Recent Advances in Modeling and Forecasting Kaiyu: Tools for Predicting and Verifying the Effects of Urban Revitalization Policy

Saito, Saburo, Ishibashi, Kenichi, Yamashiro, Kosuke

  • 出版商: Springer
  • 出版日期: 2024-09-27
  • 售價: $6,030
  • 貴賓價: 9.5$5,729
  • 語言: 英文
  • 頁數: 616
  • 裝訂: Quality Paper - also called trade paper
  • ISBN: 9819912431
  • ISBN-13: 9789819912438
  • 相關分類: Revit
  • 海外代購書籍(需單獨結帳)

相關主題

商品描述

This book is the first comprehensive presentation of a Kaiyu Markov model with covariates and a multivariate Poisson model with competitive destinations. These two models are core techniques when the authors and colleagues conduct their Kaiyu studies. The two models are usually used to forecast the effects of specific urban redevelopment on both the number of visitors and consumer shop-around or Kaiyu movements. Their Kaiyu studies originated from the constructions of a Kaiyu Markov model and the disaggregated hierarchical decision Huff model almost simultaneously around the early 1980s. This book retrospectively reviews how these models have evolved from the start to the present state, and previews the ongoing efforts to make further extensions of these models. The extension of the Huff model started from the disaggregated hierarchical decision Huff model with shop-arounds. In retrospect, the model formulated the consumer's simultaneous choice of destinations as a joint probability. The mechanism to determine this joint probability was a recursive conditional probability system. Now the Huff model has shifted from joint probability to multivariate frequency Poisson with competitive destinations. On the other hand, the Kaiyu Markov model started from a descriptive model. Because it cannot forecast changes in shop-arounds or consumer Kaiyu behaviors, the Kaiyu Markov model with covariates was developed in which entrance and shop-around choice probabilities are explained by the respective two logit models with covariates such as distances and shop-floor areas. The noticeable point is that it can explain consumers' probability of quitting their shop-arounds. Thus, the model enables one to evaluate the effects of urban revitalization policy that promotes consumers' shop-arounds or Kaiyu behaviors. Furthermore, if the Kaiyu Markov model can estimate the actual numbers of flows of consumers' shop-arounds among shopping sites, the corresponding money flows also can be estimated as economic effects. This book discusses from scratch the evolution of all these topics. Thus this book provides the basics of the Kaiyu Markov model, a tutorial for the theory and estimation of the conditional logit model, and a chapter serving as a practical research manual for forecasting changes caused by urban development based on consumers' Kaiyu behaviors.


商品描述(中文翻譯)

本書是首部全面介紹帶有協變量的Kaiyu Markov模型及具有競爭目的地的多變量Poisson模型的著作。這兩個模型是作者及其同事在進行Kaiyu研究時的核心技術。這兩個模型通常用於預測特定城市重建對訪客數量及消費者的逛街或Kaiyu行為的影響。他們的Kaiyu研究源於1980年代初期幾乎同時構建的Kaiyu Markov模型和分解層級決策Huff模型。本書回顧了這些模型從開始到目前狀態的演變過程,並預覽了進一步擴展這些模型的持續努力。Huff模型的擴展始於帶有逛街行為的分解層級決策Huff模型。回顧來看,該模型將消費者同時選擇目的地的行為表述為聯合概率。確定這一聯合概率的機制是一個遞歸條件概率系統。現在,Huff模型已經從聯合概率轉變為具有競爭目的地的多變量頻率Poisson模型。另一方面,Kaiyu Markov模型起初是一個描述性模型。由於它無法預測逛街行為或消費者Kaiyu行為的變化,因此發展出了帶有協變量的Kaiyu Markov模型,其中進入和逛街選擇概率由各自的兩個帶有協變量的logit模型解釋,例如距離和商店面積。值得注意的是,它能解釋消費者放棄逛街的概率。因此,該模型使得評估促進消費者逛街或Kaiyu行為的城市振興政策的效果成為可能。此外,如果Kaiyu Markov模型能夠估算消費者在購物地點之間的實際逛街流量,則相應的資金流動也可以作為經濟效益進行估算。本書從頭開始討論所有這些主題的演變。因此,本書提供了Kaiyu Markov模型的基礎知識、條件logit模型的理論與估算教程,以及一章作為基於消費者Kaiyu行為預測城市發展所引起變化的實用研究手冊。

作者簡介

Saburo Saito, Fukuoka University
Kenichi Ishibashi, Nagoya Sangyo University
Kosuke Yamashiro, Fukuoka University

作者簡介(中文翻譯)

佐藤三郎,福岡大學
石橋健一,名古屋產業大學
山城耕介,福岡大學