Abstract
Recently, support vector machines, a supervised learning algorithm, have been widely used in the scope of credit risk management. However, noise may increase the complexity of the algorithm building and destroy the performance of classifier. In our work, we propose an ensemble support vector machine model to solve the risk assessment of supply chain finance, combined with reducing noises method. The main characteristics of this approach include that (1) a novel noise filtering scheme that avoids the noisy examples based on fuzzy clustering and principal component analysis algorithm is proposed to remove both attribute noise and class noise to achieve an optimal clean set, and (2) support vector machine classifiers, based on the improved particle swarm optimization algorithm, are seen as component classifiers. Then, we obtained the final classification results by combining finally individual prediction through AdaBoosting algorithm on the new sample set. Some experiments are applied on supply chain financial analysis of China’s listed companies. Results indicate that the credit assessment accuracy can be increased by applying this approach.
Highlights
Chain financing (SCF) is a recently emerged field, which is a means of substituting for lower credit availability to play a more active role among small and medium firms and their corresponding banks.[1]
Some machine learning techniques have been widely applied on credit assessment area, including neural network approaches,[3] fuzzy theory,[4,5] k-nearest neighbors (K-NN), and evolutionary algorithm.[6]
We adapt adaptive mutation particle swarm to optimize parameters of support vector machines (SVMs) classifiers (proximal support vector machine (PSVM)), which are used as component classifiers in AdaBoosting (AdaPSVM) to address risk assessment in Supply chain financing (SCF) fields
Summary
Chain financing (SCF) is a recently emerged field, which is a means of substituting for lower credit availability to play a more active role among small and medium firms and their corresponding banks.[1]. Keywords Support vector machines, supply chain financing, credit risk, ensemble learning, noisy training dataset, fuzzy clustering We adapt adaptive mutation particle swarm to optimize parameters of SVM classifiers (proximal support vector machine (PSVM)), which are used as component classifiers in AdaBoosting (AdaPSVM) to address risk assessment in SCF fields.
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