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Combining random forest with support vector regression to conduct diagnostic and predictive analytics for semiconductor companies

机译:随机森林与支持向量回归,为半导体公司进行诊断和预测分析

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According to World Semiconductor Trade Statistics (WSTS), the market revenue earned by global semiconductor industry has researched up to US$335 billion in 2015. In response to strongly growing demand for automotive and mobile devices, global leading companies are aggressively expanding production capacity and increasing process investment to seize newly emerging niches. For instance, more creative and smart applications are created from the so-called M2M (machine-to-machine) and IoT (Internet of Things) areas. To survive in such an intensively competitive environment, semiconductor companies need to be more agile, responsive and flexible than before. In this study, a novel framework is presented to assist semiconductor companies in accomplishing the following goals: (1) applying random forest to identify the top five significant predictors and diagnostic analytics (2) conducting support vector repression to achieve predictive analytics and sensitivity analysis. In particular, semiconductor companies, such as upstream fabless design, midstream chip manufacturing, and downstream packaging & testing, are used to characterize supply-chain tiers and validate the presented framework.
机译:根据世界半导体贸易统计(WSTS),2015年全球半导体行业赚取的市场收入高达3350亿美元。根据对汽车和移动设备的需求强烈不断增长,全球领先公司正在积极扩大生产能力和增加进程投资抓住新兴的利基。例如,从所谓的M2M(机器到机器)和IOT(物联网)区域创建了更多的创意和智能应用程序。为了在如此强烈的竞争环境中生存,半导体公司需要比以前更敏捷,响应和灵活。在本研究中,提出了一种新颖的框架,以帮助半导体公司实现以下目标:(1)应用随机森林来确定前五个重要预测因子和诊断分析(2)进行支持载体抑制,以实现预测分析和敏感性分析。特别是,例如上游无晶圆厂设计,中游芯片制造和下游包装和测试,以表征供应链层并验证所提出的框架的半导体公司。

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