Asymptotic Nonparametric Statistical Analysis of Stationary Time Series
暫譯: 平穩時間序列的漸近非參數統計分析

Ryabko, Daniil

  • 出版商: Springer
  • 出版日期: 2019-03-21
  • 售價: $2,420
  • 貴賓價: 9.5$2,299
  • 語言: 英文
  • 頁數: 77
  • 裝訂: Quality Paper - also called trade paper
  • ISBN: 3030125637
  • ISBN-13: 9783030125639
  • 海外代購書籍(需單獨結帳)

商品描述

Stationarity is a very general, qualitative assumption, that can be assessed on the basis of application specifics. It is thus a rather attractive assumption to base statistical analysis on, especially for problems for which less general qualitative assumptions, such as independence or finite memory, clearly fail. However, it has long been considered too general to be able to make statistical inference. One of the reasons for this is that rates of convergence, even of frequencies to the mean, are not available under this assumption alone. Recently, it has been shown that, while some natural and simple problems, such as homogeneity, are indeed provably impossible to solve if one only assumes that the data is stationary (or stationary ergodic), many others can be solved with rather simple and intuitive algorithms. The latter include clustering and change point estimation among others. In this volume I summarize these results. The emphasis is on asymptotic consistency, since this the strongest property one can obtain assuming stationarity alone. While for most of the problem for which a solution is found this solution is algorithmically realizable, the main objective in this area of research, the objective which is only partially attained, is to understand what is possible and what is not possible to do for stationary time series. The considered problems include homogeneity testing (the so-called two sample problem), clustering with respect to distribution, clustering with respect to independence, change point estimation, identity testing, and the general problem of composite hypotheses testing. For the latter problem, a topological criterion for the existence of a consistent test is presented. In addition, a number of open problems is presented.

商品描述(中文翻譯)

平穩性是一個非常一般的質性假設,可以根據應用的具體情況進行評估。因此,這是一個相當吸引人的假設,特別是對於那些較不一般的質性假設(如獨立性或有限記憶)明顯失效的問題,基於此進行統計分析。然而,長期以來,人們認為這個假設過於一般,無法進行統計推斷。其原因之一是,在僅僅假設數據是平穩的情況下,收斂速率(即頻率趨近於均值的速率)並不可用。最近的研究顯示,雖然一些自然且簡單的問題(如同質性)在僅假設數據是平穩(或平穩遍歷)的情況下確實無法解決,但許多其他問題可以用相當簡單且直觀的算法來解決。後者包括聚類和變點估計等。在本卷中,我總結了這些結果。重點在於漸近一致性,因為這是基於平穩性假設所能獲得的最強屬性。對於大多數已找到解決方案的問題,這些解決方案在算法上是可實現的,但這一研究領域的主要目標(目前僅部分達成)是理解對於平穩時間序列可以做什麼以及不能做什麼。考慮的問題包括同質性檢驗(所謂的兩樣本問題)、根據分佈的聚類、根據獨立性的聚類、變點估計、身份檢驗以及複合假設檢驗的一般問題。對於後者問題,提出了一個一致性檢驗存在的拓撲標準。此外,還提出了一些未解決的問題。