A Learning Based Approach for Risk Management

2007-06-19
1st Symposium on Towards the Foundation of Theory for the Built Environment, (18 - 19 Haziran 2007)

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Citation Formats
İ. Dikmen Toker and M. T. Birgönül, “A Learning Based Approach for Risk Management,” presented at the 1st Symposium on Towards the Foundation of Theory for the Built Environment, (18 - 19 Haziran 2007), 2007, Accessed: 00, 2021. [Online]. Available: https://hdl.handle.net/11511/85333.