outcome and treatment variables, any variable that is used for identification
(e.g., an instrumental or forcing variable), or anything that really stands out.
Generally, a good rule of thumb is to keep the discussion of the descriptive
statistics to a few sentences.
The second such mistake is the use of the past tense in discussing the
data and descriptive statistics. The example above stated how “37.4 percent
of respondents are female,” and not how “37.4 percent of respondents were
female.” Scientific communication in English is more effective when using
the present tense to discuss your data or results, and just as you should
avoid the passive voice, you should also avoid the past tense in research
papers, except when summarizing and concluding. Indeed, the past tense
should be largely kept for when you discuss what other researchers have
done before you, and the future tense for what you are planning on doing or
what others should be doing in the future. The present tense is ideal because
it refers to that which occupies the reader right now, which is your paper.
5
Finally, another mistake is to present numbers that either have too many
decimal places because they are too small (usually, three decimal places is
more than enough, and at any rate it is always possible to rescale a variable
to make its magnitude fit with that of the other variables) or to present
numbers that are difficult to interpret in tables, such as 1.37
e + 8, or
anything other than units readers are used to dealing with (for instance, it is
always possible to express a dollar amount in thousands or hundreds of
thousands if need be). In other words, even if the empirical work regresses
the logarithm of income on the treatment variable, the table of descriptive
statistics should report the mean of the income level, not the mean of the
logarithm of income. Ultimately, although a lot of what goes into a Data
and Descriptive Statistics section might seem like useless posturing, as
stated before, a good Data and Descriptive Statistics section should allow
the reader to form reasonable expectations about the sign and the magnitude
of the estimates of interest, and to get an idea of how those estimates are
likely to vary across a given conditioning domain.
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