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A self-organizing feature maps and data mining based decision support system for liability authentications of traffic crashes

机译:基于自组织特征图和数据挖掘的决策支持系统,用于交通事故的责任认证

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This study develops a decision support tool for liability authentications of two-vehicle crashes based on generated self-organizing feature maps (SOM) and data mining (DM) models. Factors critical to liability attributions commonly identified theoretically and practically were first selected. Both SOM and DM models were then generated for frontal, side, and rear collisions of two-vehicle crashes. Appropriateness of all generated models was evaluated and confirmed. Finally, a decision support tool was developed using active server pages. Although with small data size, the decision support system was considered capable of giving reasonably good liability attributions and references on given cases.
机译:这项研究开发了一个决策支持工具,用于基于生成的自组织特征图(SOM)和数据挖掘(DM)模型的两车祸责任鉴定。首先选择在理论上和实践上通常确定的对责任归因至关重要的因素。然后针对两个车辆碰撞的正面,侧面和后方碰撞生成了SOM和DM模型。对所有生成的模型的适当性进行了评估和确认。最后,使用活动服务器页面开发了决策支持工具。尽管数据量较小,但决策支持系统被认为能够对给定的案例给出合理的责任归因和参考。

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