Modelling and forecasting mortgage delinquency and foreclosure in the UK

In the absence of micro-data in the public domain, new aggregate models for the UK's mortgage repossessions and arrears are estimated using quarterly data over 1983-2014, motivated by a conceptual double trigger frame framework for foreclosures and payment delinquencies. An innovation to improv...

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Main Authors: Aron, J, Muellbauer, J
Format: Working paper
Published: University of Oxford 2016
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author Aron, J
Muellbauer, J
author_facet Aron, J
Muellbauer, J
author_sort Aron, J
collection OXFORD
description In the absence of micro-data in the public domain, new aggregate models for the UK's mortgage repossessions and arrears are estimated using quarterly data over 1983-2014, motivated by a conceptual double trigger frame framework for foreclosures and payment delinquencies. An innovation to improve on the flawed but widespread use of loan-to-value measures, is to estimate difficult-to-observe variations in loan quality and access to refinancing, and shifts in lenders' forbearance policy, by common latent variables in a system of equations for arrears and repossessions. We introduce, for the first time in the literature, a theory-justified estimate of the proportion of mortgages in negative equity as a key driver of aggregate repossessions and arrears. This is based on an average debt-equity ratio, corrected for regional deviations, and uses a functional form for the distribution of the debt-equity ratio checked on Irish micro-data from the Bank of Ireland, and Bank of England snapshots of negative equity. We systematically address serious measurement bias in the 'months-in-arrears' measures, neglected in previous UK studies. Highly significant effects on aggregate rates of repossessions and arrears are found for the aggregate debt-service ratio, the proportion of mortgages in negative equity and the unemployment rate. Economic forecast scenarios to 2020 highlight risks faced by the UK and its mortgage lenders, illustrating the usefulness of the approach for bank stress-testing. For macroeconomics, our model traces an important part of the financial accelerator: the feedback from the housing market to bad loans and hence banks' ability to extend credit.
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spelling oxford-uuid:f27f6e1c-3a1b-4501-b59d-cdb14d9e1b532022-03-27T12:04:15ZModelling and forecasting mortgage delinquency and foreclosure in the UKWorking paperhttp://purl.org/coar/resource_type/c_8042uuid:f27f6e1c-3a1b-4501-b59d-cdb14d9e1b53Symplectic ElementsBulk import via SwordUniversity of Oxford2016Aron, JMuellbauer, JIn the absence of micro-data in the public domain, new aggregate models for the UK's mortgage repossessions and arrears are estimated using quarterly data over 1983-2014, motivated by a conceptual double trigger frame framework for foreclosures and payment delinquencies. An innovation to improve on the flawed but widespread use of loan-to-value measures, is to estimate difficult-to-observe variations in loan quality and access to refinancing, and shifts in lenders' forbearance policy, by common latent variables in a system of equations for arrears and repossessions. We introduce, for the first time in the literature, a theory-justified estimate of the proportion of mortgages in negative equity as a key driver of aggregate repossessions and arrears. This is based on an average debt-equity ratio, corrected for regional deviations, and uses a functional form for the distribution of the debt-equity ratio checked on Irish micro-data from the Bank of Ireland, and Bank of England snapshots of negative equity. We systematically address serious measurement bias in the 'months-in-arrears' measures, neglected in previous UK studies. Highly significant effects on aggregate rates of repossessions and arrears are found for the aggregate debt-service ratio, the proportion of mortgages in negative equity and the unemployment rate. Economic forecast scenarios to 2020 highlight risks faced by the UK and its mortgage lenders, illustrating the usefulness of the approach for bank stress-testing. For macroeconomics, our model traces an important part of the financial accelerator: the feedback from the housing market to bad loans and hence banks' ability to extend credit.
spellingShingle Aron, J
Muellbauer, J
Modelling and forecasting mortgage delinquency and foreclosure in the UK
title Modelling and forecasting mortgage delinquency and foreclosure in the UK
title_full Modelling and forecasting mortgage delinquency and foreclosure in the UK
title_fullStr Modelling and forecasting mortgage delinquency and foreclosure in the UK
title_full_unstemmed Modelling and forecasting mortgage delinquency and foreclosure in the UK
title_short Modelling and forecasting mortgage delinquency and foreclosure in the UK
title_sort modelling and forecasting mortgage delinquency and foreclosure in the uk
work_keys_str_mv AT aronj modellingandforecastingmortgagedelinquencyandforeclosureintheuk
AT muellbauerj modellingandforecastingmortgagedelinquencyandforeclosureintheuk