Predicting Corporate Failure Through a Combination of Intelligent Techniques

Predicting Corporate Failure Through a Combination of Intelligent Techniques PDF Author: Sverre Edvard Gunnersen
Publisher:
ISBN:
Category :
Languages : en
Pages : 271

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Book Description
Corporate failure is one of the most popular prediction problems because early identification of at-risk companies presents such a clear economic benefit to creditors, investors and society as a whole. Throughout the years statistically based classification systems, intelligent systems such as Neural Networks with its many variants, and newer techniques such as Genetic Programming have been applied to this problem. Indeed when a new variation or technique is proposed, the prediction of corporate failure is often one of the first test domains for the new methodology. Likewise, the cause of corporate failure is a topic that has received much academic and literary attention, including case studies investigating the trajectories that failing companies take or post hoc qualitative analysis as to whether certain fundamental causes such as one-man-rule can be attributed to the subsequent collapse of a company. However, throughout the history of this topic a number of challenges emerge that remain unaddressed within the literature.The first challenge is that while many papers outlining new classification techniques compare results with another popular classification system as a baseline, little research exists that comprehensively compares many classification techniques across multiple datasets. This thesis finds that intelligent techniques such as Neural Networks, Genetic Programming and Support Vector Machines outperform statistical techniques such as Discriminant Analysis and Logistic Regression.The second challenge is that the desire of researchers to compare results has resulted in the use of the same cross-section of factors, with little analysis as to whether or not the factors being used are impacting on the classification accuracy of the method. This thesis finds that an objective factor selection methodology leads to performance gains.The third is that far less research exists that considers whether share market or macroeconomic data can have a positive impact on classification accuracy. While this research did find some performance gains when including share market information, the difficulty of linking financial information with share market information leads to data loss that outweighs the small performance improvement.The fourth is that while most classificatory research on this problem focuses on the accuracy of the technique, less attention is given to whether the subjective clustering methods used (e.g. by "industry") are effective, and this research finds that an objective clustering technique improves classification accuracy. Furthermore, this research builds on the existing cluster visualisation methods by developing a new and more effective cluster visualisation algorithm.Finally this research attempts to contribute to the theoretical understanding of corporate failure by analysing the classificatory surface of the resulting predictive models and performing a case study analysis of failed companies. In doing so, the model's strengths and limitations are discussed and some of the causes of failure from the literature are identified.In summary, this research makes the following contributions to the field of bankruptcy prediction: a literature review of notable bankruptcy prediction research, a comparison of popular classification techniques, the development and testing of a new objective factor selection methodology, an examination of the effect of share market and macroeconomic data on classification accuracy, the development and testing of a new cluster visualisation method that overcomes limitations in existing methods, an examination of the effect of objective clustering on classification accuracy utilising the new visualisation method, and a case-study analysis on selected failed companies that relates the reasons for failure outlined in secondary sources to the company's failure prediction trajectory.

Predicting Corporate Failure Through a Combination of Intelligent Techniques

Predicting Corporate Failure Through a Combination of Intelligent Techniques PDF Author: Sverre Edvard Gunnersen
Publisher:
ISBN:
Category :
Languages : en
Pages : 271

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Book Description
Corporate failure is one of the most popular prediction problems because early identification of at-risk companies presents such a clear economic benefit to creditors, investors and society as a whole. Throughout the years statistically based classification systems, intelligent systems such as Neural Networks with its many variants, and newer techniques such as Genetic Programming have been applied to this problem. Indeed when a new variation or technique is proposed, the prediction of corporate failure is often one of the first test domains for the new methodology. Likewise, the cause of corporate failure is a topic that has received much academic and literary attention, including case studies investigating the trajectories that failing companies take or post hoc qualitative analysis as to whether certain fundamental causes such as one-man-rule can be attributed to the subsequent collapse of a company. However, throughout the history of this topic a number of challenges emerge that remain unaddressed within the literature.The first challenge is that while many papers outlining new classification techniques compare results with another popular classification system as a baseline, little research exists that comprehensively compares many classification techniques across multiple datasets. This thesis finds that intelligent techniques such as Neural Networks, Genetic Programming and Support Vector Machines outperform statistical techniques such as Discriminant Analysis and Logistic Regression.The second challenge is that the desire of researchers to compare results has resulted in the use of the same cross-section of factors, with little analysis as to whether or not the factors being used are impacting on the classification accuracy of the method. This thesis finds that an objective factor selection methodology leads to performance gains.The third is that far less research exists that considers whether share market or macroeconomic data can have a positive impact on classification accuracy. While this research did find some performance gains when including share market information, the difficulty of linking financial information with share market information leads to data loss that outweighs the small performance improvement.The fourth is that while most classificatory research on this problem focuses on the accuracy of the technique, less attention is given to whether the subjective clustering methods used (e.g. by "industry") are effective, and this research finds that an objective clustering technique improves classification accuracy. Furthermore, this research builds on the existing cluster visualisation methods by developing a new and more effective cluster visualisation algorithm.Finally this research attempts to contribute to the theoretical understanding of corporate failure by analysing the classificatory surface of the resulting predictive models and performing a case study analysis of failed companies. In doing so, the model's strengths and limitations are discussed and some of the causes of failure from the literature are identified.In summary, this research makes the following contributions to the field of bankruptcy prediction: a literature review of notable bankruptcy prediction research, a comparison of popular classification techniques, the development and testing of a new objective factor selection methodology, an examination of the effect of share market and macroeconomic data on classification accuracy, the development and testing of a new cluster visualisation method that overcomes limitations in existing methods, an examination of the effect of objective clustering on classification accuracy utilising the new visualisation method, and a case-study analysis on selected failed companies that relates the reasons for failure outlined in secondary sources to the company's failure prediction trajectory.

Corporate Failure Prediction Using Neural Network Techniques

Corporate Failure Prediction Using Neural Network Techniques PDF Author: Rob Hope
Publisher:
ISBN:
Category :
Languages : en
Pages : 369

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Book Description
Many published studies of corporate failure prediction claim a high degree of accuracy, often over 90%, in predicting failure on the basis of only a small number of financial ratios. This study uses a uniquely large sample to determine how dramatically increased sample size, allowing better estimates of accuracy and more thorough out of sample validation, effects these results. Models such as Altman's Z score are found to perform poorly on the large sample. Significant improvements are possible through the introduction of new data. This study includes payment behaviour in several models, and this is shown to have a strong positive effect. Neural networks are relatively new in this area. Some comparative studies have been made, with conflicting results. This study looks in detail at their performance relative to accepted methods such as logistic regression. Neural networks are shown to have some powerful properties, but their use in failure prediction seems to offer no improvement over the conventional methods, at least using the methodologies tested here. Further research isjudged necessary. Finally, the study examines the form of the financial data used in traditional models. Constructing trend data is shown to be useful, and different forms of this are examined. The transformation of data is examined in some detail. Various transformations are discussed, including a new function, the hyperbolic tangent or tanh. Transformation of data is found to be very effective in improving a model.

Multicriteria Decision Aid Methods for the Prediction of Business Failure

Multicriteria Decision Aid Methods for the Prediction of Business Failure PDF Author: Constantin Zopounidis
Publisher: Springer Science & Business Media
ISBN: 1475728859
Category : Business & Economics
Languages : en
Pages : 191

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Book Description
This book provides a new point of view on the subject of business failure prediction, through the application of multicriteria analysis methods. The aim of the book is to provide a review of the research in the area and to explore the adequacy of these methods to one of the most complex problems in the area of financial management. In addition, the book explores the applications of the methods so that it can become a very useful tool for researchers and practitioners. The analysis of the modeling and the results in these applications provides the background for further employment of the methods.

Current Approaches in Applied Artificial Intelligence

Current Approaches in Applied Artificial Intelligence PDF Author: Moonis Ali
Publisher: Springer
ISBN: 3319190660
Category : Computers
Languages : en
Pages : 760

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Book Description
This book constitutes the refereed conference proceedings of the 28th International Conference on Industrial, Engineering and Other Applications of Applied Intelligent Systems, IEA/AIE 2015, held in Seoul, South Korea, in June 2015. The 73 revised full papers presented were carefully reviewed and selected from 105 submissions. The papers cover a wide range of topics in applied artificial intelligence including reasoning, robotics, cognitive modeling, machine learning, pattern recognition, optimization, text mining, social network analysis, and evolutionary algorithms. They are organized in the following topical sections: theoretical AI, knowledge-based systems, optimization, Web and social networks, machine learning, classification, unsupervised learning, vision, image and text processing, and intelligent systems applications.

Intelligent Techniques for Predictive Data Analytics

Intelligent Techniques for Predictive Data Analytics PDF Author: Neha Singh
Publisher: John Wiley & Sons
ISBN: 1394227973
Category : Computers
Languages : en
Pages : 276

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Book Description
Comprehensive resource covering tools and techniques used for predictive analytics with practical applications across various industries Intelligent Techniques for Predictive Data Analytics provides an in-depth introduction of the tools and techniques used for predictive analytics, covering applications in cyber security, network security, data mining, and machine learning across various industries. Each chapter offers a brief introduction on the subject to make the text accessible regardless of background knowledge. Readers will gain a clear understanding of how to use data processing, classification, and analysis to support strategic decisions, such as optimizing marketing strategies and customer relationship management and recommendation systems, improving general business operations, and predicting occurrence of chronic diseases for better patient management. Traditional data analytics uses dashboards to illustrate trends and outliers, but with large data sets, this process is labor-intensive and time-consuming. This book provides everything readers need to save time by performing deep, efficient analysis without human bias and time constraints. A section on current challenges in the field is also included. Intelligent Techniques for Predictive Data Analytics covers sample topics such as: Models to choose from in predictive modeling, including classification, clustering, forecast, outlier, and time series models Price forecasting, quality optimization, and insect and disease plant and monitoring in agriculture Fraud detection and prevention, credit scoring, financial planning, and customer analytics Big data in smart grids, smart grid analytics, and predictive smart grid quality monitoring, maintenance, and load forecasting Management of uncertainty in predictive data analytics and probable future developments in the field Intelligent Techniques for Predictive Data Analytics is an essential resource on the subject for professionals and researchers working in data science or data management seeking to understand the different models of predictive analytics, along with graduate students studying data science courses and professionals and academics new to the field.

Computational Intelligence in Time Series Forecasting

Computational Intelligence in Time Series Forecasting PDF Author: Ajoy K. Palit
Publisher: Springer Science & Business Media
ISBN: 1846281849
Category : Computers
Languages : en
Pages : 382

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Book Description
Foresight in an engineering business can make the difference between success and failure, and can be vital to the effective control of industrial systems. The authors of this book harness the power of intelligent technologies individually and in combination.

Handbook of Research on Intelligent Techniques and Modeling Applications in Marketing Analytics

Handbook of Research on Intelligent Techniques and Modeling Applications in Marketing Analytics PDF Author: Kumar, Anil
Publisher: IGI Global
ISBN: 1522509984
Category : Business & Economics
Languages : en
Pages : 455

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Book Description
The success of any organization is largely dependent on positive feedback and repeat business from patrons. By utilizing acquired marketing data, business professionals can more accurately assess practices, services, and products that their customers find appealing. The Handbook of Research on Intelligent Techniques and Modeling Applications in Marketing Analytics features innovative research and implementation practices of analytics in marketing research. Highlighting various techniques in acquiring and deciphering marketing data, this publication is a pivotal reference for professionals, managers, market researchers, and practitioners interested in the observation and utilization of data on marketing trends to promote positive business practices.

Intelligent Techniques for Data Analysis in Diverse Settings

Intelligent Techniques for Data Analysis in Diverse Settings PDF Author: Celebi, Numan
Publisher: IGI Global
ISBN: 1522500766
Category : Computers
Languages : en
Pages : 374

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Book Description
Data analysis forms the basis of many forms of research ranging from the scientific to the governmental. With the advent of machine intelligence and neural networks, extracting, modeling, and approaching data has been unimpeachably altered. These changes, seemingly small, affect the way societies organize themselves, deliver services, or interact with each other. Intelligent Techniques for Data Analysis in Diverse Settings addresses the specialized requirements of data analysis in a comprehensive way. This title contains a comprehensive overview of the most innovative recent approaches borne from intelligent techniques such as neural networks, rough sets, fuzzy sets, and metaheuristics. Combining new data analysis technologies, applications, emerging trends, and case studies, this publication reviews the intelligent, technological, and organizational aspects of the field. This book is ideally designed for IT professionals and students, data analysis specialists, healthcare providers, and policy makers.

Corporate failure prediction

Corporate failure prediction PDF Author: Ying Zhou
Publisher:
ISBN:
Category :
Languages : en
Pages :

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Book Description


Predictability of corporate failure

Predictability of corporate failure PDF Author: R.A.I. van Frederikslust
Publisher: Springer Science & Business Media
ISBN: 1468471910
Category : Social Science
Languages : en
Pages : 126

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Book Description
1. 0 INTRODUCTION. In this chapter we define first in Section I. I the concept of failure used in this study. Thereafter, we discuss briefly the causes and possible consequ ences of failure. Finally, we explain in Section 1. 2 the aim of this study. 1. 1 THE CONCEPT OF FAILURE. In this monograph we investigate the predictability of corporate failure. By 'failure' we understand the inability of a firm to pay its obligations when these fall due (i. e. technical cash insolvency). (Walter 1957 and Donaldson 1962 and 1969). Failure mostly appears in a critical situation as a consequ ence of a sharp decline in sales. Such a decline can be caused by a recession, the loss of an important customer, shortage of a raw material, deficiencies of management, etc. The ability to predict corporate failure is important for all parties involved in the corporation, in particular for management and investors. An early warning signal of probable failure will enable them to take preventive measures: changes in operating policy or reorganization of financial structure, but also voluntary liquidation will usually shorten the period over which losses are incurred. The possibility to predict failure is important also from a social point of view, because such an event is an indication of misallocation of resources; prediction provides opportunities to take corrective measures. (See also Lev 1974, p. 134). 1. 2 AIM AND OUTLINE OF THE STUDY.