National Repository of Grey Literature 27 records found  1 - 10nextend  jump to record: Search took 0.00 seconds. 
Supplier Risk Evaluation Using Fuzzy Logic
Novák, Lukáš ; Peštál, Ivan (referee) ; Dostál, Petr (advisor)
The diploma thesis deals with the evaluation of suppliers using fuzzy logic for a selected company. The created model will be used to make efficient and faster decisions about selecting the most suitable supplier for the given orders. Based on the criteria that are important for the selected company, a fuzzy model is created. The final evaluations of the most suitable suppliers are created in MS Excel and MATLAB.
The Application of Fuzzy Logic for Rating of Employees
Ganzwohl, Jakub ; Coufal, Petr (referee) ; Janková, Zuzana (advisor)
In this diploma thesis, the means of fuzzy logic are used to evaluate the usefulness of employees. For this purpose, a model has been created to help decide whether an employee is worth for the company. The actual solution design is created in MS Excel and MathWorks MATLAB. The subsequent evaluation of the employee is based on the results achieved from these solutions.
Evaluation of Investment Risks Using Fuzzy Logic
Žáček, Jakub ; Janková, Zuzana (referee) ; Dostál, Petr (advisor)
The diploma thesis deals with the evaluation of an investment using fuzzy logic for a specific company. With the help of the created decision-making models, the company will be able to efficiently and quickly evaluate which investment brings the highest benefit. These models follow the criteria that are most important to the company when deciding on an investment. The work also contains theoretical background, which serves as a basis for creating and evaluating models.
The Application of Fuzzy Logic for Rating of Suppliers for the Firm
Ilgner, Tomáš ; Lieskovan, Tomáš (referee) ; Dostál, Petr (advisor)
Master Thesis deals with supplier rating with usage of fuzzy logic as an advanced decision-making method. There was made a model for selection of the optimal technologies supplier for a self-service vehicle wash. The main solution is realized with support of programs MS Excel and MATLAB.
Using Artificial Intelligence to Reduce Risk in a Company
Friedl, Pavel ; Šebestová, Monika (referee) ; Dostál, Petr (advisor)
Presented diploma thesis is focused on evaluation of the supplier’s risk and the selection of the most suitable supplier with the use of artificial intelligence. The main part of the diploma thesis deals with the creation of the decision models. The decision models will be created in MS Excel and MATLAB based on the rules of the fuzzy logic. These models will determine the most suitable supplier for the company expert Elektro GOLA s.r.o. and they will also evaluate the supplier’s risk.
The Application of Fuzzy Logic for Rating of Suppliers
Šťáva, Adam ; Hutyra, Pavel (referee) ; Janková, Zuzana (advisor)
This thesis deals with the aplication of fuzzy logic in the evaluation and optimal supplier of transport services using decision models that were created in Microsoft Excel and MathWorks MATLAB. The use of these decision models is to evaluate the services offered by individual suppliers on the basis of established criteria. The company will choose its future optimal supplier according to the final evaluation.
Expert System for Decision-Making on Stock Markets Using Investor Sentiment
Janková, Zuzana ; Lenort, Radim (referee) ; Zinecker, Marek (referee) ; Chramcov, Bronislav (referee) ; Dostál, Petr (advisor)
The presented dissertation examines the potential of using the sentiment score extracted from textual data with historical stock index data to improve the performance of stock market prediction through the created model of the expert system. Given the large number of financial-related text documents published by both professional and amateur investors, not only on online social networks that could have an impact on real stock markets, but it is also crucial to analyze and in particular extract financial texts published by different users. investor sentiment. In this work, investor sentiment is obtained from online financial reports and contributions published on the financial social platform StockTwits. Sentiment scores are determined using a hybrid approach combining machine learning models with the teacher and neural networks, with multiple lexicons of positive and negative words used to classify sentiment polarity. The influence of sentiment score on the stock market through causality, cointegration and coherence is analyzed. The dissertation proposes a model of an expert system based on fuzzy logic methods. Fuzzy logic provides remarkable features when working with vague, inaccurate or unclear data and is able to deal with the chaotic environment of stock markets. In recent scientific studies, it has gained in popularity a higher level of fuzzy logic, which is referred to as type-2 fuzzy logic. Unlike the classic type-1 fuzzy logic, this higher type is able to integrate a certain level of uncertainty between the dual membership functions. However, this type of expert system is considerably neglected in the subject issue of stock market prediction using the extracted investor sentiment. For this reason, the dissertation examines the potential to use and the performance of type-2 fuzzy logic. Specifically, several type-2 fuzzy models are created. which are trained on historical stock index data and sentiment scores extracted from text data for the period 2018-2020. The created models are assessed to measure the prediction performance without sentiment and with the integration of investor sentiment. Subsequently, based on the created expert model, the investment strategy is determined, and its profitability is monitored. The prediction performance of fuzzy models is compared with the performance of several comparison models, including SVM, KNN, naive Bayes and others. It has been observed from experiments that fuzzy logic models are able to improve prediction by appropriate setting of membership and uncertainty functions contained in them and are able to compete with classical expert prediction models, which are standardly used in research studies. The created model should serve as a tool to support investment decisions for individual investors.
Evaluating an appropriate investment strategy using fuzzy logic
Macharová, Aneta ; Janková, Zuzana (referee) ; Dostál, Petr (advisor)
This diploma thesis deals with the use of fuzzy logic in evaluating a suitable investment strategy for those interested in investing. Models created in MS Excel and MathWorks MATLAB will be used for this evaluation. The first part of the thesis presents the theory that is needed to understand the addressed problematics. The second part presents a selected company for which the work is processed, and the final part contains models, results and proposals found through evaluation via fuzzy logic.
The Application of Fuzzy Logic for Rating of Suppliers for the Firm
Boštíková, Kateřina ; Antonín, Škrabal (referee) ; Dostál, Petr (advisor)
This diploma thesis deals with the use of fuzzy logic principles for evaluation and selection of an optimal supplier of transport services. Based on stated requirements, two models have been created. These models serve as a tool for decision support. The suggestion of solution itself has been created using MS Excel editor and MathWorks MATLAB programming platform. Subsequently, eveluation of particular offers has taken place using the models.
Supplier Risk Assessment Using Fuzzy Logic
Peterek, Daniel ; Doskočil, Radek (referee) ; Dostál, Petr (advisor)
The presented diploma thesis deals with the evaluation of suppliers for the company Ferrit using fuzzy logic. The main part of the diploma thesis deals with the creation of proposals for the solution of the evaluation of suppliers of a selected company. Decision models are created in Microsoft Excel and MATLAB. The comparison of the results of both proposed models is the content of the part of the work.

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