Lecture 7- Observational Methods 1 Flashcards

1
Q

Why use observational methods

A
  • Questionnaires of limited applicability
  • Apparatus limits generalisability
  • Context dependent behaviour where context may be difficult to replicate
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2
Q

What are the steps of an observational stream

A
  • Observe informally
  • Choose measures
  • Chose recording method
  • Collect analyse data
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3
Q

What are the steps of an experimental stream

A
  • Hypothesis
  • Predict
  • Design
  • Experiment
  • Analyse
  • Interpret
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4
Q

Advice for science

A
  • Ask questions
  • Observe informally
  • Chose measures
  • Don’t code for behaviour that isn’t relevant to your question
  • Balance what you want vs what you can do
  • When and how do you sample your behaviour
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5
Q

Define the measures with either

A
  • Operational definitions, specify the physical requirements for coding a behaviour
  • Ostensive definitions, provide examples through pictures or descriptions
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6
Q

Classify your measures as either

A
  • Events, short duration occurrence

- States, long duration event (sleep)

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7
Q

Types of measures

A
  • Latency, how long the subject takes to respond
  • Frequency, countable number
  • Rate, frequency per unit time
  • Duration, single occurrence time
  • Proportion
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8
Q

Scales of measurement

A
  • Non-parametric statistics

- Parametric statistics

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9
Q

Types of non-parametric statistics

A
  • Nominal (categorical)

- Ordinal (ranking)

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10
Q

Types of parametric statistics

A
  • Interval (0 is arbitrary, does not mean not there, temp)

- Ratio-interval (continuous)

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11
Q

Types of sampling rules

A
  • Ad libitum
  • Focal sampling
  • Scan sampling
  • Behaviour sampling
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12
Q

What’s ad libtum

A

+Preferred method for preliminary observations
+Useful for rare, important events
-Tends to miss rare events of short duration
-Underestimates contribution of smaller subjects

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13
Q

What’s focal sampling

A

+Specific individual is isolated for observation

-Cab be large if focal subject seeks privacy for certain behaviour

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14
Q

What’s scan sampling

A

+A number of individuals is sampled (typically an entire group)

  • Conspicuous events are overestimated
  • Rare events underestimated
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15
Q

What’s behaviour sampling

A

+Aka all occurrence sampling

-Overestimation of rare events

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16
Q

What are types of recording rules

A
  • Time sampling, can underestimate rare behaviours

- Continuous recording, underestimate long duration behaviours

17
Q

Coding scheme is a

A

Measuring instrument

18
Q

Principles of measurement

A
  • No such thing as perfect measurement
  • Measurements are more or less accurate
  • Measurements are more or less precise
19
Q

What is intra observer reliability

A

The same observer coded the same behavioural record at different times

20
Q

What’s inter observer reliability

A

The different observers independently coded the same behaviour

21
Q

Consensus estimates are based on the assumption

A

That 2 or more coders can come to exact agreement, typically used on nominal data

22
Q

Consistency estimates are based on the assumption

A

That it is unnecessary for 2 or more coders to interpret a scale identically, typically ordinal or continuous data

23
Q

Types of consensus measurement

A
  • Percent agreement, does not correct for agreement by random chance
  • Cohen’s kappa, proportion of agreement after corrections by random chance
24
Q

Types of consistency measures

A
  • Correlation coefficient, doesn’t take into account variance between coders
  • Cronbach’s a, Corrects for variance between coders
25
Q

How does Cohen’s Kappa work

A
  • Convert frequencies to proportions as the first step
  • K= Pa - Pc/ 1 - Pc
  • Pa is proportion of agreement
  • Pc is expected proportion of agreement
26
Q

When is kappa value good enough

A
  • 0.41< good agreement
  • 0.61< substantial agreement
  • 0.81 < near perfect agreement