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Feature Engineering
HJ van Veen - Data Scientist at Nubank
Feature Engineering
• Better data beats big data

• Applied Machine Learning is data infra,
feature engineering, modeling

• Feature engineering is turning your
data into something a model
understands

• Creativity, Inquisitive, Agility
Feature Types
Categorical "female", "teacher_ID_115"
Numbers -0.734, 58, 71165.80
Temporal 21-12-2012, 18:15, "Domingo"
Spatial "Guarujá", latitude:51.865
Text "<h1>Eu falo português!</h1>"
Images Grayscale, .jpg
Onehot Encoding
• Encode k variables into a one-of-k
array sized k

• Bag of words

• Linear algorithms and neural networks

• “NL” -> one_of_k(“NL”) -> [0, 0, 0, 1]
Hash Encoding
• Encode k variables into a one-of-h
array sized h

• Collisions

• Fast & Memory-friendly

• “NL” -> hash(“NL”) -> [0, 0, 1]
Label Encoding
• Give k variables a unique numerical ID

• Tree-based algorithms

• Dimensionality friendly

• "NL" -> unique_id("NL") -> [3]
Binary Encoding
• Uses binary representation of label ID

• Can encode over 4 billion categoricals
into 32 bits

• "NL" -> 

binary(unique_id("NL")) -> 

[1, 0, 1, 1, 1, 1, 1]
Count Encoding
• Replace variable with its count in the
train set

• Captures popularity of the variable

• "NL" -> 

count_in_train(“NL”) -> 

[5]
Rank Count Encoding
• Uniquely rank a variables count in train
set

• Avoid collisions and outliers

• "NL" -> 

rank(count_in_train(“NL”)) -> 

[7]
Likelihood Encoding
• Replace variable by its target average

• Avoid overfit

• "NL" -> 

mean_of_target(“NL”)) -> 

[0.66]
Embedding Encoding
• Use a model to create an embedding

• Faster & More memory friendly

• “NL”, “F” -> 

nn_embed([“NL”, “F”])) -> 

[0.66, 0.71, 0.05]
Numbers
• Imputation

• Binning, Rounding, Log-transforms

• Categorical encoding
Temporal
• Day of Week, Hour of day

• Trends

• Proximity to major events
Spatial
• Proximity to major cities

• Kriging, Clustering

• Fraud signals
Text
• TFIDF

• n-Grams

• Reducing dimensionality
Images
• Resize

• Rotate, skew, whiten

• Aggregate statistics
Missing
• Imputing

• Hardcoding

• Ignoring
Consolidation
• Common & Rare

• Spelling errors

• Cleaning
Expansion
• User agents

• Emails

• Hierarchical codes
Interactions
• Hardcode interactions

• Division, Multiplication, Addition,
Substraction, Combination, Similarity

• Tools & Processes
Aggregate statistics
• Row & Column Statistics

• Counts

• Reading level
• Blacklist membership
Scaling
• Log transforms

• MinMax Scaling

• Z-Scoring / Standard Scaling
Meta-features
• Unsupervised

• Model stacking

• Feature stacking
Case Study
• Predict fraudsters from “name” and “email” form

• Expansion
• Temporal

• Aggregate Statistics
• Randomness

• Interactions
Conclusion
• Use XGBoost

• Label encode categorical variables

• Impute NaNs with -999, and set missing
parameter

• Use subsampling to quickly test new variables
• Try everything until you reach a plateau or
deadline

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