As far as visualization, I know this is not the periodic sampling you are talking about, but I would look at all the rows for a user and choose an interval bucket, SUM within the buckets and show on a bar graph or similar. This would show a real "distribution", since many occurrences within a time frame may be significant.
SELECT DATEADD(day, DATEDIFF(day, 0, timefield), 0) AS bucket -- choose an appropriate granularity (days used here)
,COUNT(*)
FROM entries
WHERE uid = ?
GROUP BY DATEADD(day, DATEDIFF(day, 0, timefield), 0)
ORDER BY DATEADD(day, DATEDIFF(day, 0, timefield), 0)
Or if you don't like the way you have to repeat yourself - or if you are playing with different buckets and want to analyze across many users in 3-D (measure in Z against x, y uid, bucket):
SELECT uid
,bucket
,COUNT(*) AS measure
FROM (
SELECT uid
,DATEADD(day, DATEDIFF(day, 0, timefield), 0) AS bucket
FROM entries
) AS buckets
GROUP BY uid
,bucket
ORDER BY uid
,bucket
If I wanted to plot in 3-D, I would probably determine a way to order users according to some meaningful overall metric for the user.