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Presented by Name: Stuart Hamilton Assistant Commissioner Corporate Intelligence & Risk

Using Technology to Improve Compliance . State Compliance Conference. External. 9 November 2006. SEGMENT. AUDIENCE. SUBJECT. DATE. UNCLASSIFIED. Optimising Compliance The role of analytic techniques. Presented by Name: Stuart Hamilton

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Presented by Name: Stuart Hamilton Assistant Commissioner Corporate Intelligence & Risk

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  1. Using Technology to Improve Compliance State Compliance Conference External 9 November 2006 SEGMENT AUDIENCE SUBJECT DATE UNCLASSIFIED Optimising ComplianceThe role of analytic techniques Presented by Name: Stuart Hamilton Assistant Commissioner Corporate Intelligence & Risk Australian Taxation Office Version 1.1

  2. Contents • Context – The Australian Taxation Office • ATO business model • Resource constrained optimisation • Views on risk – tax gap or risk to budgeted revenue • Understanding our clients • Integrate intelligence (qualitative) and analytics (quantitative) • Compliance model view and degree of personalisation… • What are we measuring • Distribution of client scores • Client risk profile • Selecting the right treatment - Champion / challenger treatment evaluation • Selecting the right model • Selecting the right mix

  3. Context – The Australian Taxation Office Some highlights from our Annual Report for 2005/6 • Net tax collections of $232.6b (principal revenue collection agency). • $7.5b in transfers and payments (second largest payer of benefits). • Operating expenditure of $2.5b with 21,500 staff. • In midst of major ($453m) systems change program. Implemented Seibel CRM as our single case management system (down from over 100 separate systems). • Processed 13.5m tax returns, 12.9m activity statements & 18.1m payments, • Trialled pre-population of some aspects of client returns. • Some 1.4m returns lodged online using e-Tax (an increase of 27% on py). • Some 11.6m log-ins to our tax agent portal. Some 9m phone calls received. • Implemented around 100 new legislative measures. • Raised $6.9b from compliance activities and collected $4.5b • Compliance activities (excl lodgment & debt): 84k fieldwork, 331k phone, 1.1m letters …We are a significant business from any viewpoint…

  4. ATO business model Business intent: To optimise voluntary compliance and make payments under the law in a way that builds community confidence… Analytics

  5. $ Theoretical “Full Compliance” bandwidth Total Revenue Total Cost Resource Constrained Optimum Theoretical System Optimum Net Revenue Cost O1 Os Resource constrained optimisation Revenue authorities aren’t resourced to go after every dollar…and even if they were, they couldn’t in practice…

  6. US IRS view of 2001 theoretical tax gap – does it help us ? Views on Risk – Tax Gap or Risk to Budgeted Revenue Compliance isn’t black and white. The law often requires interpretation and views will differ. Clients may not comply for a variety of reasons – from ignorance of the law, to differing views of its application, to honest mistakes, to carelessness, negligence and deliberate intent.

  7. Risk to budgeted revenue - from compliance movements…

  8. Community relationship model

  9. Understanding our clients - discovery v detection

  10. Understanding the data, understanding the client… Exploratory data analysis “It is a capital mistake to theorize before one has data. Insensibly one begins to twist facts to suit theories, instead of theories to suit facts." Sherlock Holmes in ‘A Scandal in Bohemia’ (1891) Tools…. SAS JMP SAS Insight SAS EM NCR WHM Rattle

  11. Integrate intelligence (qualitative) and analytics (quantitative)…

  12. Integrate intelligence (qualitative) and analytics (quantitative)…

  13. Intelligence & risk management - analytics - Analytic underpinning -

  14. Firm enforcer Firm enforcer Fair Administrator Professional advisor Trusted authority Fair Administrator Compliance model view and degree of personalisation… Analytics Investigate & prosecute – civil / criminal Audit & penalise – administrative detect & deterrence Review & advise – assist to comply Market & educate – assist to comply / make it easy

  15. What are we measuring…key client obligations OECD Client obligations • Registering in the system (either with the revenue authority or with some other body) • Lodging or filing the appropriate forms on time • Providing accurate information on those forms • Making any transfers or payments due on time Most revenue systems also require a client to maintain records of appropriate information for some set period. Ie • Keeping records that allow verification of the information used to satisfy the above obligations.

  16. What are we measuring – common measuring sticks… Without a standard measuring stick views on relative risk will be more subjective • ∆Tax: Delta tax - The change in primary tax associated with the non-compliance. [ie Identifies those who may have the most tax wrong. An absolute amount. “Client A may have underpaid $5,500 in tax in year y.”] • ∆Tax/(∆Tax + Tax): Severity - The relative severity of the non-compliance as a percentage of tax paid. [ie Identifies those who may have most of their tax wrong. A relative value. “Client A may have underpaid 15% of their tax in year y.”] • Cf(∆Tax): Confidence - The confidence interval associated with our estimate of ∆Tax. [ie Identifies how confident we are of the estimate in ∆Tax. “We are 90% confident that Client A underpaid $5,500 in tax in year y”] • Pf(∆Tax): Proportion collectable - The proportion of ∆Tax estimated to be collectable. [A function of a clients’ propensity to pay and their capacity to pay. “We estimate that 80% of the $5,500 estimated to be underpaid by Client A will be collectable.”]

  17. Distribution of client scores that equate to revenue risk…. We propose using ∆Tax as a standard risk measure Cases would be prioritised by ∆Tax

  18. Distribution of client scores that fit with verification intensity… ∆Tax: Who avoided or evaded the most tax…? ∆Tax scores tell us who we predict evaded or avoided the most tax in absolute terms – a critical factor for a revenue collection agency. Using ∆Tax for lodgement, reporting and account scores enables a consistent view of risk across obligations and products. n x x x Confidence distribution in ∆Tax Estimate x x x x x x x x x x x x x x x x x x x x x x x x x x x x x x x x x x x x x x x x x x x x x x x ∆Tax → $Y

  19. Distribution of client scores that fit with compliance model… Severity ∆Tax/(∆Tax + Tax): Who avoided or evaded most of their tax…? ∆Tax/(∆Tax + Tax)scores tell us who we predict evaded or avoided most of their tax in relative terms – a critical factor for a revenue collection agency looking at serious non-compliance and aggressive tax planning. n x x x Confidence distribution in ∆Tax/(∆Tax+Tax) Estimate x x x x x x x x x x x x x x x x x x x x x x x x x x x x x x x x x x x x x x x x x x x x x x x 0 ∆Tax/(∆Tax+Tax) 1

  20. Client risk profile

  21. Initial risk modeling Initial modelling has focussed on the Income Tax and GST product obligations This will be extended over time to cover all product and obligation types Initial modelling target areas Obligation -> Register Lodge Report/Advise Account Fully Compliant “Propensity to Register Correctly” “Propensity for Correct information” “Propensity to Lodge On-time” “Propensity to Pay On-time & In full” “Propensity to Meet All Obligations” Administrative Product ↓ (weighted scores) Risk Score Risk Score Risk Score Risk Score Risk Score Risk Score Income Tax GST Excise Super …(other FBT etc) All Products(weighted scores) Risk Score Risk Score Risk Score Risk Score Risk Score Risk Score Risk Score Risk Score Risk Score Risk Score Risk Score Risk Score Risk Score Risk Score Risk Score Risk Score Risk Score Risk Score Risk Score Risk Score Risk Score Risk Score Risk Score Risk Score Risk Score • Risk Attributes: • Registration History • Proof of Identity • Risk Attributes: • Lodgment History • Timeliness • Ageing • Predicted revenue • Risk Attributes: • Assessment History • Label Analysis • Ratio Analysis • Refunds/Liabilities • Risk Attributes: • Payment History • Debt Level • Timeliness/ Ageing • Capacity to pay Whole of Client Score *NOTE: Client Scores can be further aggregated to support Industry, Occupation and Product Risk Scores for the whole client population. .

  22. Champion / challenger treatment evaluation Champion: treatment assigned to majority (80%) of target segment (similar clients) Challenger(s): treatment(s) assigned to minority (2x10%) of target segment (similar clients) >> Identify treatment that gives best long term outcome & make champion >> Invent new challenger treatments to test Note: Champion/challenger control groups give you the information needed to evaluate the effectiveness of your treatment strategies... Champion Today Potential actions Challenger 1 RETURN ON INVESTMENT Break even Current ROI trajectory Challenger 2 KEY Champion treatment Challenger Treatment 1 Challenger Treatment 2 TIME

  23. Client Scoring for treatment selection… So we can personalise our treatment strategies to the client Decision Tree of Rules derived from data to assign scores Letter X Letter Y Treatment – Audit Call Treatment – Review In fact scores are likely to be done via several models ‘voting’ together – Ensembles.

  24. Simple decision tree model…now grow 500 and have them vote Models can be relatively simple conceptually… to more complex – such as • Random Forest approaches • Support Vector Machines • Neural Networks Even where a complex method is used it is useful to have a simple decision tree for explanatory purposes… why was this client selected…

  25. Revenue ‘lift’ over methods that don’t prioritise clients… Diagrams such as risk charts allow management to see the revenue caseload trade-off that a analytic model provides. Often 40 to 50% of the caseload will provide 90 to 95% of the revenue when an analytic model is deployed. If there is a mechanism to prioritise cases within a pool then the revenue result will be higher at lower caseload levels. If cases are prioritised on revenue outcome the mechanism ‘lifts’ the revenue result that would otherwise result from a random selection within the case pool. The strike rate line will be higher at lower case load levels and fall off as more of the original case load is done. If there is no effective mechanism to prioritise cases within a case pool then the revenue result will be linearly linked to the case numbers. With significant numbers of reasonable similar cases this line will be a 45% line. ie 20% of cases will give you ~20% of the revenue. The strike rate line will be essentially flat across the pool at a level equal to the number of productive cases in the pool over the total number of cases.

  26. Risk chart – performance & caseload Risk charts provide an easy to understand view to management of the trade-off between caseload and revenue allowing more informed decisions to be made regarding resource use. Here 40% of the caseload yields 82% of the revenue while 70% of cases gives 98% of the revenue.

  27. The impact of strike changes varies… Targeting effectiveness or efficiency? Fixed staffing /fixed revenue impacts… Effort time differential can be overlooked and it can make a real difference…

  28. Understanding which model works best • Taylor-Russell diagrams

  29. Understanding which model works best – area under ROC curve A variety of risk scoring models can be compared by seeing where they outperform another model and by how much. Create ensembles that outperform a single model

  30. Operationalising the results

  31. Optimising case mix…linear programming/simulation Decision support approaches such as linear programming can assist judgements regarding numbers & types of cases to pursue…

  32. Taxpayers Candidate Population Risk Identification Risk Treatment Development Model & Treatment Strategy Ranked Candidates Cases Risk Prioritisation Resource Allocation Demand Management Results End to end process Optimise treatment & candidate selection Modelling Coverage & Revenue targets Operationalise Analytics Seibel Work & Case Mgmt Optimise risk priority & case mix selection

  33. Applying results of data mining… 1 2 3 4 Apply New Risk Segmentation TuneScreening Rules Optimise a Treatment Strategy Optimise Treatment Portfolio Adjust screening rules (thresholds, ratios, exceptions) to reflect better understanding of risk. Look at adjusting, combining rules. Can be applied straight away. Find the optimal point to maximise revenue collection, while minimising caseload and occurrence of fraud.Apply risk scores to case selection to get best overall outcomes. Find the optimal point to maximise revenue collection, while minimising caseload and occurrence of fraud – for the whole of treatment portfolio. Optimise the treatment mix Instead of using $ value or market segment as proxy for risk, identify actual group and its characteristics. Create new language and awareness of risk. Degree of Sophistication Optimisation is more than picking the right clients – the right treatment and right work mix also need to be optimised…

  34. outlier 75th percentile 50th percentile 25th percentile 10th percentile 10th percentile Questions? Regression Models K Nearest Neighbor Neural Networks Decision Trees Self Organized Maps Text Mining Sampling Outlier Filtering Assessment

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