Summary lecture 1, Emperical research project for IB

Lecture 1:

The research question consists of:

  • Starts with the research question
  • Theory/literature
  • Hypothesis: testable prediction
  • Then we can define the main variables (dependent and independent variable)
  • Then you need to collect data (measurement)
  • Analyze data (graphically/descriptively)
  • Fit a model
  • Conclusion

Measurment: a relationship between the numbers and what is being measured. You can measure variables in different kind of ways. Important to consider:

  1. What do you really want to measure
  2. What is your research question

Basic issues in measurement:

  1. Validity: extent to which a measure correctly represents the concept of a study (refers to the study not a specific variable
  • Internal validity:  how well the study was done
  • External validity: generalize results to other situations
  1. Accuracy: is the measure close to the actual value and did you get the right answer on average?
  2. Reliability: extent to which a variable is consistent in what it is intended to measure

It is important to measure the right thing and be clear about what you measure

Organize your data:

  • Cross sectional: observations at a given points or time
  • Time series
  • Panel: both cross sectional and time-series dimensions (over a period of time)

Article Hult et al:

  • Focus on why do some firms outperform others
  • Performance is important variable (often DV)
  • Inconclusive results about determinants of performance
  • Conclusions depends on the measurement of performance
  • No systematic investigation as to how IB research measures performance (contribution)
  • They examine the measurement of performance
  • They do that in 96 articles published in the journal between 1995 and 2005
  • More specifically: they asses the measurement of performance in 3 dimenstions:
  1. Type of data source
  2. Type of measure
  3. Level of analysis
  • What did they find: Most studies do not measure performance in a manner that captures the multifacted nature of the construct
  • We describe the implications of these results and offer suggestions for improving future practice (present non binding guidelines)-what they do with their findings

Questions the researcher has to deal with:

  • What do you want to measure
  • What kind of data to use:
  1. Primary data: collected by researcher à time consuming, but original
  2. Secondary dataL collected by other agencies; cheap, but lacks originality and may not be fitting to the research question
  • How should we measure performance, because you can measure the same thing in different ways
  1. Financial performance: reflects economic goals
  2. Operational performance: non financial, like innovation, productivity and satisfaction
  3. Overall effectiveness: e.g. reputation (related to both)
  • Which level of analysis to focus on (remember external validity):
  1. Firm
  2. Strategic business unit (SBU)
  3. Inter-organizational unit (cannot be found in Hult et al)
  4. In general at very different levels, country, region, industry, firm etc.

Why do all they matter: potentially different results and conclusions. The importance of the measurement

But: Is one right and the other wrong. Should we all agree on a single measure to use? So which one to choose? It depends on the research question

Tip:

  • Be clear about what you want to do
  • Choose the appropriate measure for your analysis
  • Justify your decision
  • Be clear about you limitations

Selection bias:

  • Be careful about the interpretation of your result and be careful about what conclusion you draw.
  • Can compare with another sample

Endogeneity:

  • Correlation between regressor and error term
  • Reasons: measurement error, omitted variable (any variable that is not included as dependent variable but could influence the dependent variable) and reverse causality (causality that is not really causality)
  • Standard OLS estimate biased
  • There are solutions

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Very clear summary!

Hi Aline,

I see that you made a very clear summary of the lecture about empirical research. The way you summed up everything is visually very pleasing and makes it all cristal clear. Thank you! However, I do notice a "à" letter so now and then. Could you explain what it means?

Hey Floortje, 

Hey Floortje, 

Thank you for your question! It is supposed to be a colon (:). I adjusted it in the document.

Greetings Aline

Hi Aline

Hi Aline,

Thank you for your quick reply and explanation. It is clear to me now, thanks!

Greetings,

Floortje

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