Browsing the list of unanswered JasperReports questions reveals a trend: most people don't provide enough information to answer their question, which results in their problem being ignored, down-voted, or--in time--closed. When asking questions about reports, any of the following key pieces of information would increase the odds of getting an answer:
- The XML code for the JasperReport template that isn't working.
- Any exceptions (stack traces) or error messages that appear.
- Pictures of what the report is doing vs. what they want it to do.
- A minimal working example that demonstrates the problem.
Although I have no data, it seems to be the case that ignoring, down-voting, or immediately closing the question causes the person to "go away" and not come back, which is neither supportive nor helpful, nor useful for any Googlers who hit upon similar keywords.
It would be nice if there was a way to inform the user upon submitting a question that there is probably insufficient information included for anyone to provide a helpful answer.
The easiest way would be to detect for the presence (or lack thereof) of a JasperReports template (some XML code) and when the user clicks Post Your Question, prompt them with a warning. It would be great if the warning included an example of a question that will increase the likelihood of their problem getting answered. The warning would have a Continue Anyway button for those who opt to ignore the warning or a Revise Question button that allows the user to provide more information in the question.
This could be broadly applicable.
It is evident that few people read the FAQ or help (and if they do, they might not understand it due to language issues). In other words, it's a waste of time for people who frequent that tag to prompt authors of questions with, "Show code. Add examples. What's the error?" when there are ways to guide people into asking answerable questions.
Answerable Question Metrics
You could probably calculate the odds of asking an answerable question based on quantifiable, weighted metrics. Here are some examples--not authoritative or exhaustive or even necessarily useful--that are meant to stimulate conversation about the types of feasible metrics that could be measured (if any exist):
- how many questions the user has asked previously
- how many answered questions the user has asked
- word count
- inclusion of code
- inclusion of images
- the word "error" without either substring of "Exception" or "Trace"
- whether the user has read the FAQ and/or minimum working examples link
- (this could be improved by adding an example MWE on a per-tag basis)
- how well the English grammar parses
and other metrics. Given the vast amount of data in this tag alone, it'd be interesting to perform an analysis of what makes for an answerable question to see if there are any commonalities. This analysis might be possible to perform across a variety of tags so that every analyzed tag could include it's own question-to-answerable ratio metric. That would allow a fuzzily-quantifiable indicator to appear, much like a password strength measure, that informs the person of the likelihood that their question can be answered.
Machine Learning and Heuristics
Another approach to this problem, which eliminates the need for human-defined weightings based on hypothetical metrics, is to apply machine learning, similar to how Google killed spam.
Use machine learning to calculate the probability of their question being answered. If the probability falls below 40%, don't let new users submit without more details. StackOverflow has so much training data that a neural network should be adept at performing this analysis.