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12008466
Data Mining from Big Data 4V-s
Description
For more information check out the course HKPolyUx: ISE101x Knowledge Management and Big Data in Business on edx.org https://courses.edx.org/courses/course-v1:HKPolyUx+ISE101x+3T2017/course/
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big data
data mining
big data
Mind Map by
Prohor Leykin
, updated more than 1 year ago
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Created by
Prohor Leykin
almost 7 years ago
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Resource summary
Data Mining from Big Data 4V-s
Volume - the simpliest
High dimensions
Large number of records
New sources
Velocity harder
Interaction with a customer
Capture data, learn and act
Enhance customer's journey
Iteratively improve user expericence
Variety - the hardest
Number of data owners exploded
Value
KYC (know your customer)
Difficult for internet companies - never sees customers
Being able to exploit all the data available
Age of analythics
Access to Data
SQL
Look-up a few records
Populate standard report
OLAP, mining
Create new report
Data Mining
Locate a problem
Optimize business process
Answer a tough question
Understand something new
Finding interesting structure in data
Interesting patterns
Segmentation, data clustering
Predictive models
Classification, regression
Hidden relations
Affinity (summarization) - relation between fields, associations
Work for Data scientist
Understands business needs
Able to close those gaps
Algorithms
Knows more about statistics than programmer
Data logic
Knows more about programming, than statistician
Technologies
Summarization
Variable corellation
Frequent itemsets
Association rules
Clustering
Distance
Partition
Sequence analysis
Classification / prediction
Decision trees
Neural networks
Bayers nets
Regression
Support vector machines
But
End user is not a statistician
Lack data warehousing expertise
IT focus is to keep running
Building data warehouse is too expensive
Proliferating analytics throughout the organization
Make every part of business smarter
Embedding analytics into every area
Significant business value
Acquire and enhance actions
Marketing and sales
Identify potential customer
Establish campaign effectiveness
Manufacturing process
Causes of manufacturing problems
Customer behaviour
Affinities, propensities
Fraudulent transaction detection
Loan approval
Establish credit worthiness of customer
Web analytics and metrics
Model user preferences
Recommendation, targeting
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