A Self-Starting Chart to Monitor Abrupt Changes in General Linear Profiles

来源 :上海交通大学 | 被引量 : 0次 | 上传用户:wintertear0704
下载到本地 , 更方便阅读
声明 : 本文档内容版权归属内容提供方 , 如果您对本文有版权争议 , 可与客服联系进行内容授权或下架
论文部分内容阅读
  A self-starting monitoring scheme is proposed in this paper for simultaneous detection of variance and coefficients in linear profiles with unknown error distribution.
其他文献
In this paper,we consider functional partial linear models proposed by Lian(2011)when the response variables are missing at random.
In pivotal Phase 3 trials where adverse events have been identified in advance,regulatory requirements often call for development programs to adequately demonstrate an acceptable drug safety profile.
Business analytics refers to data-driven decision making in business.Nonparametric methods are playing an increasing role in business analytics,fueled by increasing data complexity and dimensionality.
High-dimensional sparse modelling with censored survival data is of great practical importance,as exemplified by applications in high-throughput genomic data analysis.
Let XH(t)(t)= {XH(t)(t),t ∈ RN+} be multifractional stable sheets with Hurst function H(t),where H(t)=(H1(t),...,HN(t))is a function in t ∈ RN+with values in(0,1)N.
One of the main purposes of a phase dose-finding trial in oncology is to identify a tolerable dose with an indication of therapeutic benefit to administer to subjects in subsequent phase Ⅱ and Ⅲ trial
It is of fundamental importance to infer how the conditional mean of the response varies with the predictors in high dimensional data analysis.
Continuous diagnostic variables are often split at a cutoff value for diagnosis of diseased and normal status.
In most classification applications,classifiers are trained with labeled data.Modern computing and communication technologies can make data collection procedures very efficient.
In the study of cancer and other complex diseases,multiple types of omics measurements(including mRNA gene expression,methylation,copy number variation,SNP,etc.)have been found to play important roles