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Modern Data Science
Alejandro Correa Bahnsen
June 2016
@albahnsen
1
Who am I?
Data Scientist
PhD in Machine Learning
Interested in Big Data Engineering
Passionate about open-source
Scikit-Learn contributor :)
Organizer of the Bogota Big Data Science Meetup
2
Who I've worked with
3
Where I work
Lead Data Scientist working on applying
Machine Learning for Security Informatics
4
Aims of this talk
Discuss what a Modern Data Scientist is
(And what is not)
5
6
It's 2016 and there is still no
unique definition of Data
Science
7
8
“ A data scientist is a statistician
who lives in San Fransisco.
“ Data Science is statistics on a
Mac.
9
Data Science is like teenage sex:
everyone talks about it,
nobody really knows how to do it,
everyone thinks everyone else is doing it,
so everyone claims they are doing it...
10
Even worse, people use
several words interchangeable
11
12
13
14
15
Lets focus only on modern
data science
16
So what is Data
Science?
17
Data Science
18
Data Science is the intersection of
Hacking Skills, Math & Statistics
Knowledge and Substantive Expertise
Those are the pillars of data science: computing,
statistics, mathematics and quantitative disciplines
combined to analyze data for better decision making
19
Hacking Skills
Ability to build things and find clever solutions to
problems.
Programming/Coding: Python and R (and others)
Databases: MySQL, PostgreSQL, Cassandra,
MongoDB and CouchDB.
Visualization: D3, Tableau, Qlikview and Markdown.
Big Data: Hadoop, MapReduce and Spark.
20
Hacking Skills
21
Hacking Skills
http://www.kdnuggets.com/2016/06/r-python-top-
analytics-data-mining-data-science-software.html
22
Hacking Skills
http://www.kdnuggets.com/2016/06/r-python-top-
analytics-data-mining-data-science-software.html
23
Math & Statistics
Being able understand the right solution to each
problem
Linear algebra: Matrix manipulation
Machine Learning: Random Forests, SVM, Boosting
Descriptive statistics: Describe, Cluster
Statistical inference: Generate new knowledge .
24
Math & Statistics
25
Substantive Expertise
Ability to ask good questions requires domain
understanding, that’s why a data scientist can’t create
data based solutions without a good industry knowledge
Is this A or B or C? (classification)
Is this weird? (anomaly detection).
How much/how many? (regression).
How is it organized? (clustering).
What should I do next? (reinforcement learning)
26
How did we get here
27
Data Science
Examples
28
Netflix Price
29
Goolge flu trends
30
Creating a rembrandt
31
Obama campaign
32
Moneyball
33
AlphaGo
34
My recent
experience
35
Phishing Detection
36
Malware Identification
37
Man-in-the-Browser Attacks
38
Intrusion Detection
39
Fraud Detection
40
Fraud Detection
Estimate the probability of a transaction being fraud
based on customer patterns and recent fraudulent
behavior
Issues when constructing a fraud detection system:
Class Imbalance
Cost-sensitivity
Short time response of the system
Dimensionality of the search space
Feature preprocessing
Model selection
41
Fraud Detection
42
Class Imbalance
Fraudulent transactions represents between 0.01% to
0.5% of the transactions
Create a balanced dataset using:
Under sampling
Over sampling
TomekLinks sampling
Condensed Nearest Neighbor
NearMiss
Synthetic Majority Over Sampling
43
Class Imbalance
Synthetic Majority Over Sampling Technique
SMOTE
44
Cost-Sensitivity
Typical evaluation of a classification model:
Actual Fraud Actual Legitimate
Predicted Fraud True Positives (TP) False Positives (FP)
Predicted Legitimate False Negatives (FN) True Negatives (FN)
Accuracy = TP+FP+TN+FN
TP+TN
F Score =1 TP+FN+FP
TP
45
Cost-Sensitivity
Assumes the same financial cost of false positives and
false negatives!
Not the case in fraud detection:
False positives: When predicting a transaction as
fraudulent, when in fact it is not a fraud, there is an
administrative cost
False negatives: Failing to detect a fraud, the amount
of that transaction is lost.
46
Cost-Sensitivity
Cost Matrix
Actual Fraud Actual Legitimate
Predicted Fraud
Predicted Legitimate
Cost(f(S)) = y (1 − c )AMT + c C∑i=1
N
i i i i a
c = CTP a c = CFP a
c = AMTFN i c = 0TN
47
Feature Engineering
Raw Features
48
Feature Engineering
Transaction aggregated features
49
Feature Engineering
Periodic Features
50
Feature Engineering
Social Networks Analysis
51
Finally - Some Models
Data
Large European Card Processing company
2012 & 2013 card present transactions
20 Million transactions
40,000 frauds
2 Million Euros in losses in the test set
52
Finally - Some Models
Algorithms
Fuzzy Rules
Neural Networks
Naive Bayes
Random Forests
Random Forests with Cost-Proportonate Sampling
Cost-Sensitive Random Patches Decision Trees
53
Finally - Some Models
54
Takeaways
55
How could you learn more?
56
How could you learn more?
57
How could you learn more?
58
Embrace open-source
59
Support open-source
60
Modern
Data
Scientist
The sexiest job of
the 21th century
61
Thank You!
@albahnsen
albahnsen.com
62

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Modern Data Science