The present disclosure relates to data processing methods for derivation of a measure of market condition and using that measure in credit analyses.
Many stakeholders have an interest in the health of real estate markets. These stakeholders include individual property owners, mortgage lenders, mortgage servicers, ratings agencies, counties reliant upon property tax revenue tied to real estate property values, investors in asset classes such as residential mortgage-backed securities, building developers, and lawmakers who wish to understand the impact of housing-related policies on overall economic health.
Real estate property stakeholders have long tried to assess the value and riskiness of individual properties and pools of properties. For example, financial institutions use the estimated value of the real estate property as one of the key factors in approving loan applications secured by the property. The CoreLogic and Case-Shiller Home Price Indexes (HPI) are the two leading measures of U.S. residential real estate prices, tracking changes in the value of residential real estate both nationally and in a set of defined geographic markets. In particular, the indices measure changes in housing market prices given a constant level of quality. Additionally, Capozza, Hendershott, and Mack [2004] in “An Anatomy of Price Dynamics in Illiquid Markets: Analysis and Evidence from Local Housing Markets,” Real Estate Economics, Vol. 32, pp. 1-32, developed a two-stage error correction structural model for forecasting future house values.
Changes in the property value over time can expose the financial institutions to loan losses and subsequent adjustments to loss reserves and profitability. Stakeholders share a common need to understand the likely future movement of real estate property values so they can make optimal business decisions.
In one embodiment, a computer model for comparing an index with its long-term equilibrium value of home prices is generated by analyzing historical data, including macroeconomic data, and home price index data associated with real estate properties. The model is used to generate a measure of market condition. The measure of market condition may, for example, be used by a mortgage lender or servicer to establish credit criteria for accepting loan requests.
Neither this summary nor the following detailed description purports to define the invention. The invention is defined by the claims.
Specific, non-limiting embodiments will now be described with reference to the drawings. Nothing in this description is intended to imply that any particular feature, component or step is essential. The inventive subject matter is defined by the claims.
Asset evaluation is one of the important factors in many of the decisions made in real estate and credit markets. For instance, changes in real estate property values over time expose financial institutions to variability in their loan losses and subsequent adjustments to loss reserves and profitability. In particular, prices may not accurately reflect the fundamental value of an asset. For example, real estate assets (e.g., homes) may be located in overvalued or undervalued markets. Many credit decisions such as granting loans to purchase real estate properties depend on the price of the home. Accordingly, a process for modifying credit criteria is needed to determine a more accurate value of an asset in a particular market at a particular time of interest. The time of interest may be past, present or in the future.
This disclosure describes embodiments of systems and methods that can derive a measure of market conditions to estimate the value of a property in a particular market. Knowing the measure of market condition can help the stakeholders to consider current and long-term house price trends. Further, the stakeholders can determine the likelihood that housing prices in a local market will move in a certain direction and affect the expected return from holding a particular property or portfolio of properties.
In some embodiments, the measure of market condition is an indicator that represents a comparison of a long-run equilibrium index of the market with the observed or forecasted index of the market. The system includes a market condition predictor component 10 that can compare and derive the indicator of market condition. For example, in the housing market, the market condition predictor 10 can use the CoreLogic or Case-Shiller Home Price Indexes (HPI) or any other index or measure associated with home prices or house price trend for the comparison.
The market condition predictor 10 can obtain the HPI values for a particular market from the HPI data repository 16. The HPI values may be maintained and updated by vendors such as CoreLogic, Inc. in the HPI data repository 16. In some instances, the market condition predictor 10 can update HPI values to most recent data before using them to calculate the market condition indicator. As discussed above, the indicators can be a function of the comparison between an index at a particular time and the long-run equilibrium value. In the real estate home prices example, the predictor 10 can compare the HPI from a particular time or time period to the long-run equilibrium HPI value.
The system can include a long-run HPI estimator module 12 to determine the equilibrium HPI based, at least in part, on macroeconomic drivers. The equilibrium HPI may also be a function of historical trends in the macroeconomic drivers. The drivers can include economic indicators such as disposable income, the unemployment rate, etc. The exact relationship between HPI and the macroeconomic drivers may vary between different markets (e.g., different geographical regions). Accordingly, each market may have one or more models to calculate long-run equilibrium values for HPI based on the macroeconomic drivers. The long-run HPI estimator 12 can retrieve the macroeconomic data from macroeconomic indicators data repository 14. The repository 14 may be maintained by vendors such as IHS Global Insight. In some embodiments, the long-run HPI estimator 12 can retrieve the data directly from census data repositories. The market condition predictor 10 can then compare the long-run equilibrium HPI value with the HPI value from a particular time and market obtained from repository 16 and generate a measure or indication of the market condition (MCI), as described more in detail below. The predictor 10 can store the calculated measures or indicators in the MCI data repository 22.
The indicator or measure generated by the system can be used in various ways. A lender or mortgage servicer can use the indicator to modify credit parameters used in approving loans. For example, if the indicator shows that the market where the property is located is overvalued, the credit adjuster 20 can automatically increase the required FICO score for the borrower. In other embodiments, the credit adjuster may change the required down payment or the LTV (loan to value) threshold. Accordingly, creditors can make improved financial decisions based on the market condition indicators generated by the market condition predictor 10.
In some embodiments, the market condition indicator is generated in response to a request from a market condition requestor 18. The request can include parameters such as the location of the property or the market, the time frame of interest, and a threshold value. In some embodiments, the market condition predictor 10 can automatically identify a market area based on the location of the property. The market condition predictor 10 can use the threshold value in generating a market indicator. For example, in some embodiments, the market condition predictor 10 generates an indicator of overvalued or undervalued if the difference in comparison between HPI and the equilibrium HPI exceeds the threshold value (e.g., 10%); otherwise the indicator can correspond to neutral. In other embodiments, the thresholds values may be different, e.g., 5%, 15%, 20%, or any numeric value suitable for a particular application. Furthermore, in some embodiments, the credit criteria adjuster 20 and/or the market condition requestor 18 are components of lender systems (not shown). Accordingly, lender systems (e.g., financial institutions) can request a market condition indicator when needed. The threshold criteria can be a function of risk tolerance or other models of the lender.
The system shown in
Although not shown in
In block 202, the process identifies the market based on the geographic location of the property of interest. The geographic location of the property of interest can be received as an input from the market condition requestor 18 of
In block 204, the process can obtain data (e.g., macroeconomic data, HPI, etc.) associated with the selected market. For example, for a property located in Sacramento, Calif., the retrieved data may correspond to CBSA 40900. The macroeconomic data can include, for example, unemployment rate, housing starts, disposable income, population, personal consumption expenditure, new one-family homes sold, new one-family homes for sale, 30-year Freddie Conventional Mortgage Rate, rental vacancy rate, and residential construction index for this geography. The macroeconomic data can be retrieved by the long-run HPI estimator 12 from the macroeconomic indicators data repository 14 for the selected market for a particular time of interest. The long-run HPI estimator 12 can also retrieve HPI data at block 204 for the selected market for a particular time of interest. The HPI indices may be retrieved from the HPI data repository 16. As an example, in January of 2005, the following HPI and macroeconomic data was available for the 40900 CBSA market that includes properties located in Sacramento.
HPI=237.1
Unemployment rate=5.1%
Housing starts=17,740
Disposable Income=$65,635
Real Disposal Income per capita=40,878
In block 206, the process estimates the long-run equilibrium value (HPI*) for a market at a time of interest based, at least partly, on the retrieved macroeconomic data from the selected market. The equilibrium value can be calculated by the long-run HPI estimator 12 of
In block 208, the process generates a measure of market condition based at least on the estimated HPI*. In one embodiment, the market condition predictor 10 compares the HPI* with the HPI value to generate the measure of market condition. In the above example, the predictor 10 can compare the HPI* of 185.8 to HPI of 237.1 for January of 1995 for Sacramento. In this case, the equilibrium value is lower than the HPI of Sacramento in January of 1995. The estimator 10 can calculate the difference in percentage between HPI and HPI* as shown below:
The measure of the market condition can be the percentage difference calculated above, or can be another measure of this difference. In some embodiments, the process can further determine a market condition indicator at block 210 based on the above comparison between HPI and HPI*. For example, the market condition predictor 10 can use the difference between HPI and HPI* and compare it with a threshold value. As discussed above, the threshold value may be received from market condition requestor 18. The threshold value may also be predetermined and stored in the system of
An overvalued market indicates that the index (e.g., HPI) is higher than the long-term equilibrium value (HPI*), which means that prices will likely go down as macroeconomic drivers tend to drive the market towards equilibrium. In an undervalued market, the index is lower than the long-term equilibrium value, which may be an indication that prices are likely to go up. In some embodiments, using an indicator (e.g., “overvalued” or “undervalued”) may be easier for a user to readily identify the state of the market and where it is going. The market condition predictor 10 may also use other identifiers for the indicators. For example, instead of overvalued or undervalued, the predictor 10 may select “+” or “−” signs. The system may also show the indicators in different colors.
The process can also determine measure of market conditions in the future based on forecast data retrieved from the data repositories 14 and 16. The following example shows an example numerical calculation for a forecasted market condition indicator. The property is again located in Sacramento and accordingly the CBSA code is 40900. The time of interest is January, 2018 and the threshold value is 10%. Using the example market and the time of interest, the long-run HPI estimator 12 and the market condition predictor 10 can retrieve the following values from the repositories 14 and 16:
The long-run HPI estimator 12 can use the two stage error correction model to estimate the equilibrium index. For the example data above, the estimated equilibrium value, HPI* is 308.4. Subsequently, the market condition predictor 10 can calculate the measure of market condition as shown below:
The negative value of MCM indicates that the market may be undervalued. However, in this example, the threshold value is 10%. Since the absolute value of MCM is less than 10%, the market condition predictor can select the “neutral” identifier for the indicator.
In block 302, the process 300 selects a property of interest. For example, the selection of property might be based on an input from a user interface. In some embodiments, the input is received from third party systems (e.g., lender systems). In block 304, the process 300 may retrieve a measure of market condition or the market condition indicator for the selected property. As discussed above with respect to
In block 306, the process retrieves the credit data associated with the selected property of interest. For example, in the case where a borrower is seeking a loan for the property of interest, the associated data may include loan amount, value of property, FICO score of the borrower, down payment required, etc. The associated data may be stored in a credit data repository 24 as shown in
In block 308, the process adjusts the credit criteria based on the retrieved credit data and the measure of market condition or the market condition indicator. For example, the credit criteria adjuster 20 can receive an indication from the market condition predictor 10 that the property of interest is in an overvalued market. Accordingly, the credit criteria adjuster 20 can change some of the credit parameters (e.g., down payment required for a loan) to account for the overvalued market. The credit criteria adjuster 20 can also change the required LTV (loan to value) ratio and/or FICO scores as described more in detail below. In some embodiments, the credit data repository 24 and the credit criteria adjuster 20 are part of lender systems (not shown).
As discussed above, the measure of market condition can be used to adjust credit criteria. It should be noted that credit criteria is just one aspect of overall financial evaluation criteria. Any of the features described herein can also be implemented in other systems including investment systems, marketing systems, rental property systems, etc.
All of the processes and process steps described above (including those of
Thus, all of the methods and tasks described herein may be performed and fully automated by a programmed or specially configured computer system. The computer system may, in some cases, include multiple distinct computers or computing devices (e.g., physical servers, workstations, storage arrays, etc.) that communicate and interoperate over a network to perform the described functions. Each such computing device typically includes a processor (or multiple processors) that executes program instructions or modules stored in a memory or other computer-readable storage medium.
The foregoing description is intended to illustrate, and not limit, the inventive subject matter. The scope of protection is defined by the claims. In the following claims, any reference characters are provided for convenience of description only, and not to imply that the associated steps must be performed in a particular order.
The present application claims the benefit of U.S. Provisional Appl. No. 61/917,559, filed Dec. 18, 2013, the disclosure of which is hereby incorporated by reference.
Number | Date | Country | |
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61917559 | Dec 2013 | US |