UK SME Unsecured Loan Arrears Estimator
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UK SME Unsecured Loan Arrears Estimator

A public-data anchored scenario tool for unsecured SME portfolios, built from HMT, BoE, Experian, OECD and Insolvency Service data.

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Important: This tool is an illustrative scenario aid only. It is not investment, lending or accounting advice and is not designed for regulatory capital or IFRS 9 provisioning decisions.

UK Company Insolvency Rate (SME Proxy)

Current vs 2008-09 Peak
--
of 2008-09 peak
company insolvency rate
Insolvency Service series (originally per 10,000 companies), rescaled as % of companies
What this shows: The chart plots the official UK company insolvency rate (insolvencies per 10,000 companies, Insolvency Service) and shows today's rate as a percentage of the 2008-09 crisis peak. Because ~99% of UK businesses are SMEs, this serves as a high-level proxy for SME insolvency stress.
Using the Calculator: Default values are anchored on UK public data (Government schemes, BoE, UK Finance, bank disclosures) with clearly documented judgement where data are missing. You can adjust any parameter if you have specific portfolio intelligence.

Portfolio & Scenario

Applies to segments created from these sliders. Use "Add Segment" for mixed portfolios.
0%
50%
100%
Default: RLS for conservative forward-looking estimates. Use "Blended" for historic BBLS-heavy portfolios.
Baseline
Mild
Severe
Custom
Baseline: GDP +1.5%, Unemployment 4.5%, Multiplier 1.0x
Calibrated to BoE FSR stress test scenarios (see Data tab for methodology)
1.5%
3.0%
7.0%
Default 3.0% = central estimate for non-scheme unsecured SME. Sector/size multipliers applied on top. Range: 1.5% (benign) to 7.0% (stressed). Triangulated from UK Finance, BBB, and bank disclosures.
80%
100%
120%
Default 100% (no adjustment). Scenarios set base rate (baseline 25%, mild 35%, severe 50%). Slider multiplies that base.
50%
75%
95%
Implied recovery rate: 25%
Default 75% (25% recovery) from Basel III unsecured SME/corporate practice and bank disclosures. Adjust if you have vintage-specific data.

Portfolio Segments

Define portfolio segments by sector for more accurate estimates. Each sector has different risk characteristics based on UK insolvency data.

Sector Exposure (£m) Size Guarantee Product
You can define up to 10 segments (construction, hospitality, etc.) for more granularity.

Results

Exposure
£10.00m
100%
Arrears
-
-
Defaults
-
-
Borrower Loss
-
-
ℹ Borrower loss shown above; bank net loss (after government guarantees) in table and charts below.

Segment Breakdown

Scroll for more columns ↔
Segment Exposure Arr. Rate % Conv. Factor % PD % Arrears Defaults LGD % Borrower Loss Bank Net Loss
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Total Portfolio - - - - - - - - -

Trade Credit Impact (Optional)

Maps loan default rates to trade receivables bad-debt using sector insolvency patterns. For trade credit underwriters: estimate customer payment default risk.

Mode A: for customers who are SME borrowers. Mode B: for customers with no bank loans.
* Mode A annualises scheme default rates over a ~5.5-year vintage for comparability.
Your receivables exposure
Sector-specific insolvency rate
Default 65% (post-recovery)

Scenario Comparison

Sensitivity Analysis

Shows how total portfolio arrears vary with the underlying Non-Scheme Arrears Rate assumption.

Advanced Mode: Adjust any underlying assumption. Changes affect all calculations.

Government Scheme Rates

Default: 4.40% (Gov.UK Sep 2025)
Default: 1.15% (Gov.UK Sep 2025)
Default: 2.57% (BBB Jun 2025)
Default: 3.07% (value-weighted blend)

Scenario Multipliers

Default: 1.0x (by definition)
Default: 1.6x (judgement)
Default: 2.3x (BoE FSR aligned)
JUDGEMENTAL Schemes already embed COVID stress. Dampening = 0.5 means schemes receive 50% of additional macro stress (e.g., 2.3x → 1.65x for schemes).

Custom Scenario Builder

Calibrated: α=0.10 so BoE severe (ΔU +4pp) → contributes 0.4 to multiplier
Calibrated: β=0.30 so BoE severe (ΔGDP -3pp) → contributes 0.9 to multiplier
Formula: Multiplier = 1 + (U_coef × ΔU) − (GDP_coef × ΔGDP)
(ΔU in percentage points, ΔGDP in percentage points vs baseline)

Sector Risk Multipliers JUDGEMENTAL

Adjust base arrears rate multipliers for each sector. Values >1.0 increase risk, <1.0 decrease risk.
Source: UK Insolvency Service industry tables + Experian sector arrears patterns

Default: 1.50x (high risk)
Default: 1.40x (high risk)
Default: 1.30x (elevated)
Default: 1.30x (elevated)
Default: 1.00x (neutral)
Default: 1.00x (neutral)
Default: 0.90x (lower risk)
Default: 0.85x (lower risk)
Default: 0.80x (low risk)

Actual BBLS Performance Over Time

Data Source: British Business Bank quarterly reports (Sep 2021 - Sep 2025). Shows actual BBLS arrears and cumulative defaults over time. This is the empirical anchor for scheme arrears calibration.

Data Provenance & Parameter Classification

Parameter Type Source Last Updated
Overall SME arrears (1.9%) MEASURED Experian Rising Cost report 2024 Q4
Size multipliers (micro: 1.1, small: 1.0, medium: 0.9) CALIBRATED Experian micro-business arrears 1.8%→2.1% 2024 Q4
Sector multipliers (construction: 1.4, hospitality: 1.5, retail: 1.3) CALIBRATED UK Insolvency Service + Allianz + Experian 2024-12-08
Product multipliers (loan: 1.0, overdraft: 1.15, card: 1.30) JUDGEMENTAL Consistent with unsecured > secured hierarchy 2024-12-08
COVID scheme arrears/defaults MEASURED HMT/BBB Sep 2025 repayment data 2025-09-30
RLS arrears/defaults MEASURED BBB RLS performance Jun 2025 2025-06-30
Default conversion non-scheme (25%/35%/50%) CALIBRATED Anchored on scheme data (16-67%), scenario-dependent 2024-12-08
LGD unsecured (75%, range 50-95%) CALIBRATED Basel III / EBA / Bank disclosures 2024-12-08
Macro coefficients (α=0.10, β=0.30) CALIBRATED Fitted to BoE FSR scenarios (2.3x severe, 1.6x mild) 2024-12-08
Scheme macro dampening (50%) JUDGEMENTAL Schemes embed COVID stress; additional macro stress damped by 50% 2024-12-08

Legend: MEASURED = directly from public data | CALIBRATED = derived from data with transparent assumptions | JUDGEMENTAL = professional judgement

Calculation Chain

1. BASE ARREARS
→ If scheme: use arrears_rate[scheme] from HMT/BBB data
→ If non-scheme: a₀ (1.9%) × M_size × M_product × M_sector
2. MACRO STRESS
→ Scenario multiplier: m = 1 + (0.10 × ΔU) − (0.30 × ΔGDP)
→ Stressed arrears: a_stressed = a_base × m
3. DEFAULTS
→ If scheme: use default_from_arrears[scheme] (16-67%)
→ If non-scheme: conv_base(25/35/50%) × M_size_def × M_sector_def
→ Defaults: D = Arrears × conversion_rate
4. LOSSES
→ Borrower loss: D × LGD_borrower (75%)
→ Bank net loss: D × LGD_borrower × (1 - guarantee%)

Sensitivity Matrix

Parameter Sensitivity Rationale
Macro scenario multiplier HIGH Affects all arrears linearly; severe 2.3x vs baseline 1.0x = 130% swing
Default conversion rate HIGH Baseline 25% vs severe 50% = 100% swing in defaults from same arrears
Sector multipliers MEDIUM Hospitality 1.5x vs professional services 0.8x = material but portfolio-dependent
Size multipliers MEDIUM Micro 1.1x vs medium 0.9x = 22% range, significant for micro-heavy books
Base arrears rate (1.9%) LOW Well-anchored on Experian data; updates quarterly but moves slowly
LGD (75%) MEDIUM Range 50-95%; matters for loss quantum but not default rate

Data-Derived Parameters

Parameter Value Source By Value/Volume
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Judgemental Parameters

Parameter Default Range Basis Sensitivity
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Validation & Quality Assurance

Real-time validation of inputs and outputs against sanity bounds and plausibility checks.

Model Limitations

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Primary Data Sources

[1] HM Treasury & British Business Bank. COVID-19 Loan Guarantee Schemes Repayment Data.
Gov.UK Statistics Collection ↗

[2] British Business Bank. Recovery Loan Scheme & Growth Guarantee Scheme Performance.
BBB Research & Publications Hub ↗

[3] Bank of England. Financial Stability Report - Macro scenario calibration.
BoE Financial Stability Reports ↗

[4] UK Insolvency Service. Company Insolvency Statistics - Industry Tables.
Insolvency Service Statistics ↗

[5] Experian. UK SME Affordability Report 2024.
Experian SME Affordability Insights ↗

[6] Allianz Trade. Global Insolvency Report 2024.
Allianz Insolvency Report 2024 ↗

What This Tool Is For

A structured way to turn the public record into a usable arrears and loss picture

This estimator exists for one very specific situation. You are looking at a UK SME book and you want a defensible sense of where unsecured loan arrears and losses probably sit in the current environment, and how those numbers move under different macro and sector mixes.

You do not have a paid data feed or a full internal model. You do have a working brain and a healthy suspicion of numbers that appear without a source.

The estimator takes the main public signals we have about UK SME credit conditions and structures them into something you can actually use: an estimate of arrears, defaults and losses that lines up with the regime the UK is in, and that can be stressed in a controlled way.

It is not a live arrears dashboard. It is a structured way to turn the public record into a usable arrears and loss picture.

The Data That Underpins It

Everything in the tool comes from sources you can point at.

We start with the government loan schemes. HM Treasury and the British Business Bank publish detailed repayment data for BBLS, CBILS and CLBILS, and for the later Recovery Loan Scheme. These tables tell you, by scheme, how much was drawn, how much is in arrears, how much has defaulted and how that has evolved over time. The estimator uses these numbers directly for the "scheme" portion of any portfolio. They give you real arrears rates and real default-from-arrears ratios on tens of billions of SME lending.

Next we bring in the UK company insolvency series. The Insolvency Service publishes annual and quarterly numbers for company insolvencies, including breakdowns by industry. Those tables show which sectors consistently fail more often than others. Construction, hospitality and retail feature heavily at the top, while professional services, health and utilities are further down. From this we derive sector multipliers. High-insolvency sectors carry higher multipliers. Sectors with lower insolvency rates carry lower ones. This makes the model sensitive to sector mix rather than treating a restaurant and a firm of auditors as the same risk.

The Bank of England Financial Stability Report and stress testing material provide the macro frame. The FSR gives the baseline view for GDP and unemployment and defines what "mild" and "severe" scenarios look like in terms of macro shock and system-wide credit losses. The estimator calibrates its macro multipliers so that a severe scenario means roughly "BoE-style severe" and a mild one sits partway between baseline and that point.

We then add international SME NPL benchmarks from sources such as the OECD SME Scoreboard and public bank disclosures, and cross-check against UK SME arrears work from credit bureaux such as Experian. These show where SME non-performing loans and arrears sit as a percentage of SME lending in normal conditions and in stress across advanced economies.

Finally, we look at structural SME behaviour by size, sector and product. These multipliers are calibrated rather than measured. They sit on top of the harder anchors described above and are documented as judgement, not hidden as fact.

As a rule of thumb, if a number can be read directly from an official table, it is treated as measured. If it is derived from several tables with simple arithmetic, it is calibrated. If it is there because it has to be assumed, it is labelled as judgement.

How The Estimator Works

The model follows a simple sequence: base arrears → macro stress → defaults → losses.

For each segment, the estimator first sets a base arrears rate. For scheme-type lending it uses the arrears rate published for the scheme. For other unsecured SME lending it starts from a baseline arrears level (set by the Non‑Scheme Arrears slider) and adjusts using size, sector and product multipliers.

This base arrears rate is then passed through a macro scenario. Each scenario has a multiplier. Baseline leaves things as they are. Mild and severe use multipliers chosen so their severity corresponds to the Bank of England's view of a mild downturn and a severe stress.

The next stage converts arrears into actual defaults. For the schemes this uses the default-from-arrears ratios observed in the repayment data. For the rest of the book it uses a scenario-level base conversion rate, then adjusts for size and sector.

Finally, Loss Given Default is applied. At borrower level the estimator assumes a central unsecured LGD. At bank level it applies the guarantee percentages to show how much of the loss is effectively underwritten by government.

The tool also offers a trade credit view for those working with receivables rather than loans. It combines the portfolio default rate and the sector insolvency rate into a simple probability of distress for customers.

Why This Is Useful

From a user's point of view, the individual pieces of public data are a mess. You can see government scheme performance over time, you can see insolvency rates, you can read the FSR, you can dig out SME NPL ratios and arrears work from Experian and others. It takes time and effort to turn that into a coherent answer.

This estimator does that structuring work. It gives you something you can interrogate and amend instead of a pile of PDFs.

If you are a lender, it gives you a check on whether your internal arrears assumptions are in the same postcode as what public data would imply. If you work in trade credit, it gives you a reasoned way to connect the loan side of the system to the receivables side.

The model will never tell you exactly what your book's arrears were last month. That is your MI's job. What it can do is give you a defended range and a clear link between the external environment and the shape of your arrears and loss profile.

Model v1.0 · Data as of September 2025 · Built from HMT, BoE, BBB, Insolvency Service, OECD, Experian