1. Introduction
Houses have gained the status of a valuable asset class in both the developed and developing countries. Housing is reported to provide an excellent risk-return trade-off and is a good alternative to stock and bond portfolios. Relative to the stocks and bonds investment, direct housing investment provides advantages in the form of rental income as well as a capital gain (Baek & Lee, 2018). It also offers an inflation hedge in the long run.
Developing appropriate house pricing or valuation method is important for several reasons. First, houses as an asset class face unique challenges in their valuation because of their relative differences compared to other assets like equity, commodities, bonds, etc. Second, house prices are one of the indicators of the macroeconomic situation, thereby necessitating the use of an appropriate and effective method of house pricing or valuation (Calomiris, Longhofer, & Miles, 2009; Wang & Kim, 2014). Another important reason is the utilization of house pricing by various sectors like banking, real estate (market correction) and government (cost-of-living index).
Indian real-estate market is developing as an attractive investment opportunity for local and foreign investors. In 2019, the housing sector reported a sale of 0.26 million houses in seven major cities (IBEF, 2020). Further, the real-estate sector in India is expected to reach USD1 trillion by the year 2030. As per a report, the main reasons for the rapid growth of the real-estate sector, including housing, in India are, “rising purchasing power, continuously rising population, increasing investments in socio-economic infrastructures, rapid urbanization and migration of people from rural to urban areas” (Research and Markets, 2015). There are very few econometric studies on urban house pricing in India. This research tries to fill this gap by empirically testing a model of house pricing in Delhi-NCR (National Capital Region).
The primary aim of the study is to develop a model for house prices, including investment factors. It tries to refine the hedonic pricing model by considering the variables used in the asset pricing model. The model is evaluated by regression analysis and confirmed by the application of robustness checks. The rest of the paper is structured as follows. Section 2 discusses the theoretical background of the research. Section 3 describes the research methodology. Section 4 illustrates the house pricing regression models. The results are discussed in Section 5. Section 6 concludes the research findings.
2. Literature Review
This section describes the existing models of house pricing, variables affecting the house pricing, and a review of the past studies.
2.1. Models of House Pricing
House pricing methods or models have been classified into “Traditional” and “Advanced” Kuşan, Aytekin and Özdemir (2010) and Pagourtzi et al. (2003). The traditional models apply comparison methods or regression. Some common methods in the traditional models are, “comparable method, investment/income method, profit method, development/residual method, contractor method, multiple regression method and stepwise regression method”. Advanced models consider the behavioral aspects of the market players. These models include, “artificial neural networks (ANN), hedonic pricing method, spatial analysis method, fuzzy logic (FL), and Autoregressive Moving Average (ARMA)” (Kuşan et al., 2010). Nguyen (2016) has listed more methods, namely, sales or rent comparison model, capital asset pricing model, the income approach, and the cost (of construction) approach.
2.2.Hedonic Pricing Model
The literature review shows that the hedonic pricing model has been consistently used for predicting/valuing house prices (Randeniya, Ranasinghe, & Amarawickrama, 2017; Lisi, 2019; Sunak & Madlener, 2017; Pace & Zhu, 2017; Kuşan, Aytekin, & Özdemir, 2010; Debrezion, Pels, & Rietveld, 2007; Diao & Ferreira, 2010; Li et al., 2015; Sunding & Swoboda, 2010). S. Rosen is believed to be the earliest proponent of the hedonic model (Liu, 2013). This model views houses as a product with bundles of attributes (Lisi, 2019; Liu, 2013; Harrison & Rubinfeld, 1978). In the conventional product pricing, price depends on demand whereas in case of houses the price is determined by features (Oladunni & Sharma, 2017). Liu (2013) also mentions that the main reason for the popularity of the hedonic method has been attributed to the heterogeneity of the product (houses), and the unpredictable nature of its transaction. The hedonic model has received criticisms too (Abidoye & Chan, 2017, 2018). Oladunni, Sharma and Tiwang (2017) point out the issues in the open-ended nature of the house attributes. Fan, Ong and Koh (2006) elaborate on the weaknesses further by focusing on the basic model assumptions.
2.3.Asset-based Pricing Model
Since houses have been positioned as an asset, the capital asset pricing model or asset-based pricing model has gained prominence in the pricing and valuation of houses. The asset pricing model applies the concepts of risk, return, opportunity cost and tests the price in terms of return on investment (ROI) (Phuoc, 2018). When translated into the concept of ROI, it provides a better tool for the stakeholders for dealing in houses. The asset pricing model is being applied more also because the simple log or power utility models could not account for “basic features of asset pricing data and time-series behavior of asset returns” (Hansen & Cochrane, 1992). Palmquist (1980) applied asset pricing model to house market in their study based in the United Kingdom. They justified that the use of this model gives a more elaborate view of the influence of factors on house pricing. The asset pricing model applies a similar concept to house pricing as in the equity market wherein instead of the Price-Earnings ratio, House Price to Net Rentals is applied in the housing market (Campbell & Cochrane, 2000). Gelain and Lansing (2014) have highlighted that the asset pricing model is better equipped to predict the volatility and influencing factors related to housing pricing.
2.4.Past Studies
The literature on house pricing reveals many factors that have been employed as a function of house pricing. Freeman (1979) proposed one of the most popular frameworks for considering the variables of house pricing. He suggested there are three key attributes in the housing market, namely, structural attribute (S) such as the size of a building; accessibility or locational attribute (L) such as the distance to central business districts; and neighborhood (N) attribute such as the quality of the surroundings. These or similar categories were used in other studies (Dubin, 1998; Nguyen & Do, 2020; Oladunni et al., 2017; Selim, 2008). Environmental factors have also been added as an attribute in house pricing in a recent study (Hussain, Abbas, Wei, & Nurunnabi, 2019). Within these broad categories, some researchers have focused on some specific attributes like air pollution (Harrison & Rubinfeld, 1978); wind farm (Sunak & Madlener, 2017); agriculture (Ready & Abdalla, 2005; Yoo & Ready, 2016); house interiors (Sirmans, Macpherson, & Zietz, 2005); schooling (Yuan, Wei, & Wu, 2020); open space (Zainora Asmawi, Mohit, Noor, Abdullah, & Paiman, 2018). Kuşan et al. (2010) modified the traditional categories and named them “House factors; Environmental factors; Transportation factors”. Stadelmann (2010) considered thirty-one house pricing variables for their study based in Zurich. They discovered that locationspecific variables are the most significant. Kuşan et al. (2010) applied the Fuzzy Logic system, to develop a model for predicting house prices. They considered the variables such as public transport, educational building, that fall under the category of Accessibility or Location Attribute. Some studies also considered macro-economic variables (Kim & Park, 2005; Kok, Ismail, & Lee, 2018; Nguyen, Bui, & Nguyen, 2019).
3. Research Methods and Materials
3.1. Mathematical Functional Form
In this study, the equation has been modeled as a hedonic housing regression borrowing the features of an asset-pricing model. House prices can be expressed as a function of the three factors present in Freeman’s framework (Randeniya et al., 2017).
P = f (S, N, L) (1)
Where, S =Structural attribute, N =Neighborhood attribute, and L = Locational attribute
The most important aspect of the asset-based pricing model is that, if the rent-to-price ratio exceeds the user-cost rate, renting becomes less attractive than ownership. When the rents equal the costs of owning, a state of equilibrium is reached. This rent-to-price relationship fits well in markets where rental regulation is absent or limited (Tu, de Haan, & Boelhouwer, 2017). We have based our pricing models on multiple regressions, where the prices of an individual property is a response (dependent) variable, and their associated characteristics, are explanatory (independent) variables. Mathematically we formulate the model as:
Y = α+X1β1 +X2β2 +….+ Xnβn +ε (2)
Where,
Y= Response Variable (Price)
Xi = Explanatory Variables affecting the price
α=Intercept
ε= Error term
β1, β2 ,…βn are the regression coefficient associated with the respective explanatory variables X1 , X2 , …Xn ..
3.2. Data and Method
The research design of this study is a non-experimental and explanatory design that used a multiple regression analysis to test the relationship between price and rent. The data collection process involved contacting the real estate dealers in the Delhi-NCR region. The details and contact addresses of the dealers were collected from yellow pages and various online platforms. A total data set of 2,249 house buyers was received from the various dealers. The data cleaning process included removal of missing values and outliers, rounding up of numeric values to two-digits, selecting ready-to-move high-end properties (price > INR 10 million), recently built (2016-2019) with sufficient social infrastructure. We applied these parameters to ensure that the property may qualify better as an investment asset. Because of the data cleaning process, the final sample of 1,899 (response rate = 84.4%) was found fit for further statistical analysis. The occupation of house buyers was found to be business (25.9%), private service (25.2%), government service (24.8%) and foreign employment (24%)
The master dataset was then imported in R environment and transformed into a data frame. First, the dataset is listed and checked if the assumption of independence of the variable has been met by carefully examining that there is only one data point per subject (observation). Further, crosstabulations were used to validate the data through frequency analysis. Univariate normality, assumption and outliers are checked, and to do this, the box-and-whisper plots were plotted.
3.3. Study Variables
The proposed house-pricing model comprises of two different types of variables – the response variable (dependent) and the explanatory variables (independent). The response variable is the price. The Freeman framework was considered for selecting the explanatory variables (Freeman, 1979). As per the framework, the variables affecting house pricing may be categorized into three main factors, namely, the structural attribute; accessibility or locational attribute; and neighborhood attribute. The details of the response and explanatory variables are presented in Tables 1 and 2. Table 1 presents the summary of qualitative explanatory variables, which are categorical. The quantitative explanatory variables, which are discrete or continuous are presented separately in Table 2.
Table 1: Qualitative explanatory variables
Table 2: Descriptive Statistics of Quantitative Explanatory Variables
4. Results and Discussion
Stepwise multiple linear regression modeling applied to test the pricing model stated in section 2. The rationale behind applying the multiple regression models is that it helps in testing several explanatory variables simultaneously. A stepwise regression method is a combination of a forward selection and backward elimination. The major advantage of the stepwise selection is that it can select a subset of explanatory variables by using statistical criteria (Prost, Makowski, & Jeuffroy, 2008). We have deleted the outliers as the OLS (ordinary least square) estimators are too sensitive to outliers present in the data.
4.1. Regression Results
We started with the first hedonic pricing model, wherein we have considered all the eleven explanatory variables. The variables are scaled as Z-score, to normalize its units, range and magnitudes. Three explanatory variables carpet area (size of the property); payoff (rental income); and the annual maintenance charges, were found to be statistically significant. This finding supports the postulated price function. The regression results are presented in Table 3. Step-wise regression method applied to test the second hedonic model. This statistical procedure helps identify the best statistical model which neither under fits nor over fits based on AIC (Akaike`s Information Criterion). AIC is a powerful and popular model selection statistical tool that is based on the maximum likelihood estimator (Pan, 2001) Again, it helps identify significant explanatory variables contributing to the model. The result confirms that the statistically significant variables identified in model 1 are significant along with the intercept. Finally, we test the house-pricing model with the three statistically significant variables. This model not only confirms the price function but established the statistical model fit.
Table 3: Evaluation of the models
A summary of the estimates of the three models on different statistical parameters is presented in Table 3. It may be noted that the models are similar to the various parameters. The variance information factor (VIF) tests the multicollinearity in the models and also the relative strength of the models. The results show that there is no multicollinearity in any of the models. Further, model 3 has the smallest VIF value showing that it best explains the model relationship.
The correlation plot presented in Figure1 helps in understanding that the explanatory variables of price function are not linearly correlated. Also, the absence of heteroscedasticity was tested by applying Breusch-Pagan test and we find that the p-value is 9.219e-05 (<0.05) confirming the absence of heteroscedasticity.
Figure 1: Correlation plots
As per statistical conditions, all linear models need to satisfy some strong assumptions concerning the data structure. These are: (i) multivariate normality; (ii) no multi-collinearity; (iii) linearity and; (iv) homoscedasticity. Violating these assumptions may undermine the validity of the regression models. The three regression models meet the above-stated assumptions, as evident by the regression plots. The diagnostic plots are illustrated in Figure 2. Therefore, it is safe to assume that the obtained model is relatively sound and trustworthy on the defined statistical criterion.
Figure 2: Diagnostic Plot Analysis for all Models
5. Conclusions
It is imperative to have a proper understanding of the relationship between housing prices and rents to reflect an asset price. This study aimed to understand house pricing, considering it as an asset, with a focus on the Indian real estate market. An understanding of the relationship between housing price and its earning in terms of rental income is significant for ascertaining the investment worthiness of houses. An important contribution of this study is to combine the assetpricing model with the hedonic model. The model, when checked against various statistical parameters, confirms that it conforms to the standards. The R-square (>0.44), adjusted R-square (>0.44) and residual standard error (≤ 0.51) is taken into account for model fit. A minimum benchmark of R-Squared is 0.45 is taken for the model to be accepted. In a price-to-rent framework, credit standards for first-time home-buyers significantly affect house prices, in line with theory (Ortalo-Magné & Sven, 2006).
This study offers insight for modeling of housing prices and rental estimates where market sentiments, laws of economic geography and urban economics play a more dominant role. The most important and complex task of housing pricing modeling is the selection of variables. The application of stepwise method has helped in selection of important features that may be utilized for the development of housing price index. The pricing model arrived at, helps to understand the dynamics of housing prices and potential risks of the economic law of return (investment) for strategic business planners of the housing industry. Also, pricing can be used for making marketing mix models. Future research on the housing models will enable to plan the housing rental index, the calculation of taxes and the development of social infrastructure will help generate more multiple effects on the urban economies.
The main limitation of the study is that housing price model works only on the assumption of market equilibrium, which is not true. The second factor that limits the effectiveness of such a model is the difficulty in measurement of some attributes such as social infrastructure, construction quality, etc. This study could not include external factors such as taxes and interest rates that may be a limitation on the generalizability of the model.
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