The real estate market has recently been associated with the terms of financial stability and macroprudential policy. The roots of this combination can be found in the US mortgage crisis and the real estate market crisis in Spain, Hong Kong, or New Zealand. Although the situation in the Czech Republic does not fully correspond to the previous cases, the attractiveness of this topic has recently become apparent (by the public and experts).
The Czech National Bank has a variety of traditional instruments, which can correct what is happening in the markets related to the financial sector to fulfil its commitment to financial stability. One of them is open market operations resulting in changes in interest rates, which will be reflected in the whole economy using the monetary transmission mechanism. Also, there has been a recent effort by the central bank to correct mortgage lenders through various recommendations or regulations regarding optimum ratio settings, such as the Loan-to-Value ratio (LTV). The LTV indicator expresses the ratio between the loan granted and the value of the mortgaged property. However, LTV is also a tool that can cause frictions in the financial markets and thus significantly affect the monetary transmission mechanism. It is in the context of this mechanism that targeted LTV settings can become a useful central bank tool to reduce systemic risks. Systemic risks include: (i) prevent excessive accumulation of risks due to external influences and market failures and thus help smooth the financial cycle over time (time effect); (ii) ensure greater resilience of the financial sector and reduce the effect of contagion among banking entities (cross-cutting effect); (iii) promote a systemic approach to financial regulation in order to create an appropriate set of incentives for market participants (structural effect). This should be part of the macro-prudential strategy as defined by the European Central Bank (ECB, 2019).
This work aims to quantify the regulatory impact of LTV settings on the monetary transmission mechanism in the Czech Republic. Dynamic stochastic general equilibrium (DSGE) model will be used to achieve this goal. The DSGE model will include, in addition to the standard parts typical of this type of model, a mechanism through which part of the household sector satisfies its consumption through real estate collateral. Based on the identified model on Czech data, we simulate the effects of alternative LTV settings on crucial macroeconomic variables and macroeconomic stability.
The basic idea of DSGE modelling of credit constraints in the housing market was recorded by Iacoviello (2005). Iacoviello (2005) created and estimated on the US data a small DSGE model of a closed economy with credit and collateral constraints linked to property value. Following the work of Kiotak and Moore (1997), Iacoviello divided the household sector into patient households (without credit constraints) and impatient households (with credit constraints).
Other authors followed the concept of the DSGE model with the credit constraint mechanism as established by Iacoviello (2005). The models of closed economies include mainly the models: Bracons and Rabanal (2010), Iacoviello and Neri (2010), Kannan, Rabanal and Scott (2012), Guerrieri and Iacoviello (2017), Tonner and Brůha (2014) and Hloušek (2016). Open economy models include Christensen, Corrigan, Mendicino and Nishiyama (2016), Robinson and Robson (2012), Funke and Paetz (2012), or Funke, Kirkby and Mihaylovski (2018). Not all these works are typically associated with discussing the impact of monetary shocks when choosing an alternative LTV setting. However, they can provide a useful framework for critical evaluation of the results of this modelling approach, as they provide a relatively comprehensive view of the development and modification of the Iacoviello DSGE model (2005) over time.
DSGE models based on the work of Iacoviello (2005) typically focus on the impact of the rise in property prices and the subsequent shocks associated with this increase that the modelled economy faces. The most frequently mentioned effects of wealth resulting from the rise in property prices (as one of the sources of wealth of households) with the consequent increase in consumption. Typical works describing this effect are Iacoviello (2005), Bracons and Rabanal (2010), Christensen, Corrigan, Mendicino and Nishiyama (2016), or Robinson and Robson (2012).
Among the works focusing on the modelling of the wealth effect in the Czech economy, we can mention the works of Hloušek (2016) and Tonner and Brůha (2014). Interestingly, these works attribute a relatively negligible impact on the rest of the modelled economy. Tonner and Brůha (2014) even find that the effect of wealth on the business cycle of the Czech economy is weak, and therefore, even the monetary policy implications of property price fluctuations are not significant. On the other hand, these authors show that the DSGE model with implemented housing sector generally achieves better predictive capabilities. It is characteristic of the above work that the reader offers a very in-depth discussion of the impact of restrictive monetary policy in the environment of the models identified on the data of the examined economy. Most papers conceive this topic through comparison with benchmark impulse responses based on parameterization obtained from estimates of the estimated model. A more exciting approach was taken by Guerrieri and Iacoviello (2017), who were the first (in the model type Iacoviello (2005)) to discuss the use of non-linear simulations of the impact of credit constraints from the estimated model. The results were simulations that made it possible to observe the various impacts of shocks depending on whether it was a rise or fall in property prices.
Kannan, Rabanal and Scott (2012) have been investigating the use of LTV on the monetary transmission mechanism to address the use of alternative monetary rules in the credit constraint regime. Iacoviello and Neri (2010) started on the US economic data to discuss LTV’s impact on the monetary transmission mechanism. They were later followed by Walentine (2014) and Hloušek (2016). Walentine (2014) and Hloušek (2016) using the core model of Iacoviello and Neri (2010) measured the impact of LTV size on the macroeconomic variables of the Swedish and Czech economies by simulating monetary shocks. Methodologically, the procedure of Iacoviello and Neri (2010), Walentine (2014) and Hloušek (2016) will be used in this paper as well.
Current literature focuses on the discussion of macroprudential policy. Mendicino and Punzi (2014) use counter-cyclical LTVs as an example of how monetary policy can react and smooth household consumption through business cycles. Funke, Kirkby and Mihaylovski (2018) show that lowering the LTV level allows lower real estate price growth during periods of boom.
In our work is followed the model Iacoviello (2005), which belongs to the group of smaller DSGE models. Due to the range of complexity of the description of the whole model, only selected equations that are essential for understanding the key parameters and represent significant modifications compared to standard DSGE models will be presented. For a more detailed description of the model, see Iacoviello (2005). The model consists of four sectors: infinitely long-lived households and entrepreneurs, retailers, and the central bank (see Figure 1). Households are divided into two types: patient and impatient. Patient households offer work and capital, accumulate real estate, and demand final goods (consume). Also, they provide funding to businesses and impatient households. Impatient households also offer work, accumulate real estate and demand final goods (consume), but are credit constrained. Entrepreneurs demand labour and capital and combine it with real estate, which they can pledge and obtain credit to produce homogeneous intermediate goods. Credit constraints also limit entrepreneurs and the amount of their loans depends on the value of the real estate, as in impatient households. Retailers buy homogeneous intermediate goods, which they then sell at a surcharge as a competitive monopoly market. Retailers are price-makers and thus a source of nominal rigidities. These rigidities are captured at the aggregate level in the form of a Novokeynesian Phillips curve. The central bank sets the interest rate according to the Taylor rule with the smoothing of the interest rate and weighted only by the amount of inflation.
Model structure
The household sector consists of patient (indexed
The expression
The second agent in the model are entrepreneurs producing intermediate goods using technology represented by a production function with three inputs: labour, capital and real estate.
In this equation, variable
Retailers in the model provide rigid prices. Thanks to price rigidity, it is possible to define a forward-looking Phillips curve that expresses the positive dependence of inflation on expected inflation and a mark-up to marginal costs. The behaviour of the central bank is described by the Taylor rule, which has the following expression in a non-linear form
The Iacoviello Model (2005) has a unique stationary balance in which impatient households and entrepreneurs are limited by credit and are taking a credit up to their limit. The balance is understood as the allocation of values that meet the model equations under the conditions of cleaning the labour market, (
Regarding the parameter setting, we can divide all model parameters into two groups. In one group, the parameters are calibrated; the second group consists of the parameters estimated by applying the Bayesian estimation techniques. The calibrated parameters are summarized in Table 1.
Overview of calibrated parameters
Discount factor: patient households | 0.99 | |
Discount factor: Impatient households | 0.95 | |
Discount factor: firms | 0.98 | |
Labour supply aversion | 1.01 | |
Housing weight | 0.1 | |
Capital output ratio | 0.3 | |
Elasticity of output to real estate | 0.05 | |
Depreciation rate of physical capital | 0.05 | |
Retail markup | 1.1 |
Calibrated values of parameters are based on the original article by Iacoviello (2005) and also on Hloušek (2012) and Reichel (2015). Values chosen for the standard deep structural parameters (
The second group of parameters is estimated using Bayesian econometric techniques. The Bayesian framework combines maximum likelihood estimation with prior information about parameters, and thus allows us to obtain the posterior probability distribution of the parameters. The model is estimated using quarterly data for the Czech economy; the time series used are described in Table 2. Namely, we use quarterly data for real gross domestic product, consumption in real terms, investment,
Data
Real gross domestic product | CZSO | log, | |
Real consumption | CZSO | log, | |
Investment | CZSO | log, | |
Consumer Price Index | CZSO | ||
Offer prices of apartments adjusted for inflation | CZSO | ||
3M PRIBOR | CNB |
In the first estimation step, parameters for prior densities were chosen. Similarly to calibrated parameters, prior information is set following Iacoviello (2005) and Hloušek (2012), with minor revisions based on the more recent contributions, namely Tonner and Brůha (2014), Hloušek (2016) and Guerrieri and Iacoviello (2017). Values for prior density parameters are summarized in Table 3.
Prior distribution
Production | ||||
Proportion of patient households | Beta | 0.60 | 0.10 | |
Investment adjustment costs | Normal | 2.00 | 0.50 | |
LTV ratios | ||||
LTV firms | Beta | 0.80 | 0.10 | |
LTV impatient households | Beta | 0.80 | 0.10 | |
Calvo parameter | ||||
Price rigidity | Beta | 0.75 | 0.10 | |
Monetary rule | ||||
Inflation weight in monetary rule | Normal | 0.60 | 0.10 | |
Interest rate weight in monetary rule | Normal | 0.80 | 0.10 | |
Persistence of shocks | ||||
Cost-push shock persistence | Beta | 0.70 | 0.10 | |
Housing preference shock persistence | Beta | 0.70 | 0.10 | |
Technology shock persistence | Beta | 0.70 | 0.10 | |
Investment shock persistence | Beta | 0.70 | 0.10 | |
Volatility of shocks | ||||
Monetary shock | Inv. gamma | 0.10 | inf | |
Cost-push shock | Inv. gamma | 0.10 | inf | |
Housing preference shock | Inv. gamma | 0.10 | inf | |
Technology shock | Inv. gamma | 0.10 | inf | |
Investment shock | Inv. gamma | 0.10 | inf | |
Shock depicting other effects in the economy | Inv. gamma | 0.001 | inf |
The proportion of the patient households on total population is a priori set to value
We obtain posterior densities of the model parameters using a Metropolis-Hastings algorithm with 1 000 000 samples, using two chains with 500 000 replications for each. In order to ensure convergence of the system, first 40% of all samples are discarded. As a diagnostic measure to evaluate the overall convergence, the multivariate convergence diagnostic by Brooks and Gelman (1998) is used. Results from the posterior estimation for each of the before mentioned data samples can be found in Table 4. For some parameters, the posterior value does not diverge from its prior information. On the other hand, for some parameters, we can find apparent structural change given the substantial difference between posterior characteristics for each of the two data samples.
Posterior distribution
0.3268 | 0.2156 | 0.4327 | 0.4848 | 0.3559 | 0.6160 | |
0.4471 | 0.3143 | 0.5821 | 0.8035 | 0.7252 | 0.8829 | |
0.7320 | 0.6283 | 0.8368 | 0.5931 | 0.4299 | 0.7597 | |
0.7495 | 0.5922 | 0.9119 | 0.7485 | 0.5937 | 0.9147 | |
0.1067 | 0.0454 | 0.1643 | 0.3191 | 0.2174 | 0.4164 | |
Monetary rule | ||||||
0.5500 | 0.3798 | 0.7190 | 0.6047 | 0.4418 | 0.7643 | |
0.9355 | 0.9214 | 0.9502 | 0.9203 | 0.8985 | 0.9427 | |
Persistence of shocks | ||||||
0.9547 | 0.9306 | 0.9793 | 0.7527 | 0.6435 | 0.8628 | |
0.9028 | 0.8651 | 0.9410 | 0.9354 | 0.8917 | 0.9792 | |
0.7565 | 0.6740 | 0.8412 | 0.7396 | 0.6282 | 0.8551 | |
0.6463 | 0.5604 | 0.7301 | 0.6043 | 0.5155 | 0.6918 | |
Volatility of shocks | ||||||
0.0017 | 0.0014 | 0.0020 | 0.0020 | 0.0015 | 0.0024 | |
0.0141 | 0.0100 | 0.0181 | 0.0057 | 0.0039 | 0.0076 | |
0.3348 | 0.2169 | 0.4521 | 0.2166 | 0.0875 | 0.3402 | |
0.0167 | 0.0137 | 0.0195 | 0.0080 | 0.0045 | 0.0113 | |
0.0380 | 0.0327 | 0.0431 | 0.0392 | 0.0321 | 0.0463 | |
0.0010 | 0.0002 | 0.0019 | 0.0225 | 0.0137 | 0.0310 |
The proportion of patient representative households is a priori assumed to be
Parameter
The posterior estimate of the parameter
The parameters characterizing the monetary rule are estimated with standard values and correspond to empirical studies estimated at the Czech economy, see e.g., Hloušek (2012). Concerning the exogenous shocks, they all show a relatively strong persistence and the model’s ability to identify this persistence, along with their volatility, very well. The highest persistence in both periods is shown by shock
Given the historical development of the housing market in the Czech Republic and complying with the original article, the results for the shorter data sample are preferably better describing the Czech housing market. The point estimates from this period serve as a benchmark for subsequent simulations of alternative LTV scenarios.
At this point, we will focus on analyzing the model dynamics through the lens of impulse response functions to monetary shock. We will discuss alternative settings of the LTV and the response of main model variables to the monetary shock. Discussing the alternative settings of the LTV allow us to understand how to set the optimal LTV concerning the business cycle phase and corresponding monetary policy. In the first step, we simulate three alternative scenarios that help us to analyze model dynamics. In this case, the change in LTV will consider the impatient households only. In the second step, we adjust the scenarios to consider the model responses to changes of LTV for both the impatient households and firms. In the third step, we evaluate the effects of all possible LTV settings through the maximum deviations of variable trajectories from their steady-state values.
Figure 2 shows the response of modelled variables to monetary shock. We are focusing on the effect of monetary restriction, i.e. the effect of nominal interest rate change by one standard deviation. The
Impulse-response of monetary shocks based on alternative LTV settings for households
In the case where impatient households do not have access to credits (“No collateral” scenario), the response to monetary restriction is very similar to the previous scenarios. However, the decline in the consumption of impatient households is relatively modest.
Figure 3 depicts the responses modelled variables to monetary shock in case of LTV changes for both the households and firms. The “Benchmark” denotes the setting that corresponds to the mean parameter values based on the estimated models. The scenario “No collateral” reflects the low values of LTV values for firms and impatient households (
Impulse-response of monetary shocks based on alternative LTV settings for households and firms
The responses of the benchmark scenarios are like those presented in Figure 2. We will thus focus on alternative scenarios. Monetary restriction in both scenarios makes the future consumption cheaper. Economic agents should, therefore, respond in a way that reduces the loan amount. This reduction affects individual levels of consumption. The “No collateral” scenario shows negligible deviations in almost all variables. The reason for such weak responses lies in strong constraints at the credit market that do not allow impatient households and firms to smooth their consumption over time. The impact of the monetary shock in this credit-constrained economy is thus minimal. The initial responses of consumption and output lead to decreases by 1.1% and 2% respectively.
On the other hand, the “High collateral” scenario simulates an economy with very weak or almost non-existent credit market constraints. The responses of the economic agent to the monetary policy shocks are thus stronger. Impatient households perceive the positive effects of future consumption and therefore immediately reduce the credit amount and consumption (Figure 3 shows a 25% decrease in consumption). The reduction in consumption of impatient households is also induced by the Fischer debt-deflation effect caused by the fall in inflation. Patient households that have so far funded the loans to the impatient households find out the reduced demand for credits. As a result, their consumption rises. These opposite effects result in an 8% reduction in overall consumption and a 16% decrease in output relative to their steady-state values.
Figure 4 shows the maximum deviations in impulse responses functions of model variables to monetary shock at different settings of LTV of impatient households. On the
Amplitudes’ sensitivity of the impulse response of monetary shocks based on alternative LTV settings for inpatient households
Figure 5 shows the maximum deviations in impulse responses functions of model variables to monetary shock at different settings of LTV of impatient households and firms. The difference from Figure 4 lies in releasing of the parameter
Amplitudes’ sensitivity of the impulse response of monetary shocks based on alternative LTV settings for inpatient households and firms
The outcomes of this analysis are following the findings provided by Walentin (2014) and Hloušek (2016). The restrictive monetary policy is effective in reducing inflation at higher levels of LTV. However, this higher efficiency is accompanied by higher economic and welfare costs lying in a considerably sharper drop in real economic performance expressed by the fall in output and consumption.
The paper aimed to estimate the DSGE model with the housing sector and to simulate the impacts of restrictive monetary policy based on alternative scenarios of LTV settings. We used the model proposed by Iacoviello (2005). It contains restrictions on the credit market and allows us to simulate the impacts of monetary policy. Using the data for the Czech Republic, we have estimated the model for the full and shorter period. Using a full data set led to bias in parameter estimates. These findings correspond to the economic situation of housing sector of the Czech Republic, where the full market structure corresponding to the model equations in the model of Iacoviello (2005) can only be considered since 2006. Our simulations of alternative LTV setting for households and firms have been carried out by using the mean values of the estimated parameter on the shorter period. The effects of monetary policy shock were found to be non-linear, depending on the size of the LTV.
This finding has two important implications for monetary policy. Firstly, the LTV seems to be a promising tool of the unconventional and macroprudential monetary policy limited by the environment of almost zero or negative interest rates. Secondly, the restrictive monetary policy is more efficient in reducing inflation at the higher levels of the LTV than at the lower levels. It means that this policy can soften inflation pressures and secure the banking sector by imposing restrictions on the mortgage loan market. This policy is implemented as recommendations of the Czech National Bank to the Czech banking sector since 2015 (see CNB, 2019) to reduce systemic risks in the financial sector. This kind of risk may be a result of relaxed credit standards by mortgage banks, growth property prices, and fast expansion in the value of loans secured by residential property in an expansionary phase of the financial cycle. However, as our results prove, the efficiency of the policy based on the LTV is accompanied by costs of a sharper decline in economic performance and welfare in comparison with the conventional tools based on interest rate transmission mechanism.