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This paper puts forward a risk analysis model for software projects using enranced neural networks. The data for analysis are acquired through questionnaires from real software projects. To solve the multicollinearity in software risks, the method of principal components analysis is adopted in the model to enhance network stability. To solve uncertainty of the neural networks structure and the uncertainty of the initial weights, genetic algorithms is employed. The experimental result reveals that the precision of software risk analysis can be improved by using the erhanced neural networks model.