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Opinion Mining at Scale: A Case Study of the First Self-driving Car Fatality

机译:意见挖掘规模:以第一次自动驾驶汽车致命的案例研究

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We present a comprehensive pipeline for large-scale opinion mining via a case study of the first self-driving car fatality, in an effort to qualitatively and quantitatively evaluate trending techniques in web searching as well as sentiment analysis. We first perform a scalable and fault-resilient web scraping with a partially-stateful data model. We then apply recent advances in deep learning comparing with a commercial software for sentiment detection. Not only do we measure the performances of the models by numerical metrics, we subsequently align the prediction results with amid economic indices and impactful social events. We further discuss trade-offs of above models from perspectives of both performance improvements of computer systems and accuracy enhancements of machine learning models, and provide deeper insights for stakeholders in the autonomous vehicle industry and the computational social science community.
机译:我们通过案例研究通过案例研究,通过对第一次自动驾驶汽车致命的案例研究,旨在节目和定量地评估Web搜索中的趋势技术以及情感分析的综合管道。我们首先使用部分状态数据模型执行可扩展和故障弹性的Web刮擦。然后,我们在与商业软件进行情绪检测的情况下应用最近的深度学习进步。我们不仅通过数值指标衡量模型的性能,我们随后将预测结果与经济指数和有影响力的社交事件相结合。我们从计算机系统的性能改进的角度进一步讨论了上述模型的权衡和机器学习模型的准确性增强,并为自主车辆行业和计算社会科学界的利益相关者提供了更深的洞察力。

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