Hi Scott,

If you are speaking about modern imputation techniques, such as Bayesian 
multiple imputation, then I am afraid your initial assumption is wrong.  The 
particular value imputed has no predictive value for how the person would have 
responded, and indeed, should never be interpreted as such (that's Nostradamian 
imputation, if I am right...).  The reason for imputing is to allow for all of 
the observed data to be analyzed.  Any particular value that is imputed is only 
meant to preserve the characteristics of the variance-covariance matrix and 
mean vector, not to be interpreted.  That's why a critical aspect of Bayesian 
multiple imputation is the third phase wherein we estimate the within and 
between database error provided by the imputed values, then decrease the 
significance based on treating our imputed values as though they were real in 
the analysis phase.  

Jason

____________________________________

Jason C. Cole, PhD
Senior Research Scientist & President
Consulting Measurement Group, Inc.
Tel:?? 866 STATS 99 (ex. 5)
Fax:  310 539 1983
2390 Crenshaw Blvd., #110
Torrance, CA 90501
E-mail: [email protected]
web: http://www.webcmg.com           
____________________________________


-----Original Message-----
From: [email protected] 
[mailto:[email protected]] On Behalf Of Scott Ferson
Sent: Thursday, February 15, 2007 3:34 PM
To: [email protected]
Subject: [Impute] interval statistics (the un-imputation)


If an imputation is an intelligent guess about the value of a missing 
piece of information, this list might be interested in related methods 
that refrain from making any guesses at all about the missing 
information. A draft report on "interval statistics" is available at 
http://www.ramas.com/intstats.pdf that reviews basic descriptive 
statistics for data sets that contain intervals (rather than exclusively 
point values).  It reviews methods to compute basic univariate 
descriptive statistics, including various means, the median and 
percentiles, variance, interquartile range, moments, confidence limits, 
and introduces the prospects for analyzing such data sets with the 
methods of inferential statistics such as outlier detection and 
regressions.  The report also explores the trade-off between measurement 
precision and sampling effort in statistical results that are sensitive 
to both, and considers the use of interval statistics as an alternative 
approach for the field of metrology.

I'd be very interested to hear your thoughts about this topic, including 
arguments that imputation procedures that generate specific values are 
better than interval statistics methods that don't.

Best regards,
Scott



Scott Ferson [email protected]
Applied Biomathematics
1-631-751-4350



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