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DIP Recovery Analysis February 2026
01 / 16

What happens after
a DIP fails?

9,212 applications with at least one DIP in 2025. Of these, 44% pass first time, 22% fail but recover, and 34% fail terminally.

02 / 16

Classification

Five DIP journeys

Every application classified by comparing first DIP outcome to latest.

4,023
Clean Pass
44% · First DIP passed
1,627
Fail Recovered
18% · First failed, latest passed
419
Refer Recovered
5% · First referred, latest passed
2,878
Failed Terminal
31% · Latest still failed
265
Referred Terminal
3% · Latest still referred

A third of all DIP'd applications (34%) fail or are referred terminally — low-complexity cases that never progress beyond mortgage-in-principle.

03 / 16

Scene setting

Monthly journey share

Volume ramps from ~700 in Q1 to 959 in October, then drops seasonally.

Jan717
Feb649
Mar749
Apr746
May735
Jun708
Jul810
Aug859
Sep917
Oct959
Nov812
Dec551
Clean Pass (41–47%)
Fail Recovered (15–20%)
Refer Recovered (3–5%)
Failed Terminal (29–37%)
Referred Terminal (2–4%)

The mix is remarkably stable. Terminal failure rate ticked up in H2, peaking at 36.6% in November.

04 / 16

The surprise

Recovered cases convert better
than clean passes

40%
Recovered cases
offer rate
vs
31%
Clean pass
offer rate

Cases that initially fail but recover are nine percentage points more likely to reach offer. The initial failure filters out tyre-kickers, leaving committed applicants.

05 / 16

Full breakdown

Conversion by journey type

DIP Journey DIPs Application Rate Offer Rate
Clean Pass 4,023 39.3% 31.1%
Fail Recovered 1,627 52.7% 39.2%
Refer Recovered 419 53.9% 40.1%
Failed (terminal) 2,878 0.1% 0.0%
Referred (terminal) 265 0.4% 0.0%

+14pp packaging rate, +9pp offer rate for recovered vs clean pass. Both fail-recovered and refer-recovered convert at essentially the same rate once they've passed.

06 / 16

Why?

Three forces at work

01

Survivor Bias

Cases that retry after failure are more committed. The initial DIP failure filters out tyre-kickers — only serious buyers come back.

02

Higher Complexity

Recovered cases score 3.4 vs 2.9 on complexity. More complex = more real: a genuine buyer with a real property.

03

Broker Intervention

Brokers actively fix applications — adjusting income, restructuring deposits, removing problematic applicants. Deliberate, skilled work.

07 / 16

Complexity

Recovered cases are genuinely harder

Journey Avg Score Median
Refer Recovered 3.49 3.2
Fail Recovered 3.39 3.1
Clean Pass 2.93 2.7
Referred (terminal) 2.52 2.5
Failed (terminal) 2.29 2.1

Terminal failures are the simplest cases — fundamentally unviable applications, likely home hunters or early-stage enquiries.

Recovered cases are ~0.5 points higher — roughly a third of a standard deviation. Real complexity, real commitment.

08 / 16

Initial failure reasons

What trips them up first time?

Credit Quality
11.5%
Sole Traders
5.9%
Total Gross Income
4.8%
Loan to Income
3.5%
Limited Companies
3.4%
New Build Property
3.3%
Employment Status
3.2%

Credit quality is #1 by a wide margin. The next cluster is income and employment (sole traders, gross income, LTI, limited companies, employment status) — collectively ~23%.

09 / 16

Broker intervention

Income is the #1 lever

Comparing first (failed) vs latest (passed) DIP inputs. Threshold: >5% change.

Income changed
28.3%
Loan amount
17.0%
LTV changed
15.9%
Owner count
5.0%
Repayment type
0.2%

Nearly 1 in 3 fail-recovered cases had income change by >5%.

Affordability is the dominant blocker — 53% of first-DIP failures start with affordability not met.

10 / 16

The quality signal

Recovery speed predicts conversion quality

This is the most important table in the analysis.

Recovery Time
Offer Rate
Cases
Under 1 hour
18.1%
486
1hr – 1 day
32.8%
299
1 day – 1 week
51.5%
482
1 week – 1 month
56.7%
402
Over 1 month
39.0%
369

Instant retries = brute force. Medium recovery (days to weeks) = thoughtful broker work = best outcomes. Over a month = case went cold.

11 / 16

Interpretation

The sweet spot is days to weeks

<1h
Quick Fix
Brute-force retry. Avg 4.7 DIPs. Marginal cases.
18%
1d–4w
Thoughtful Work
Gathering docs, adjusting the application. Avg 8.4 DIPs.
51–57%
>1m
Gone Cold
Case went stale or required fundamental restructuring.
39%

Recovery speed is a proxy for broker quality. The broker who takes a few days to fix a case produces the best outcome.

12 / 16

Deep dive

Credit quality: the hardest to fix

Fail Category Median Days <1hr Rate Offer Rate
Other 2.0 30.0% 39.1%
Income / LTI 2.2 29.4% 44.5%
Property 2.8 27.0% 36.5%
Employment Type 4.9 24.3% 47.0%
Credit Quality 7.7 17.2% 32.3%

Credit quality takes the longest (7.7 days) and converts the worst (32%).

Employment type converts the best (47%). Sole traders, limited company directors — takes time but solid cases.

13 / 16

Credit quality recovery

Not a death sentence — but measurably harder

92.5%
Credit fails that recover
vs 95.5% for non-credit
30%
Credit-fail offer rate
vs 39% for other fail types
26%
Credit + other rules combined
Compounded failures are the weakest
Action Recovered Still Failed
Changed income >5% 43% 40%
Removed an owner 10% 0%
LTV changed >5% 17% 20%

Removing a problematic applicant is a real but minority strategy (10%). The dominant fix is income adjustment (43%).

14 / 16

The business case

Once recovered, they're better than clean passes

The conditional funnel: what happens after a case passes its DIP?

Metric Clean Pass Fail Recovered Refer Recovered
Cases (passed DIP) 4,023 1,627 419
Submit app (packaging rate) 39.3% 52.7% 53.9%
Get offer (of those who submitted) 79.1% 74.4% 74.3%
Overall offer rate 31.1% 39.2% 40.1%

Recovered cases submit apps at 53% vs 39% and convert app→offer at the same rate (~74% vs 79%). The recovery process is a second quality gate — only committed borrowers come back.

15 / 16

The full funnel

The bottleneck is recovery, not what comes after

Starting from every first DIP — where does each cohort leak?

Funnel Step Clean Pass First Fail First Refer
Total cases 4,023 4,530 659
Step 1: Pass a DIP 100% 35.9% 63.6%
Step 2: Submit app (of passed) 39.3% 52.7% 53.9%
Step 3: Get offer (of submitted) 79.1% 74.4% 74.3%
End-to-end offer rate 31.1% 14.1% 25.5%

Refers: highest ROI per case. 64% recover, 40% offer rate once recovered. For every 4 refers reviewed, ~1 reaches offer. Help underwriters clear these fast.

Fails: triage, not blanket effort. 62% never retry (zero cost). The 38% who retry convert at 37%. Target employment type (47%) and income/LTI (44.5%).

16 / 16

Where to focus

Priority order for effort

  1. 01 Refers — highest ROI per case. 64% recover to pass, 40% offer rate once recovered (vs 31% for clean passes). Underwriter time is well spent; 82% of clean-pass yield on a per-application basis.
  2. 02 Fail retriers (the 38% who come back) — once recovered, they're premium quality at 39% offer rate. Use fail reason to triage: employment type (47%), income/LTI (44.5%), credit quality (32% — lowest yield, longest fix).
  3. 03 Clean passes — the volume play, but paradoxically the lowest-quality per-passed-case. The 39% packaging rate is the bottleneck — focus on conversion after DIP, not the DIP itself.

The central insight: recovery is a quality signal, not a red flag. The initial DIP failure filters out tyre-kickers. Once past that gate, recovered cases outperform clean passes at every step. Spend more time helping refers recover and less time worrying about the fail pool — the serious ones self-select back in.