Provenir_2022-03-04_2022_Global_Fintech_Agenda-Pulse Report

Maximize Value Across the Entire Customer Lifecycle

2022

What’s driving the agenda for fintechs and financial services in 2022? Pulse and Provenir surveyed 400 decision-makers in fintechs and financial services organizations globally to find out what they believe will be the biggest challenges, opportunities and trends of 2022 and how they plan to address them with data, AI and decisioning.

Data collection: October 13 December 21, 2021

Respondents: 400 Fintech decision-makers

The lack of data access, effective AI, and real-time decisioning are key challenges facing decision-makers today.

Most decision-makers struggle with their organization’s credit risk strategy because data is not easily accessible 74%, access to alternative data sources is limited 60%, and a centralized view of data across the customer lifecycle is not available 60%.

Which of the following do you consider to be the biggest challenge(s) with your organization’s credit risk strategy today?

Data is not easily accessible

74%

Limited access to alternative data sources

60%

Do not have centralized view of data across the customer lifecycle Unable to utilize machine learning / AI to improve model performance

60%

48%

Can’t make credit risk decisions in real time

43%

Models are difficult to deploy

39%

Too dependent on vendors to make changes

37%

23%

Models are not predictive

Do not have adequate internal resources

12%

Real-time credit risk decisioning is the #1 investment focus for 2022.

74% are planning to invest in a real-time credit risk decisioning platform in 2022. 69% plan to invest in AI-enabled credit decisioning and more than 50% plan to invest in digital wallet, financial inclusion and alternative data.

In which of the following do you plan to invest in 2022?

Planning to invest

Not planning to invest

Real-time credit risk decisioning platform

74%

26%

Digital wallet

71%

29%

AI-enabled credit decisioning

31.5%

68.5%

Products that enable financial inclusion

63%

37%

Embedded finance

55%

45%

Alternative data for credit risk

53%

47%

Buy now, pay later BNPL

46%

54%

SuperApps

41%

59%

AI and data integration are the two most important features when selecting an automated risk decisioning system.

Almost 50% of respondents plan to invest in an automated risk decisioning solution with alternative data capabilities in 2022.

Which of the following features does your automated risk decisioning system currently include / will be important in your selection?

Currently have feature/would be most important

Plan to invest in 2022

No plan to invest in 2022

Alternative Data

35%

48.5%

16.5%

Case Management

39%

41.5%

19.5%

Model language agnostic

42%

41%

17%

Real-time decisioning

52%

32%

16.5%

Business Intelligence

61%

31%

8%

Data Integration

65%

25% 10%

AI Predictive Analytics/Machine Learning)

64%

22% 14%

Fraud prevention is the biggest driver for investments in AI- enabled risk decisioning.

For 78% of respondents, fraud prevention is among the primary drivers of their investments in AI-enabled risk decisioning. More than half say their investments are driven by a desire to automate decisions across the credit lifecycle 58% and improve cost savings and operational efficiency 57%.

What are the primary drivers for any investments you’ve made/will make in AI enabled risk decisioning?

78%

58%

57%

51%

47%

42%

39%

37%

34%

Fraud prevention

Automate decisions across the credit lifecycle

Cost savings and operational efficiency

More competitive pricing

More accurate risk profiles

Improve customer experience

Improve financial performance

Grow market share with underbanked/ unbanked populations

Increase market differentiation

Only 21% of respondents begin to see returns from their AI projects within 120 days. 59% of respondents reported that they did not begin to see ROI from their AI implementations for 34 months.

How long after implementing AI (predictive analytics/ML did you begin to see positive ROI?

59%

121150 days

18%

5% 060 days 16% 61120 days

More than 150 days

2%

We have not implemented AI

1%

We have not seen positive ROI yet

Data integration is the biggest impediment to using alternative data.

70% of respondents list data integration challenges as one of the biggest barriers to using alternative data. 51% stated that alternative data is not accessible to their organization.

What are your biggest barriers to accessing/using alternative data?

70%

51%

46% 36%

Alternative data is not easily integrated into our current decisioning solution

Alternative data is not accessible to my organization

The data is too unstructured

Not convinced of the value

Improving fraud detection and prevention and serving the underbanked/unbanked are the top reasons respondents use alternative data in credit risk analysis.

65% of respondents say improving fraud detection and prevention is one of the primary reasons for using alternative data in credit risk analysis; 40% cite more accurate credit scoring. 51% use alternative data to better serve the underbanked/unbanked.

What are your primary reasons for using alternative data sources in credit risk analysis?

65%

43%

40%

Improve fraud detection and prevention

Reach a bigger audience

More accurate credit scoring

31%

51%

Our competitors are doing it

Serve the underbanked/ unbanked

26%

Alternative data is now available

11%

We don’t use alternative data

Age verification, bank account verification and KYC lead the pack for top types of data used in risk decisioning.

Age verification 71%, KYC 61%, and bank account verification and validation 61% are the top sources of alternative data used in risk decisioning by respondents.

Which of the following sources of alternative data do you currently include in your risk decisioning?

71%

Age Verification

Bank Account Verification & Validation

61%

KYC Know Your Customer

61%

Income Verification & Validation

48%

47%

Facial Biometrics

Document Verification & Validation

43%

43%

Employment Verification

37%

Open Banking

36%

Collections

36%

Identity & Verification

30%

KYB Know Your Business

29%

Fraud

27%

Affordability

3%

Social Media

Fraud prevention and operational efficiency are the two top priorities decision-makers plan to address with technology investments in 2022.

In 2022, decision-makers are looking to technology to help prevent fraud 70%, improve operational efficiency 60%, and increase their mobile presence 58%.

What challenges/opportunities do you plan to address via technology in 2022?

70%

60% 58%

50%

49%

44%

44%

42%

Fraud prevention

Improving operational efficiency

Increasing mobile presence

Acquiring new customers

Increasing regulatory compliance

Customer experience and retention

Risk mitigation

Increasing competition from new players

Confidence in credit model accuracy is low.

Only 18% of respondents feel their credit models are accurate at least 75% of the time.

How accurate do you believe your organization’s credit risk model (or models? is today?

76%

7% Not at all (less than half the time)

17% 1%

Somewhat 50%75% of the time)

Mostly 76%95% of the time)

Completely

Almost 80% of respondents cited low/no code as an important feature of automated risk decisioning systems.

78% of respondents cited low/no code UI as a feature they have or that would be most important when selecting an automated risk decisioning system and 19% plan to invest in 2022. 42% of respondents cited model language agnostic and 41% plan to invest in 2022.

Which of the following features does your automated risk decisioning system currently include / will be important in your selection?

Currently have feature/would be most important

Plan to invest in 2022

No plan to invest in 2022

78%

42% 41%

19%

17%

4%

Low/no code UI

Model language agnostic

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