About Data Science Flashcards

1
Q

Analytics

A

Based on exploring potential future events. You look for patterns

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2
Q

Qualitative analytics

A

Intuition + analysis

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3
Q

Quantitative analytics

A

Formulaes + algorithm

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4
Q

Data Science

A

Valt buiten business analytics: Gaat om verbeteringen maar niet op basis van je bedrijfsdata

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5
Q

Data Analytics

A

Valt buiten business analytics: Gaat om verbeteringen op basis van je data maar is buiten je bedrijfsdata

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6
Q

Business Intelligence

A

Aims to explain past events using business data. It is a PRELIMINARY STEP of predictive analytics.

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7
Q

First steps in data process

A

Data collection
Process that info
Pre-processing into workable format
Labeling (numerical, categorical)
Data cleansing

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8
Q

Data shuffling

A

Prevents unwanted patterns by randomizing the data

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9
Q

When do you know data is big data?

A

When looking at the graph you see that data is not stored in a way that is easy to oversee

When seeing a lot of lines intersect you are probably dealing with big data

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10
Q

METRIC

A

MEASURE + BUSINESS MEANING

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11
Q

KPI’s (Key Performance Indicators)

A

Metrics + business objectives

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12
Q

Example Metric vs KPI:

A

Metric: Traffic of a page from your website that was visited by any type of user

KPI: Traffic generated only from users who have clicked on a link provided in you ad campaign

So KPI is more specific

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13
Q

After business intelligence phase?

A

Predictive analytics –> Future outcomes

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14
Q

Regression

A

A model used for quantifying causal relationships among the different variables included in you analysis

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15
Q

Bow analogy (finding the best way to use the bow)

Model:

Data:

Target:

Optimization algorithm:

A

Model: The usage of the bow

Data: Quiver of arrows (they are all arrows but they differ a lot)

Target: Objective function (calculate how for from target)

Optimization algorithm: Mechanics that will improve the model’s performance (posture/how it holds the bow, etc.)

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16
Q

Supervised learning

A

Training the algorithm resembles a teacher supervising her students

17
Q

Unsupervised learning

A

When not having the time or resouces

18
Q

Supervised and unsupervised data working together in bow example

A

Shoot a million arrows (which you don’t have time for to analyse)

Divide results into clusters

Use example of those clusters to determine the targets for those type of arrows

Run a supervised test to analyse the mechanics (previous bit)

19
Q

Example Qualitative vs. Quantitative analysis

A

Qualitative analysis: BI

Quantitative analysis: SWOT –> Because NOT data driven