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The Interaction between the Sub-Market Turnover Ratios and Prices in Taiwan

The Interaction between the Sub-Market Turnover Ratios and Prices in Taiwan. European Real Estate Society 20th Annual Conference 3rd-6th July 2013. Mei-Ling Chou Taoyuan Innovation Institute of Technology, Taiwan. 2011/07/04. Objects. To assess if the turnover ratio is stationary.

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The Interaction between the Sub-Market Turnover Ratios and Prices in Taiwan

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  1. The Interaction between the Sub-Market Turnover Ratios and Prices in Taiwan European Real Estate Society 20th Annual Conference 3rd-6th July 2013 Mei-Ling Chou Taoyuan Innovation Institute of Technology, Taiwan 2011/07/04

  2. Objects • To assess if the turnover ratio is stationary. • To investigate the lead-lag relationship between prices and turnover ratio. • To describe the interaction between sub-markets.

  3. What is the turnover ratio? The transfer frequency of a stock • In stock market studies, the turnover ratio was used to describe the transfer frequency of a stock. • In housing market, the turnover ratio is the percentage of the housing flows accounted for the housing stock during a certain time period, which describes the volatilityin a target area. turnover ratio (%) = flow / stock X100%

  4. Is the housing turnover ratio stationary? Is the housing turnover ratio increasing without boundaries? We conducted the panel unit root test to assess whether the turnover ratio is stationary.

  5. What is the lead-lag relationship between housing price and volume ? • Stein (1995) found a significant positivecorrelation between the volume and price in the U.S. real estate market between 1968 and 1992. • Hua and Chang (1997) used the ECM model and found prices were affected by the (t-1) period volume in Taiwan. Housing market: positive

  6. What is the lead-lag relationship between housing price and turnover ratio ? • Stock: investment • The relationship between price and turnover ratio is • positive. (Yu, 2008) • House: consumption + investment • Is the relationship between housing price and turnover • ratio still positive? • We used panel cointegration tests to determine whether • higher prices boost the higher turnover ratio, or if the • latter results in higher prices.

  7. Does there have interaction in sub-markets ? • Taipei City, the capital of Taiwan, has highest housing price, and The New Taipei City has most population. • The three areas connect with two highways, one railroad and high speed rail. • Numerous commuters living in New Taipei City or the Tao-Zhu area rode to Taipei City on public transit daily

  8. Correlations among the selected variables in Taipei City, New Taipei City, and the Tao-Zhu area, Q1, 2000-Q4, 2012 • We used the Granger causality tests to describe the • interaction in the three sub-markets.

  9. The panel data • Time series: 2000Q1 ~ 2012Q4 • The areas: Taipei City, New Taipei City and Tao-Chu area • The variables: • Turnover ratio (%) • The presale house unit price ( thousand dollars/m2 ) • The data sources: • the Ministry of the Interior • Cathay Real Estate Index Quarterly Report

  10. Random and fixed effects test (1/2) • Three models • P is the presale housing unit price • LP is the log presale housing unit price • R is the turnover ratio • S is the transfer volume. • The intercept is represented by α, which was different in the sub-markets. • β is the coefficient of the independent variables to test how they affected the dependent variables. • μ is the error term. • i represents the three sub-markets, as i=1,2,3. • t is the time period of the quarter data, as t=1,2,…,43. price and turnover ratio log price and turnover ratio Price and volume

  11. Random and fixed effects test (2/2) • Random effects-Hausman Test • Null: had random effects • Fixed effects test-Likelihood Ratio • Null • Null

  12. Panel data unit root test • This study used unit root tests for the panel data, according to the study by Levin, Lin, and Chu (LLC, 2002) and Im, Pesaran, and Shin (IPS, 2003). • Results were similar for the turnover ratio and log price and the transfer volume and price. • They were stationary in the long-term. The variables are all I(1)

  13. Panel data cointegration tests More than one cointegration relation exists between the turnover ratio and price • This study tested the cointegration of variables by using the Fisher cointegration test. • Results were similar for the turnover ratio and log price and the transfer volume and price.

  14. Equation Estimation(1/2) • The AIC and SBC of Model 2 werelower than those of Model 1 and Model 3 as well. • The intercepts in Model 2 showed that the housing price variance of Taipei City was higher than that of New Taipei City and the Tao-Chu area. Model 2 was the better one.

  15. Equation Estimation(2/2) 1.The relationship was positive, and turnover ratio led the price. 2.The turnover ratio could describe about 13% of the price variance. • The results of Model 2 showed that the turnover ratio in the (t-1) period and the price (or log price) had a positive relation. • Model 2 appears superior for describing the price variance, of which the (t-1) period turnover ratio could describe about 13 % of the price variance in Model 2.

  16. Granger causality Tests 1.Highest price, and affects other areas more 2.Less commuting time, and more interaction

  17. Conclusion • The increasing turnover ratio would expand the variance of the price, but the turnover ratio would not increase without long-term limitations. • The prior period turnover ratio could describe about 13% of the current price variance. • The interaction effects in sub-markets decreased by the commuting time. Less commuting time, and higher effects.

  18. Thanks for your listening!

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