1995
DOI: 10.1108/14635789510147801
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Forecasting commercial rental values using ARIMA models

Abstract: The application of short‐term forecasting techniques to the prediction of commercial rental values generates valuable information about the dynamics of rent movements. It also captures short‐run trends more effectively than do other forecasting procedures. Makes use of ARIMA models to provide one‐step‐ahead predictions. The results show that ARIMA models perform better in the case of retail and office sectors. The forecasts for these sectors are satisfactory. Retail rents bear a relationship to their past valu… Show more

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Cited by 58 publications
(43 citation statements)
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References 16 publications
(19 reference statements)
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“…One of the earliest attempts to explain the determinants of office rents was carried out by Guardiner and Henneberry, cited by Kiehela and Falkenbach [10]. In a study by McGough and Tsolacos [11] it was mentioned that the existing empirical work on the prediction of rental values is based mainly on dynamic specifications. A model of regional office rents was estimated over a period 1979 to 1984 and was used to forecast the rental values for 1985 [11].…”
Section: Determination Of Rental Levels and Earlier Studiesmentioning
confidence: 99%
See 1 more Smart Citation
“…One of the earliest attempts to explain the determinants of office rents was carried out by Guardiner and Henneberry, cited by Kiehela and Falkenbach [10]. In a study by McGough and Tsolacos [11] it was mentioned that the existing empirical work on the prediction of rental values is based mainly on dynamic specifications. A model of regional office rents was estimated over a period 1979 to 1984 and was used to forecast the rental values for 1985 [11].…”
Section: Determination Of Rental Levels and Earlier Studiesmentioning
confidence: 99%
“…In a study by McGough and Tsolacos [11] it was mentioned that the existing empirical work on the prediction of rental values is based mainly on dynamic specifications. A model of regional office rents was estimated over a period 1979 to 1984 and was used to forecast the rental values for 1985 [11].…”
Section: Determination Of Rental Levels and Earlier Studiesmentioning
confidence: 99%
“…(1991), McGough and Tsolacos (1995) and Tse (1997) who argued the need for at least 50 sample observations to produce an adequate time-series model. Accordingly, the combination of both IPD and Scott's datasets extends rental series for 13 years for 1963-2010 period.…”
Section: Dependent Variablementioning
confidence: 99%
“…The short-term dynamics are captured by performing 1 day ahead out-ofsample forecasts resulting from the estimation of the model with the previous 60 observations (i.e., data for approximately one quarter). The size of the rolling window is chosen in accordance with McGough and Tsolacos (1995) and Tse (1997) who suggest that the minimum number of observations needed for generating an ARMA model is 50 observations. The sample is rolled forward by including a new The SBC (Schwarz Bayesian information criterion) is calculated every year for all models up to five lags.…”
Section: Arma Modelsmentioning
confidence: 99%