The issue of financial distress prediction plays an important and challenging research topic in the financial field. Currently, there have been many methods for predicting firm bankruptcy and financial crisis, including the artificial intelligence and the traditional statistical methods, and the past studies have shown that the prediction result of the artificial intelligence method is better than the traditional statistical method. Financial statements are quarterly reports; hence, the financial crisis of companies is seasonal time-series data, and the attribute data affecting the financial distress of companies is nonlinear and nonstationary time-series data with fluctuations. Therefore, this study employed the nonlinear attribute selecti...
One of the most important topics discussed in the area of financial management is investors’ ability...
One of the most important issues in financial distress prediction is the selection of predicting var...
Artificial intelligence (AI) methods are interesting alternatives to classical approaches for modeli...
As a prerequisite for an informed decision, a company’s financial results are undoubtedly one of the...
The financial distress of listed companies not only threatens the interests of the enterprise and in...
The prediction of firm financial distress during the COVID-19 crisis episode attracted massive acade...
In view of the failure of many high profile firms, bankruptcy prediction has become a topic of high ...
Financial distress prediction is a key challenge every financing provider faces when determining bor...
In the Chinese stock market, the unique special treatment (ST) warning mechanism can signal financia...
In order to reduce the default rate of corporate bond market, the author proposes to use digital sig...
Predicting financial distress, which normally happens before bankruptcy, is a challenging phenomenon...
AbstractIn this paper, we compare some traditional statistical methods for predicting financial dist...
Traditional financial crisis prediction approaches have a tough time extracting the properties of fi...
The main question which will be raised in this thesis is - whether we can predict future financial d...
Classification learning is a very important issue in machine learning, which has been widely used in...
One of the most important topics discussed in the area of financial management is investors’ ability...
One of the most important issues in financial distress prediction is the selection of predicting var...
Artificial intelligence (AI) methods are interesting alternatives to classical approaches for modeli...
As a prerequisite for an informed decision, a company’s financial results are undoubtedly one of the...
The financial distress of listed companies not only threatens the interests of the enterprise and in...
The prediction of firm financial distress during the COVID-19 crisis episode attracted massive acade...
In view of the failure of many high profile firms, bankruptcy prediction has become a topic of high ...
Financial distress prediction is a key challenge every financing provider faces when determining bor...
In the Chinese stock market, the unique special treatment (ST) warning mechanism can signal financia...
In order to reduce the default rate of corporate bond market, the author proposes to use digital sig...
Predicting financial distress, which normally happens before bankruptcy, is a challenging phenomenon...
AbstractIn this paper, we compare some traditional statistical methods for predicting financial dist...
Traditional financial crisis prediction approaches have a tough time extracting the properties of fi...
The main question which will be raised in this thesis is - whether we can predict future financial d...
Classification learning is a very important issue in machine learning, which has been widely used in...
One of the most important topics discussed in the area of financial management is investors’ ability...
One of the most important issues in financial distress prediction is the selection of predicting var...
Artificial intelligence (AI) methods are interesting alternatives to classical approaches for modeli...