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Example Workflow: Fraud
Detection and Investigation
2
Why Fraud Detection?
• Most popular use case in financial industry
• Easier to understand without prior knowledge of
financial domain
• e.g. Everyone has a Credit Card!
• GDS workflow with a sequence of Graph Algorithms
to answer a specific set of questions
3
Fraud Categories
Fraud occurs
when an individual or group of
individuals or a business entity
intentionally
deceives another individual or
business entity with
misrepresentation
of identity, products, services, or
financial transactions and/or
false promises
with no intention of fulfilling them.
4
Financial Fraud
http://www.experian.com/blogs/insights/2017/09/whos-on-first/
● First Party Fraud
○ Fake information
○ Customer and fraudster
are the same
● Second Party Fraud
○ Money mules
○ Customer and fraudster
are both involved
● Third Party Fraud
○ Stolen identity
○ Customer is the victim
5
Fraud Detection and Investigation
https://www.sas.com/content/dam/SAS/en_us/doc/whitepaper1/layered-approach-fraud-detection-prevention-106072.pdf
LAYERED APPROACH
6
Why Neo4j?
Connected Data
● Ideal for investigating
cross-channel fraud
Relationships
● Entity resolution, Entity
link analysis, first,
second and third party
fraud detection
7
https://neo4j.com/whitepapers/financial-fraud-detection-graph-data-science/
Neo4j Resources
8
Let’s Start..
● What Questions?
● What Data?
● Which Algorithms?
9
What Questions?
● First Party Fraud Detection
○ Identifying clusters of clients sharing personally identifiable
information (PII) like SSN, Phone Number and Address
○ Pairwise similarity calculation on the clients sharing PII
○ Computing a first party fraud score
10
What Questions?
● Second Party Fraud Detection
○ Identify transactions between first-party fraudsters and other
clients
○ Explore the type of transactions between these two groups
○ Compute a Second-party Fraud Score
11
What Algorithms?
Identify disjointed groups that share identifiers.
Identify communities that frequently interact
Measure account similarity or fraud ring
similarity
Measure influence and transaction volumes.
Find unobserved relationships and add them
to your data.
Filter transactions with extremely short paths
between people.
Louvain Modularity, Weakly
Connected Components, Label
Propagation, ..
Jaccard similarity, Cosine
similarity,..
PageRank, Betweenness, ..
Common Neighbors,
Preferential Attachment, ..
Shortest Path, A*, Random
Walk, ...
12
What Data?
Paysim
● Synthetic financial data set using an agent-based model and aggregate
transactional data from a real mobile money network operator
● Agents perform Transactions exchanging money at each step in time with other
Agents
● Agents: Clients ( End Users), Merchants (Vendors) and Banks (Financial
Institutions)
● Transactions: CashIn, CashOut, Debit, Transfer and Payment
● Steps: one hour of time and agents can perform one or more than one
transactions per step
Lopez-Rojas, Edgar Alonso & Elmir, Ahmad & Axelsson, Stefan. (2016)
Ref: https://www.sisu.io/posts/paysim/
1. Framing the problem
2. Data Exploration
3. First Party Fraud
4. Second Party Fraud
13
What are we going to do?
17
Let’s explore..
SCHEMA
`(:Client) - [:PERFORMED] -> (:Transaction) - [:TO] ->
(:Merchant | :Bank | : Client)
`(:Client) - [:HAS_SSN | :HAS_EMAIL | :HAS_PHONE] ->
(:SSN | :Email |:Phone)
`(:Client) - [:FIRST_TX] -> (:Transaction) - [:NEXT]
-> (:Transaction) - [:NEXT] -
Browser Guide Ref: 5
Questions?
26

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Neo4j Graph Data Science Training - June 9 & 10 - Slides #8 - Graph Data Science - Example

  • 2. 2 Why Fraud Detection? • Most popular use case in financial industry • Easier to understand without prior knowledge of financial domain • e.g. Everyone has a Credit Card! • GDS workflow with a sequence of Graph Algorithms to answer a specific set of questions
  • 3. 3 Fraud Categories Fraud occurs when an individual or group of individuals or a business entity intentionally deceives another individual or business entity with misrepresentation of identity, products, services, or financial transactions and/or false promises with no intention of fulfilling them.
  • 4. 4 Financial Fraud http://www.experian.com/blogs/insights/2017/09/whos-on-first/ ● First Party Fraud ○ Fake information ○ Customer and fraudster are the same ● Second Party Fraud ○ Money mules ○ Customer and fraudster are both involved ● Third Party Fraud ○ Stolen identity ○ Customer is the victim
  • 5. 5 Fraud Detection and Investigation https://www.sas.com/content/dam/SAS/en_us/doc/whitepaper1/layered-approach-fraud-detection-prevention-106072.pdf LAYERED APPROACH
  • 6. 6 Why Neo4j? Connected Data ● Ideal for investigating cross-channel fraud Relationships ● Entity resolution, Entity link analysis, first, second and third party fraud detection
  • 8. 8 Let’s Start.. ● What Questions? ● What Data? ● Which Algorithms?
  • 9. 9 What Questions? ● First Party Fraud Detection ○ Identifying clusters of clients sharing personally identifiable information (PII) like SSN, Phone Number and Address ○ Pairwise similarity calculation on the clients sharing PII ○ Computing a first party fraud score
  • 10. 10 What Questions? ● Second Party Fraud Detection ○ Identify transactions between first-party fraudsters and other clients ○ Explore the type of transactions between these two groups ○ Compute a Second-party Fraud Score
  • 11. 11 What Algorithms? Identify disjointed groups that share identifiers. Identify communities that frequently interact Measure account similarity or fraud ring similarity Measure influence and transaction volumes. Find unobserved relationships and add them to your data. Filter transactions with extremely short paths between people. Louvain Modularity, Weakly Connected Components, Label Propagation, .. Jaccard similarity, Cosine similarity,.. PageRank, Betweenness, .. Common Neighbors, Preferential Attachment, .. Shortest Path, A*, Random Walk, ...
  • 12. 12 What Data? Paysim ● Synthetic financial data set using an agent-based model and aggregate transactional data from a real mobile money network operator ● Agents perform Transactions exchanging money at each step in time with other Agents ● Agents: Clients ( End Users), Merchants (Vendors) and Banks (Financial Institutions) ● Transactions: CashIn, CashOut, Debit, Transfer and Payment ● Steps: one hour of time and agents can perform one or more than one transactions per step Lopez-Rojas, Edgar Alonso & Elmir, Ahmad & Axelsson, Stefan. (2016) Ref: https://www.sisu.io/posts/paysim/
  • 13. 1. Framing the problem 2. Data Exploration 3. First Party Fraud 4. Second Party Fraud 13 What are we going to do?
  • 14. 17 Let’s explore.. SCHEMA `(:Client) - [:PERFORMED] -> (:Transaction) - [:TO] -> (:Merchant | :Bank | : Client) `(:Client) - [:HAS_SSN | :HAS_EMAIL | :HAS_PHONE] -> (:SSN | :Email |:Phone) `(:Client) - [:FIRST_TX] -> (:Transaction) - [:NEXT] -> (:Transaction) - [:NEXT] - Browser Guide Ref: 5