems that arise in product search by customers are considered. The usage of the classical clusterization algorithms for grouping similar products according to their descriptions is studied. A data set for experimenting consists of different items (smartphones) from e-shop eBay is developed. Each entity in this corpus photos and a product description are given. These texts are used for item comparing in order to perform similar groups or similar items. The results show that the k-means algorithm is good for preliminary grouping but for detailed processing, other methods and approaches are required.
  • Ескіз
    Документ
    Studying items similarity for dependable buying on electronic marketplaces
    (2018) Cherednichenko, Olga; Vovk, Maryna Anatoliivna; Kanishcheva, Olga; Godlevskyi, Mikhail
    The processing of product buying is a very difficult task when we have thousands of items in each market category. In order to study items similarity for dependable buying we try to analyze item descriptions on AliExpress, eBay marketplaces and test k-means algorithm for item grouping/product segmentation. The usage of the classical clusterization algorithms for grouping similar products according to their descriptions is studied. A corpus of different products (bikes and smartphones) from e-shop AliExpress, eBay is developed. Each entity in this corpus contains photos and a product description. Each entity in this corpus contains product description with different fields. These short texts are used for experiments. As a result, it is found out that the k-means algorithm works well only for uniformly distributed data by categories, but this is not suitable for the segmentation of heterogeneous descriptions. The task of item descriptions systematization is set in the research below.
  • Ескіз
    Документ
    Development and research of models and software for the recommender system of consumer goods
    (НТУ "ХПІ", 2018) Turetskyi, Andrii Olehovych; Vorona, Borys Mykhailovych; Vovk, Maryna Anatoliivna; Yershova, Svitlana Ivanivna
    There have been proposed investigation of the problem of creating recommendations with technical description for building the Recommender System of consumer goods with help of modern algorithms, approaches, principles and contains the investigation of the most popular methods. It was defined, that the deployment of Recommender Systems is one of the rapidly developing areas for improving applied information technolog ies, tools for automatic generating offers service based on the investigation of the personal needs and profile of customers. It was investigated, that such systems have started to play a very important role in the fast growing Internet, as they help users to navigate in a large amount of information, because users are not able to analyze a large amount of information, because it is very difficult and takes a lot of time and effort, but due to such systems, namely Recommender Systems that are able to filter a large amount of information, and provide for users the information and recommendations their likes the problem can be solved and instead of providing the static information, when users search and, perhaps, buy products, Recommender Systems increase the degree of interactivity to expand the opportunities provided to the user. It was defined, that Recommendation systems form recommendations independently for each specific user based on past purchases and searches, and also on the basis of the behavior of other users with help of recommendation services, which collect different information about a person using several methods and at the same time all systems are shared. An overview of content-based, collaborative filtering and hybrid methods was performed. An overview of Alternating Least Squares and Singular Value Decomposition recommendation algorithms was performed. The design of the Recommender System of consumer goods software component was described. The main features of software implementation and programming tools for the system which is being developed were explained. The conclusions about the problems of Recommender Systems and the review of existing algorithms were made.