In my opinion, two important ways we can measure the quality of questions are:
- Was the question well received by the community? Proxies for this would be the question's score and whether or not it's closed.
- Was the question useful to the world at large? A proxy for this would be the question's view count.
Limiting to the 9.12 million questions in the Stack Exchange Data Explorer with a question score of at least 0 and that are not closed, we can look at the distribution of the score and view count (note the log scale on both axes):
The questions returned by the query are concentrated at score 0 (the bottom row of hexagons) and view count of roughly 100. In total, 1.96 million questions (21%) have score 0 and no more than 100 views, and 4.13 million questions (45%) have score 0 and no more than 1,000 views.
Summarizing, about 850k questions are closed or have negative score, and nearly 2 million additional questions have score 0 and no more than 100 views. While some of these low-score, low-view questions may be in low-traffic tags or may have been posted quite recently, I think the data show that there's a sizable number of questions that haven't been well received by the SO community or the world at large.
I grabbed the number of questions with each score/view count combination from the Stack Exchange Data Explorer with the following query:
SELECT ROUND(LOG10(ViewCount+1)*100, 0)/100, Score, COUNT(*) from Posts
WHERE PostTypeId=1 AND ClosedDate IS NULL
GROUP BY ROUND(LOG10(ViewCount+1)*100, 0)/100, Score;
The rounding of the (log-transformed) view count ensures that the query returns fewer than 50,000 rows, the limit for the Stack Exchange Data Explorer. Storing the query result in
dat.csv, I ran the following R code to process the data:
# Read data, transforming so we have one row per question
dat <- read.csv("dat.csv", stringsAsFactors=FALSE)
dat[,1] <- round(10^(dat[,1])-1)
names(dat) <- c("ViewCount", "Score", "Count")
dat <- dat[rep(1:nrow(dat), dat$Count), c("ViewCount", "Score")]
dat <- dat[dat$Score >= 0,]
# Plot view count vs. score
print(ggplot(dat, aes(x=ViewCount+1, y=Score+1)) + stat_binhex(bins=15) +
scale_x_log10("Number of Views (plus one)", breaks=10^(0:6), labels=c("1", "10", "100", "1k", "10k", "100k", "1m")) +
scale_y_log10("Score (plus one)", breaks=10^(0:4), labels=c("1", "10", "100", "1k", "10k")) +
# Summarize questions with low views and score
sum(dat$Score == 0 & dat$ViewCount <= 100)
mean(dat$Score == 0 & dat$ViewCount <= 100)
sum(dat$Score == 0 & dat$ViewCount <= 1000)
mean(dat$Score == 0 & dat$ViewCount <= 1000)