Lecture 5: Diagnostic Data Analytics Flashcards

1
Q

Quantitative Models contain:
- ? variables:
> ? variables that can help you make decisions.
> move ? and affect the movement of dependent variables.
- ? variables: included in the model to avoid ?, not relevant to decision making.
- One can’t include all possible variables in her model
=> ? variables: cause errors
- result variable

A

Quantitative Models contain:
- independent variables:
> decision variables that can help you make decisions.
> move before and affect the movement of dependent variables.
- control variables: included in the model to avoid bias, not relevant to decision making.
- One can’t include all possible variables in her model
=> uncontrollable variables: cause errors
- result variable

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2
Q

Algorithm: ?, ? steps

A

Algorithm: patterns, repeated steps

e.g. I know I’m a morning person because I look at my repeated routines and find out I’m the happiest when I wake up early.

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3
Q

Heuristics: finding a good enough solution using ?

e.g. try to drive as fast and as safe as possible while still complying to the rules.

A

Heuristics: finding a good enough solution using rules

e.g. try to drive as fast and as safe as possible while still complying to the rules.

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4
Q

Certainty:

  • assume ? knowledge
  • all ?? are known
  • no surprises!
A

Certainty:

  • assume complete knowledge
  • all potential outcomes are known
  • no surprises!
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5
Q

Uncertainty:

  • ? outcomes for each decision
  • ? of each outcome is unknown
A

Uncertainty:

  • several outcomes for each decision
  • probability of each outcome is unknown
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6
Q

Risk analysis (? decision making):

  • ? of each outcome is known
  • level of ? => Risk (? value)
A

Risk analysis (Probabilistic decision making):

  • probability of each outcome is known
  • level of uncertainty => Risk (expected value)
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7
Q

Simulation: often used in ?? analysis

A

Simulation: often used in what-if analysis

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8
Q

?: a way of numerically quantifying the relationship between 2 variables.

  • variables are highly correlated if the coefficient is > ? (?)
A

Correlation: a way of numerically quantifying the relationship between 2 variables.

  • variables are highly correlated if the coefficient is > 0.8 (80%)
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