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Article

Housing and Setting Constraints: The Portuguese Evidence

by
António Duarte Santos
1,* and
Hélio Castro
2
1
Department of Economic and Business Sciences, Autonomous University of Lisbon and CARS—Centre for Economic Analysis of Social Regulation, Rua de Santa Marta, n° 47, 6° Andar, 1150-293 Lisboa, Portugal
2
School of Engineering of Porto, INESC TEC—Institute for Systems and Computer Engineering, Technology and Science, Rua Dr. António Bernardino de Almeida, n° 431, 4249-015 Porto, Portugal
*
Author to whom correspondence should be addressed.
Sustainability 2022, 14(18), 11720; https://doi.org/10.3390/su141811720
Submission received: 27 June 2022 / Revised: 29 August 2022 / Accepted: 31 August 2022 / Published: 19 September 2022
(This article belongs to the Special Issue Systems Approach and Management for Urban Sustainability)

Abstract

:
In the last few decades, Portugal has witnessed an extraordinary quantitative and qualitative transformation in housing provision. The pace of housing construction was so extensive that the contemporary real estate market is currently characterized by an excessive supply, vis-à-vis the resident population. In this study, we discuss the impact of the financial process on the housing sector in comparison with tenancy. We consider transaction prices of the housing assignments, either through acquisition or through tenancy. The recent shock resulting from the pandemic situation did not slow down house prices but caused a slight drop in rents. The model used proposes to analyze the fluctuations in prices and rents in the face of external shocks. In the residential market, the estimation is complex due to the many heterogeneous attributes of residential assets. Non-fluctuating variables, such as size, location, and external demand for homes, explain a large part of the variation in price levels included in the model.

1. Introduction and Literature Analysis

The cases studied here, individually, centered on a focus or, as in this case, on a country, form a research methodology and a didactic approach. It begins by discussing case research, follows the history of the case study research and defines several dimensions of the study in question. The explanation of the method used is based on data collection analysis and, finally, examines the future of the topic for researching other case studies [1]. The housing sector in Portugal presents a paradoxical situation. In average terms, on the one hand, we have a high number of vacant dwellings and, on the other hand, families find it difficult to access adequate housing for their financial means and the size of their households. The relative weight of the tax burden has not helped families. This dilemma brought with it the issue of maintaining the housing stock in terms of its degradation due to the drop in families’ purchasing power, whose weight of housing and comfort expenses are too high. Portugal had the tenth lowest mark from the European Commission (EC) in 2021 [2], but the weight has increased when compared to 2015, in a percentage equivalent to 0.3% of GDP. It was 2.5% higher when compared to 2011, a period that includes the time of the Troika and the “huge tax increase”, with which the country was forced to comply. In 2021, the EC (2021) estimated 34.7% of GDP in taxes and discounts, despite being below the EU average, which is misleading. When the Special Rehousing Program started, in 1993, several studies suggested the need to build around half a million houses, which was not unrelated to the existence of a huge amount of informal and precarious constructions [3,4,5,6,7]. In twenty years, the country has built one and a half million new homes, eliminating, in technical terms, the housing deficit. However, there are still problems related to house degradation and an increase in the construction of housing in urban centers and on the outskirts of cities, which imply mobility needs for families and housing costs, especially rent, which remain relatively high. According to the OECD (2020) [8], since 2010, Portuguese families have allocated the largest proportion of their income to housing costs, i.e., to expenses related to the comfort that comes from owning a home. The rigid supply of housing results from the scarcity of land and regulatory policies that make it more expensive and less available. Anticipation efforts are essential, given that dwellings have a long lifespan [9]. It is in this context that the expression “so many people without homes and so many homes without people” has taken on a recent dimension, as in Portugal, there is no longer a housing deficit, but rather adaptations and difficulties in accessing housing (Council of Ministers Resolution No. 48/2015, of 15 July) [10]. As with other social policies, housing policy reflects the ideological choices of those who govern the country (Guedes, 2012) [11]. Nesslein [12] wrote that “the optimal economic organization of the housing sector has long been a policy question generating extreme ideological controversy”. Silva [13] also states that “Left parties tend to emphasize social issues more, while parliamentary right parties focus more on the political dimension”. This desideratum is sublime, but who supports the financing and its maintenance in a country with an external debt at the limit and with an astronomical public debt compared to its size and annual wealth production? Taxes? In fact, when ideology overlaps with scarce reality, the result is state failures, which are followed by negative externalities. To ensure the right to housing, a public policy is required that takes into account its economic characteristics and local environment [14], capable of facilitating access to housing for all, whether through purchase, lease or even transmission. In this sense, it was important to consider and reflect on the advantages inherent to the behavior of purchase and sale and rental market prices, with and without public intervention in housing promotion, on its forms of action and on its results. In a broad sense, housing policy basically has two main areas of action: one relates with planning and land use and the other with the promotion and allocation of decent housing. From the first two decades of this century onwards, housing policy guidelines were joined by apprehensions of more social concern for the most unprotected groups of people, with rehousing programs being developed in urban areas, sponsoring rentals supported by different governments and encouraging the construction and rehabilitation of housing properties. We cannot forget that each political economy is a public policy, such as housing policy. Uncertainty and risk have strong potential policy implications. Many mistakes have been made because governments have based their political actions on inappropriate parameters (Perez et al., 2017) [15], based on estimates that did not adequately take into account risk and uncertainty ([16], p. 1661). Perhaps the first mistake is not understanding what housing is. The housing brand has to be well understood, in the right measure of its double characteristics, as an asset, consisting of the land and the building, and as a consumer good, in the form of services ([17], pp. 1–2).
Covering housing in the analyzed period of time reflects the understanding of the various economic moments as a result of the coexistence of historical failures in the housing system and the recent crises due to the real estate and tourism boom. On the other hand, a critical reflection on recent measures in terms of housing policy, especially those included in the New Generation of Housing Policies, aims to present concrete possibilities for reforming public action [18,19]. Decades of comparative studies on housing systems in Europe have shown that the national models that have come closest to guaranteeing universal access to housing are those where the State has been most active in terms of regulation, with effects on the forms of access to housing. This is what happens in northern European countries, which Alves ([20], p. 1175) called the ‘Scandinavian model’, a concept widely used in southern European countries. In southern European models, where states have not adopted comprehensive regulatory policies, permanent home ownership is dominant [21]. In the models of the Nordic countries, where practically the entire urban housing stock is under some form of price regulation and management model, renting is the major form of access to housing [22]. In other words, robust regulation makes renting a stable and secure option, allowing families not to have to expose themselves to indebtedness to have access to their own housing, as a result of assertive and scrutinized regulation. Notwithstanding, this suggestion of models of choice is a cultural genesis, which we can call “north-south housing”; it is, to some extent, in line with the statement that the “State production of housing is deeply interwoven into the national and cultural circumstances that have shaped our different housing stocks” ([23], p. 22). State intervention must be a balance between the control it exercises over public administration and the free market. Otherwise, it can become absolutist state control and manage the productive force, public spending and private property, or an absentee state, in which the market is governed by large monopolies.
In general, it is well known that economic law is a means of studying the intervention of the State in the economy and its main objective is to meet human needs. Other than that, there is an interdependence between law and economics, but for interference to be carried out in a controlled manner, it must be in accordance with legal norms. The State acts when it directly develops the economic activity of which it owns or intervenes in the private sector and also when it interferes indirectly in the economic activity of private property, in which housing policy is included. Thus, the term “State intervention” should be used when it regulates the housing market or other markets, without directly acting or participating in the economic activity of which it legally owns. That is why State intervention is necessary through the offer or creation of incentives to the offer of activities that constitute positive externalities, subsidizing research and development or offering public housing and through the inhibition or creation of incentives to the non-production of negative externalities, e.g., regulations of controlling affordability and dignity in housing, no matter the possession. In other words, Pareto improvement can be achieved with the intervention of public authorities [24].

2. Research Methodology and Framework

The study methodology is based on the model of Categorical Principal Component Analysis (CATPCA), which is a multivariate exploratory analysis technique that transforms a set of correlated variables into a smaller set of independent variables or linear combinations of the original variables. Thus, this method aims to reduce the complexity in the data. This way, from the available variables or from the inserted data, indicators are used that aggregate a large part of the information present in the original variables. These indicators, called principal components (dimensions), are the linear combination of all the variables studied. In this study, two components (two dimensions) were defined to simplify the analysis of the information of the variables under study. This process simultaneously quantifies categorical variables while constraining the dimensionality of the data. Reducing the dimensions makes it easier to interpret some uncorrelated components instead of a lot of more or less extensive variables unrelated in the original variables. Standard principal components analysis assumes linear relationships between numerical variables. Categorical variables are optimally quantified in accordance with the dimension assumed in the model analysis and non-linear relationships between variables can be modelled.
This methodology was selected due to the number of variables used in this study, not only to understand the correlation between variables (bi-variable correlation) but to understand the systemic result present when we study the relations among all the independent variables presented in this study.
Table 1 shows the acronyms of the variables considered in the model and the theoretical meaning of each of the thirteen variables considered.
A brief note to mention is that we did not consider the population because, between the 2011 and 2021 Census, there is a −2.1% variation, which means a certain stability of individuals for a decade (10,344,802 in 2021 compared to 10,562,178 in 2011), according to the Portuguese National Institute of Statistics. It was the first time since 1970 that the country lost population between censuses. The inland of the country decreased in the number of inhabitants when compared to 2011. In this decade, the positive migratory balance was not enough to compensate the negative natural balance (difference between births and deaths). In 2021, around 50% of the population was concentrated in 31 of the 308 municipalities, located mostly in the Metropolitan Areas of Lisbon and Porto. The questionnaire, translated into five languages ten years ago, was translated into 11 other languages in 2021. The Portuguese population today is strongly located on the coast, with the district of Algarve, Lisbon and Porto standing out, which together absorb around 55% of the total population. In fact, it is in these two cities and in this district that construction continues to increase. This paradox is due to foreign demand with high incomes, made up of the French, English, Brazilians, Germans and Chinese.
The summarized model is shown in Table 2. The analysis of the output shows that the first component (Dimension 1) has an eigenvalue of 7.594, which corresponds to 63.283% of the total variance. The second dimension (Dimension 2) has 2.236, which corresponds to 18.631%, in which both dimensions make up a total of 81.914% of the total variance.
The variance accounted for the centroid coordinates and for the total coordinate vector shown in Table 3.
In the first dimension, the variables with the highest weight of variance are: unemployment rate (Tx. Des.), gross disposable income of households (Rend. Dis. Brut. Fam.), housing construction cost index (Ind_Cus_Con_Hab), home loans to individuals (Emp_Hab), residential price index (Ind_Pre_Res) and housing rent index (Ind_Ren_Res), as shown in Figure 1.
In the second dimension, the variables with the highest variance weight are: reference interest rate in the euro area (index) (Tx_Jur), housing stock estimates (Et_Par_Hab), inflation rate with housing (Tx_Inf_Hab) and housing costs per family (Cust_Hab_Fam.), as shown in Figure 2.
With the combination of the two dimensions, most variables have a statistically significant representation (higher than 70%), with the exception of the conditional housing rents (Ren Cond) variable, which has a weight of less than 20%.

3. Discussion of Results

Based on the existing data, an analysis of bivariate correlations was performed. Below are the tables that present the variables with the greatest correlation relevance, positive (1. Strongly Positive, 2. Positive) or negative (3. Strongly Negative, 4. Negative), present in Table 4 and also the correlations between all the original variables in this study, depicted in the variable principal normalization for the two dimensions as shown in Table 5. This Table shows correspondence between the realization of the objects—the years under study (2010, corresponding to Case Number 1, until 2019, corresponding to Case Number 10)—in the two defined dimensions (Dimension 1 and Dimension 2). This analysis allows for verifying the evolution of the objects (in this table, by years) in relation to each dimension. As an example, the year 2010 (Object Case Number 1) has a value of 0.277 in Dimension 1 and a value of −2.134 in Dimension 2.
A brief note on the interest rate implication is considered. According to several authors, the variable that most influences real estate promotion and credit for home purchase is the implicit interest rate on credit [38,39,40]. The opportunity cost is the lease through the market and the one that is supported by the public authorities. The interest rate on home loans reflects the relationship between the total interest due in the reference month and the principal outstanding at the beginning of that month (before repayment). The interest rate of month m, for characteristic k, with periodicity of p months, is given by the following calculation formula (INE; 2021 [41]):
I m k p = ( J m k p C ( m p ) k p + 1 ) 12 p 1
The characters are: is the total amount of interest due in month m for characteristic k, with amortization of p in p months and is the total amount of outstanding credit, for characteristic k, whose reimbursement is paid from p to p months, at the time of collection of the previous repayment. This formula aimed to verify whether, in practice, the interest rate would have any relevant impact on the final results, as we will see later in the text. The present formula is used by the National Statistics Institute to determine the interest rate in studies on housing.
Figure 3 shows the correlations of the 14 original variables used in this research. It is noticed that the strongest relations are between Residential price index (Ind_Pre_Res) and Gross disposable income of households (Ren_Dis_Bru_Fam), Gross disposable income of households (Ren_Dis_Brut_Fam) and Residential rent index (Ind_Ren_Res), Residential rent index (Ind_Ren_Res) and Residential price index (Ind_Pre_Res), and Housing construction cost Index (Ind_Cust_Con_Hab) and Home loans to individuals (Emp_Hab).
In Figure 4, we can see the behavior of the years in relation to the two dimensions in the analyzed timeline (2010–2019). In Dimension 1, there is a neutral alignment (close to zero) in the years 2010, 2015 and 2016, a negative weight in the period from 2011 to 2014 and a positive weight in the years 2017, 2018 and 2019. In Dimension 2, neutrality is obtained in the years 2012, 2017, 2018 and 2019, a negative relationship in 2010 and 2011 and a positive relationship in the period from 2013 to 2016. It is also possible to understand that there is no strong trend between the years analyzed because the dispersion of the values found in relation to the two dimensions is not concentrated.
Table 6 shows the weights that the variables studied have in the two dimensions, which are later presented graphically in Figure 5. Based on the data presented, Dimension 1 includes the following as determining variables (Component Loading higher than the absolute value of 0.5) the variables Housing stock estimates (Est_Par_Hab), Residential price index (Ind_Pre_Res), Home loans to individuals (Emp_Hab), Gross disposable income of households (Ren_Dis_Bru_Fam), GDP growth rate (Tx_Cre_PIB), Residential rent index (Ind_Ren_Res) and Housing construction cost Index (Ind_Cus_Con_Hab). In Dimension 2, the variables are Housing costs per family (Cust_Hab_Fam) and Housing stock estimates (Est_Par_Hab). Interestingly, the variable Housing stock estimates (Est_Par_Hab) is defined as a determining variable in both dimensions.
Establishing a relationship between the objects of study (years) and the defined variables, three groups were defined (blue, orange and green circles) that are presented in Figure 6. It is noted that, at the beginning of the analyzed period (blue circle), the Interest rate (Tx. Jur.) and Housing inflation rate (Tx. Inf. Hab.) had a negative preponderance in both dimensions. Subsequently (green circle), Housing cost per family (Cust. Hab. Fam.), Unemployment rate (Tx. Des.) and Conditional housing rents (Ren_Cond) are the most significant original variables, with a negative impact on Dimension 1 and positive impact on Dimension 2 and, at the end of the analyzed period (orange circle), the GDP growth rate (Tx. Cre. PIB.), the House price index (Ind. Pre. Res.), the Gross disposable income per household (Ren. Dis. Bru. Fam.), Residential rent index (Ind_Ren_Res), Housing construction cost index (Ind_Cus_Con_Hab) and the Home loans to individuals (Emp. Hab.) take on relief, mainly in Dimension 1.

4. Study Results and Data Collection

Taking into account the rule of eigenvalue greater than one, it can be said that the relational information between the variables studied in two orthogonal components significantly comprises the total variance in these variables, as it reaches a value of approximately 82%. In this study, the weights of the variables in the components, the percentage of explained variance and internal consistency were determined, as shown in Table 7. The eigenvalues greater than one rule [42] is implicitly linked to this model and states that the number of factors to be retained should correspond to the number of eigenvalues greater than one (i.e., deviating from the null expectation).
Thus, based on the data regarding the weights of each variable, the significant variables for Dimension 1 are: Gross disposable income of households (Ren_Dis_Bru_Fam) (0.948), Housing construction cost index (Ind_Cus_Con_Hab) (0.927), Residential rent index (Ind_Pre_Res) (0.921), Home loans to individuals (Emp_Hab) (0.916), Residential rent index (Ind_Ren_Res) (0.895), GDP growth rate (Tx_Cre_PIB) (0.812) and Housing stock estimates (Est_Par_Hab) (0.597). It should also be noted that in Dimension 1, the variables Unemployment rate (Tx_Des) (−0.984), Housing costs per family (Cust_Hab_Fam) (−0.743) and Reference interest rate in the euro area index (Tx_Jur) (−0.523) have an opposite weight to the other variables. As for Dimension 2, the variables Housing stock estimates (Est_Par_Hab) (0.726) and Housing cost per family (Cust_Hab_Fam) (0.621) are the ones that most represent it. The variables Reference interest rate in the euro area index (Tx_Jur) (−0.778) and Inflation rate with housing (Tx_Inf_Hab) (−0.652) represent the opposite. Dimension 1 has very high internal consistency (α = 0.947) and Dimension 2 also has high consistency (α = 0.603), though not as high as Dimension 1.
Through the CATPCA analysis and the representation on the two-dimensional map of the two dimensions, it is possible to state that, in the last years (2017–2019) of the study, Dimension 1 was influenced by Gross disposable income of households (Ren. Dis. Bru. Fam.), Housing construction cost index (Ind. Cus. Con. Hab.), Residential price index (Residential price index), Home loans to individuals (Emp. Hab.), Index of residential rent (Ind. Ren. Res.), GDP growth rate (Tx. Cre. PIB.), and Housing stock estimates (Est. Par. Hab.). The years 2011–2015 show a negative relationship with Dimension 1. Dimension 2, particularly in the years 2013 to 2016, is characterized positively by New housing construction cost index (Housing construction cost Index) and Housing stock estimates (Est. Par. Hab.) and, in the first two years of study, had a negative relationship.

5. Conclusions

The increasing attention that cities have given to housing since the 2011 financial crisis has made accessibility a relevant political issue for the governments of most European countries. Housing, though, cannot be viewed as an isolated matter. Portuguese governments have faced periods of stagnation in regard to housing allocation due to the country’s financial crisis. Even though there have been changes in economic policy, the rental market has not undergone much alteration in this period, even after an increase in construction. Despite legislation and housing regulation in Portugal, people systematically opt for homeownership, which has maintained and hindered the increase in the rental market, both private and public. We aimed to show and analyze these phenomena considering the regulation of housing by different public institutions and governments. Our conclusion is that only in the framework of cross-sectional investment will new and decent housing be made available, which will have an impact on housing prices and rents. The time interval under analysis corresponds to the period of the 2008/2009 financial crisis, with Portugal asking for international financial assistance. From this juncture, the crisis spread across Europe. Its beginning resulted, as in many other social areas, in political disorientation, with unpredictable and deep social effects. The housing sector did not escape this moment of financial crisis, which had harmful economic effects with substantial social consequences.
In an analysis of the respective time series, at the beginning of the period analyzed, the reference interest rate in the euro area index and the housing inflation rate had a negative preponderance in the two dimensions. Later, the housing cost per family, the unemployment rate, the inflation rate with housing and the conditional housing rents became the most significant original variables, with a negative impact on Dimension 1 and a positive impact on Dimension 2. Further, at the end of the period analyzed, the GDP growth rate, the house price index, the gross disposable gross income per family, the index of residential rent, housing construction cost index and the housing loan to individuals are mainly highlighted in Dimension 1.
Thus, a change is made evident in the use of housing in Portugal, based on the results obtained. It seems that, at the beginning of the period studied, housing had a strong relationship with interest rates and housing inflation rate, even both with low levels. Then, in the period after 2013, access to housing becomes linked to the unemployment rate, housing cost per family and conditional housing rents. At the end of the period studied, there is a stronger relationship with several variables, a conclusion being that the complexity of access to housing in Portugal depends on more factors, most of which are exogenous to Portuguese households. It is not statistically deducible evidence, but it is a theoretical inference given the various data and approaches carried out in this research.
The housing issue is not resolved in a governmental cycle. It needs a structural approach. The approaches have been mainly a short-run outlook and focused only on the most serious cases, which are those individuals who do not have a home. Households that, despite having a home, live in insufficient conditions do not see their situations being addressed. There is housing overcrowding, which refers to the proportion of the population living in housing with an insufficient number of rooms, taking into account the size and composition of a given household. On the other hand, the issue of housing costs is related to housing overcrowding. Overheads with housing expenses are one of the main housing shortages in Portugal. The country has a financial incapacity to keep the houses sufficiently warm in a relative value of about twenty percent of the population, which is relevant for a country with just over ten million inhabitants. This population group does not have the financial capacity to guarantee sufficient comfort for daily well-being. However, this fact has additional social costs for the population’s health status and quality of life, which is the target of any housing policy.

Author Contributions

Conceptualization, A.D.S. and H.C.; methodology, A.D.S.; software, H.C..; validation, A.D.S. and H.C.; formal analysis, A.D.S.; investigation, A.D.S.; resources, A.D.S.; data curation, A.D.S.; writing—original draft preparation, A.D.S.; writing—review and editing, A.D.S.; visualization, A.D.S.; supervision, A.D.S.; project administration, A.D.S.; funding acquisition, A.D.S. All authors have read and agreed to the published version of the manuscript.

Funding

This research was funded by Cooperativa de Ensino Universitário, C.R.L., Rua de Santa Marta, n° 56, 1150-297, Lisboa, Portugal.

Institutional Review Board Statement

Not applicable.

Informed Consent Statement

Not applicable.

Data Availability Statement

Some or all data and models that support the findings of this study were available from the corresponding author upon reasonable request.

Conflicts of Interest

The authors declare no conflict of interest.

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Figure 1. Variance accounted for dimension 1. Source: own elaboration.
Figure 1. Variance accounted for dimension 1. Source: own elaboration.
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Figure 2. Variance accounted for dimension 2. Source: own elaboration.
Figure 2. Variance accounted for dimension 2. Source: own elaboration.
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Figure 3. Correlations of the original variables. Source: own elaboration.
Figure 3. Correlations of the original variables. Source: own elaboration.
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Figure 4. Behavior of years in relation to the two dimensions. Source: own elaboration.
Figure 4. Behavior of years in relation to the two dimensions. Source: own elaboration.
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Figure 5. Biplot. Source: own elaboration.
Figure 5. Biplot. Source: own elaboration.
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Figure 6. Biplot. Source: own elaboration.
Figure 6. Biplot. Source: own elaboration.
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Table 1. Considered variables and their meanings.
Table 1. Considered variables and their meanings.
VariablesMeaning of VariablesClarifications and Fundamentals
Cust. Hab. Fam.Housing costs per familyThe tax surcharge model does not directly address the problem of housing cost, which is largely the product of zoning restrictions that limit the overall density of development. The effect of the model’s incentives, however, would be to expand the supply of housing and to lower its cost [25], p. 1661.
Est. Par. Hab.Housing stock estimatesThe literature studies who choose to own houses and how household tenure choice interacts with decisions such as savings decisions [26], p. 1779.
Ind. Pre. Res.Residential price indexA continuous house price index that can be updated every day helps policymakers improve their reactions. Besides that, high-frequency indexes may be used in derivative markets [27], p. 2.
Tx. Inf. Hab.Inflation rate with housingAccording to the Granger causality test results, there are causality relationships from changes in the consumer interest rate and exchange rate to housing inflation. However, there is no causality relationship between housing supply and housing inflation. According to the conditional frequency domain causality test results, there is causality for the permanent and mid-term from changes in the consumer interest rate to housing inflation and causality for the mid-term and temporary from changes in the exchange rate to housing inflation. Additionally, it was found that there are causality relationships between changes in the consumer interest rate and changes in the exchange rate [28].
Emp. Hab.Home loans to individualsA reverse mortgage allows older homeowners to take out an (extra) mortgage loan on their dwelling. The money that is generated by this loan is paid out in a lump sum or in monthly payments. The mortgage loan does not require loan repayments or interest payments. Rather, the interest that is due is added to the total amount of the loan, which implies that the loan increases over time [29], pp. 1348–1349.
Ren. Dis. Bru. Fam.Gross disposable income of householdsIf the propensity to save is stronger among wealthy households, a consumption-based recovery policy will be more effective if it targets low incomes. Other issues, such as tax measures aimed at encouraging saving (life insurance, Livret A savings accounts) or the relevant tax base (labor vs. consumption, income vs. wealth), depending on the trade-off between consumption and savings. Furthermore, the measurement of precautionary savings is crucial, especially to understand the implications of a rise in unemployment at the time of a shock such as the crisis of 2008 [30], p. 48.
Tx. Cre. PIB.GDP growth rateThe monthly data include business tendency surveys (ISM, SUPDEL, ORDERS), labor-market conditions (EMPLOY, CLAIMS), production (IP, HOURS) as well as consumption (RSALES) measures of the economy, housing (HS), and financial (SP500, TBILL, TBOND) markets. These indicators are characterized by their timing of release, i.e., whether their values for the previous month are released during the first or second week in the current month [31], p. 10.
Tx. Jur.Reference interest rate in the euro area (index)The reaction of consumer rates (e.g., the rate for loans for households other than for housing—usually for durable goods) is typically weaker because the individual risk premium is more dominant than the monetary policy shocks [32], p. 327.
Tx. Des.Unemployment rateTo test whether neighborhoods with relatively high levels of concentrated disadvantage are less resistant than neighborhoods with relatively low levels of concentrated disadvantage, the following measures were included in the model: (a) neighborhood crime rate; (b) percentage of residents who are minority; (c) median household income; (d) unemployment rate; (e) homeownership rate; (f) poverty rate; and (g) housing unaffordability rate [33], p. 842.
Ren. Cond.Conditional housing rentsBond-financed affordable housing delivery models, or, Housing Supply Bonds (HSB’s) have been the primary focus of much of the literature, with a number of successful international examples applied in the United Kingdom, Austria and Switzerland (i.e., the Co-operative Swiss housing bond model and the Australian ‘Housing Construction Convertible Bond’ model (Lawson et al., 2009 [34])). These models arguably offer better ‘value for money’ towards the issue [35], p. 21.
Ind. Ren. Res.Residential Rent IndexFirstly, the authors construct a country-specific time-varying private rental regulation index for 18 developed economies starting from 1973 to 2014. Secondly, they analyze the effects of their index on the housing rental markets across 18 countries and states. Thirdly, the authors’ index not only covers 18 developed economies over 42 years but also combines both tenure security and rent laws. Stringent rent control regimes do lead to lower real rent growth rates than regimes with free rents. Soft rent control regimes with time-limited tenure security and minimum duration periods, however, may cause higher rent growth rates than free rent regimes. Rent-free regimes do not show significant high real rent appreciation rates [36], p. 1.
Ind. Cus. Con. Hab.Housing construction cost IndexTaxes on dwellings include capital gains tax on investment properties, GST, stamp duty, land tax and council rates plus indirect taxes (such as insurance taxes, income taxes, fuel taxes, payroll taxes and import duties) on direct and intermediate inputs to dwelling construction as well as disguised taxes such as infrastructure charges, usage charges, permit and application fees, training and long service levies, document charges, zoning restrictions, planning delays and uncertainties, and exorbitant building code standards. [37], p. 29.
Source: Own elaboration.
Table 2. Model summary of the two dimensions.
Table 2. Model summary of the two dimensions.
DimensionCronbach’s AlphaVariance Accounted for
Total (Eigenvalue)% of Variance
10.9477.59463.283
20.6032.23618.631
Total0.980 a9.83081.914
a Total Cronbach’s Alpha is based on the total Eigenvalue. Own computation.
Table 3. Variance accounted for centroid and total coordinates.
Table 3. Variance accounted for centroid and total coordinates.
Centroid CoordinatesTotal (Vector Coordinates)
DimensionMeanDimensionTotal
1212
Cust_Hab_Fam0.9360.7070.8220.5510.3850.937
Est_Par_Hab1.0001.0001.0000.3560.5270.883
Ind_Pre_Res0.8680.5280.6980.8480.0030.851
Tx_Inf_Hab0.4090.8890.6490.3510.4260.777
Emp_Hab1.0001.0001.0000.8400.1430.983
Ren_Dis_Bru_Fam0.9400.2180.5790.8980.0090.907
Tx_Cre_PIB0.7530.2930.5230.6600.0470.707
Tx_Jur0.8160.8120.8140.2740.6050.878
Tx_Des0.9700.1320.5510.9680.0030.971
Ren_Cond0.4860.3660.4260.1890.0020.191
Ind_Ren_Res0.8300.8370.8340.8000.0360.837
Ind_Cus_Con_Hab0.8680.4460.6570.8590.0500.909
Active Total9.8777.2298.5537.5942.2369.830
% of Variance82.30460.24071.27263.28318.63181.914
Source: own elaboration.
Table 4. Bi-variables with the highest correlation weight.
Table 4. Bi-variables with the highest correlation weight.
CorrelationsValuesBi-Variables
1. Strongly Positive>0.7
  • Housing Cost/Unemployment Rate;
  • Housing Loan/Interest Rate.
2. Positive<0.5 and <0.7
  • Housing Cost per Family/Housing Park Estimate;
  • Housing Cost per Family/Unemployment Rate;
  • Residential Price Index/Housing Loan;
  • Residential Price Index/GDP Growth Rate;
  • Housing Inflation Rate/Interest Rate;
3. Strongly Negative>−0.7
  • Estimate of Housing Park/Housing Loans;
  • Estimate of Housing Park/Interest Rate;
  • Residential Price Index/Unemployment Rate;
  • Housing Loans/Unemployment Rate;
4. Negative<−0.5 and <−0.7
  • Housing Cost/Residential Price Index;
  • Housing Cost/Housing Loans;
  • Gross Disposable Income per Family/Interest Rate;
  • GDP Growth Rate/Unemployment Rate.
Source: own elaboration.
Table 5. Variable principal normalization for the two dimensions.
Table 5. Variable principal normalization for the two dimensions.
Object Scores
Case NumberDimension
12
10.277−2.134
2−0.878−1.390
3−1.286−0.283
4−1.1260.606
5−0.7350.728
6−0.2901.338
70.0720.709
80.8840.303
91.350−0.203
101.7320.326
Variable Principal Normalization. Source: own elaboration.
Table 6. Component loadings.
Table 6. Component loadings.
Dimension
12
Cust_Hab_Fam−0.7430.621
Est_Par_Hab0.5970.726
Ind_Pre_Res0.921−0.059
Tx_Inf_Hab−0.592−0.652
Emp_Hab0.916−0.378
Ren_Dis_Bru_Fam0.948−0.092
Tx_Cre_PIB0.8120.216
Tx_Jur−0.523−0.778
Tx_Des−0.9840.055
Ren_Cond−0.4350.050
Ind_Ren_Res0.895−0.191
Ind_Cus_Con_Hab0.927−0.223
Variable Principal Normalization. Source: own elaboration.
Table 7. CATPCA analysis.
Table 7. CATPCA analysis.
Dimension
12
Cust_Hab_Fam−0.7430.621
Est_Par_Hab0.5970.726
Ind_Pre_Res0.921−0.059
Tx_Inf_Hab−0.592−0.652
Emp_Hab0.916−0.378
Ren_Dis_Bru_Fam0.948−0.092
Tx_Cre_PIB0.8120.216
Tx_Jur−0.523−0.778
Tx_Des−0.9840.055
Ren_Cond−0.4350.050
Ind_Ren_Res0.895−0.191
Ind_Cus_Con_Hab0.927−0.223
Eigenvalue7.5942.236
% of Variance63.28318.631
Cronbach’s Alpha0.9470.603
Source: own elaboration.
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Santos, A.D.; Castro, H. Housing and Setting Constraints: The Portuguese Evidence. Sustainability 2022, 14, 11720. https://doi.org/10.3390/su141811720

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Santos AD, Castro H. Housing and Setting Constraints: The Portuguese Evidence. Sustainability. 2022; 14(18):11720. https://doi.org/10.3390/su141811720

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Santos, António Duarte, and Hélio Castro. 2022. "Housing and Setting Constraints: The Portuguese Evidence" Sustainability 14, no. 18: 11720. https://doi.org/10.3390/su141811720

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Santos, A. D., & Castro, H. (2022). Housing and Setting Constraints: The Portuguese Evidence. Sustainability, 14(18), 11720. https://doi.org/10.3390/su141811720

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