Diplom po napravleniyu 09.03.01 "Informatika i vychisl
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Thesis 75 p., 18 fig., 30 sources, 9 app.
SCORING, DATA ANALYSIS METHODS, BORROWER CREDIT CAPACITY, MICROFINANCE ORGANIZATION, PYTHON
The paper formulates proposals for the implementation of an automated solution in the field of scoring - assessing the creditworthiness of borrowers in the activities of a microfinance organization. The data processing technologies on which the scoring models are built are considered, a choice is made in favor of models built on machine learning methods. The architecture of the scoring analysis information system is being designed, a software implementation of a machine learning model based on gradient boosting is being developed for assessing the borrower's creditworthiness.
The object of the research is scoring in a microfinance organization.
The purpose of the final qualification work is the design of an information system for scoring analysis for a microfinance organization, development of a software implementation of the scoring analysis model.
Research and development methods and tools: design methods: IDEF0 standards - functional design methodology and DFD - data flow diagrams; universal modeling language UML, BPWin design tools; software implementation tools: Anaconda tooling environment, Python language, libraries of machine learning methods implementation.
Hardware and software requirements: Windows operating system, Linux, Ubunta, etc., virtual environment for Python support, cloud environment for deploying ClickHouse database.
Scope - organizations for assessing the creditworthiness of borrowers.
SCORING, DATA ANALYSIS METHODS, BORROWER CREDIT CAPACITY, MICROFINANCE ORGANIZATION, PYTHON
The paper formulates proposals for the implementation of an automated solution in the field of scoring - assessing the creditworthiness of borrowers in the activities of a microfinance organization. The data processing technologies on which the scoring models are built are considered, a choice is made in favor of models built on machine learning methods. The architecture of the scoring analysis information system is being designed, a software implementation of a machine learning model based on gradient boosting is being developed for assessing the borrower's creditworthiness.
The object of the research is scoring in a microfinance organization.
The purpose of the final qualification work is the design of an information system for scoring analysis for a microfinance organization, development of a software implementation of the scoring analysis model.
Research and development methods and tools: design methods: IDEF0 standards - functional design methodology and DFD - data flow diagrams; universal modeling language UML, BPWin design tools; software implementation tools: Anaconda tooling environment, Python language, libraries of machine learning methods implementation.
Hardware and software requirements: Windows operating system, Linux, Ubunta, etc., virtual environment for Python support, cloud environment for deploying ClickHouse database.
Scope - organizations for assessing the creditworthiness of borrowers.
the archive contains the text of the explanatory note, source files, text programs in Python, a file in mp4 format to demonstrate the work of the program