Learning Financial Rating Tendencies with Qualitative Trees
نویسندگان
چکیده
Learning financial rating tendencies requires knowledge of the ratios and values that indicate a firm’s situation as well as a deep understanding of the relationships between them and the main factors that can modify these values. In this work, the Qualitative Trees provided by the algorithm QUIN are used to model financial rating and to learn its tendencies. Some examples are given to show the system’s predictive capabilities. The rating tendencies and the variables that most influence those tendencies are analyzed.
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