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replaced http://meta.stackexchange.com/ with https://meta.stackexchange.com/
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To be honest, we figured someone was doing this, based on the similar kinds of comments being flagged. It's interesting work, but I wonder if it's being applied in the right direction.

It should be noted that the baseline for accepting "obsolete" comment flags on Stack Overflow is 95%, so those are going to be deleted with a high frequency anyway. I bet the same could be said for pure "not constructive" comments, but Jon lumped in "other" comment flags with those in his analysis. I know that we decline "other" comment flags at a much higher rate, because many people use them improperly to flag comments they think are technically incorrect.

I think a better direction for this would be to try to identify "rude or abusive" comments with a high rate of success. I don't really care if a few extra "thanks, that worked well" style comments hang around, but I do want to know if people are being insulted and move on that right away. According to Jon, we have only an 80% accept rate on those, so it would be much easier to see if machine learning could flag those better than the average community member.

While I do appreciate the intent and design of your flagging system, going after slightly noisy but complimentary comments isn't my highest priority as a moderator. There has to be a better way for the community to handle these, or to even hide them intelligentlyhide them intelligently, instead of requiring moderators to step in for each one.

To be honest, we figured someone was doing this, based on the similar kinds of comments being flagged. It's interesting work, but I wonder if it's being applied in the right direction.

It should be noted that the baseline for accepting "obsolete" comment flags on Stack Overflow is 95%, so those are going to be deleted with a high frequency anyway. I bet the same could be said for pure "not constructive" comments, but Jon lumped in "other" comment flags with those in his analysis. I know that we decline "other" comment flags at a much higher rate, because many people use them improperly to flag comments they think are technically incorrect.

I think a better direction for this would be to try to identify "rude or abusive" comments with a high rate of success. I don't really care if a few extra "thanks, that worked well" style comments hang around, but I do want to know if people are being insulted and move on that right away. According to Jon, we have only an 80% accept rate on those, so it would be much easier to see if machine learning could flag those better than the average community member.

While I do appreciate the intent and design of your flagging system, going after slightly noisy but complimentary comments isn't my highest priority as a moderator. There has to be a better way for the community to handle these, or to even hide them intelligently, instead of requiring moderators to step in for each one.

To be honest, we figured someone was doing this, based on the similar kinds of comments being flagged. It's interesting work, but I wonder if it's being applied in the right direction.

It should be noted that the baseline for accepting "obsolete" comment flags on Stack Overflow is 95%, so those are going to be deleted with a high frequency anyway. I bet the same could be said for pure "not constructive" comments, but Jon lumped in "other" comment flags with those in his analysis. I know that we decline "other" comment flags at a much higher rate, because many people use them improperly to flag comments they think are technically incorrect.

I think a better direction for this would be to try to identify "rude or abusive" comments with a high rate of success. I don't really care if a few extra "thanks, that worked well" style comments hang around, but I do want to know if people are being insulted and move on that right away. According to Jon, we have only an 80% accept rate on those, so it would be much easier to see if machine learning could flag those better than the average community member.

While I do appreciate the intent and design of your flagging system, going after slightly noisy but complimentary comments isn't my highest priority as a moderator. There has to be a better way for the community to handle these, or to even hide them intelligently, instead of requiring moderators to step in for each one.

replaced http://meta.stackoverflow.com/ with https://meta.stackoverflow.com/
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To be honest, we figured someone was doing this, based on the similar kinds of comments being flagged. It's interesting work, but I wonder if it's being applied in the right direction.

It should be noted that the baseline for accepting "obsolete" comment flags on Stack Overflow is 95%the baseline for accepting "obsolete" comment flags on Stack Overflow is 95%, so those are going to be deleted with a high frequency anyway. I bet the same could be said for pure "not constructive" comments, but Jon lumped in "other" comment flags with those in his analysis. I know that we decline "other" comment flags at a much higher rate, because many people use them improperly to flag comments they think are technically incorrect.

I think a better direction for this would be to try to identify "rude or abusive" comments with a high rate of success. I don't really care if a few extra "thanks, that worked well" style comments hang around, but I do want to know if people are being insulted and move on that right away. According to Jon, we have only an 80% accept rate on those, so it would be much easier to see if machine learning could flag those better than the average community member.

While I do appreciate the intent and design of your flagging system, going after slightly noisy but complimentary comments isn't my highest priority as a moderator. There has to be a better way for the community to handle these, or to even hide them intelligently, instead of requiring moderators to step in for each one.

To be honest, we figured someone was doing this, based on the similar kinds of comments being flagged. It's interesting work, but I wonder if it's being applied in the right direction.

It should be noted that the baseline for accepting "obsolete" comment flags on Stack Overflow is 95%, so those are going to be deleted with a high frequency anyway. I bet the same could be said for pure "not constructive" comments, but Jon lumped in "other" comment flags with those in his analysis. I know that we decline "other" comment flags at a much higher rate, because many people use them improperly to flag comments they think are technically incorrect.

I think a better direction for this would be to try to identify "rude or abusive" comments with a high rate of success. I don't really care if a few extra "thanks, that worked well" style comments hang around, but I do want to know if people are being insulted and move on that right away. According to Jon, we have only an 80% accept rate on those, so it would be much easier to see if machine learning could flag those better than the average community member.

While I do appreciate the intent and design of your flagging system, going after slightly noisy but complimentary comments isn't my highest priority as a moderator. There has to be a better way for the community to handle these, or to even hide them intelligently, instead of requiring moderators to step in for each one.

To be honest, we figured someone was doing this, based on the similar kinds of comments being flagged. It's interesting work, but I wonder if it's being applied in the right direction.

It should be noted that the baseline for accepting "obsolete" comment flags on Stack Overflow is 95%, so those are going to be deleted with a high frequency anyway. I bet the same could be said for pure "not constructive" comments, but Jon lumped in "other" comment flags with those in his analysis. I know that we decline "other" comment flags at a much higher rate, because many people use them improperly to flag comments they think are technically incorrect.

I think a better direction for this would be to try to identify "rude or abusive" comments with a high rate of success. I don't really care if a few extra "thanks, that worked well" style comments hang around, but I do want to know if people are being insulted and move on that right away. According to Jon, we have only an 80% accept rate on those, so it would be much easier to see if machine learning could flag those better than the average community member.

While I do appreciate the intent and design of your flagging system, going after slightly noisy but complimentary comments isn't my highest priority as a moderator. There has to be a better way for the community to handle these, or to even hide them intelligently, instead of requiring moderators to step in for each one.

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Brad Larson Mod
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To be honest, we figured someone was doing this, based on the similar kinds of comments being flagged. It's interesting work, but I wonder if it's being applied in the right direction.

It should be noted that the baseline for accepting "obsolete" comment flags on Stack Overflow is 95%, so those are going to be deleted with a high frequency anyway. I bet the same could be said for pure "not constructive" comments, but Jon lumped in "other" comment flags with those in his analysis. I know that we decline "other" comment flags at a much higher rate, because many people use them improperly to flag comments they think are technically incorrect.

I think a better direction for this would be to try to identify "rude or abusive" comments with a high rate of success. I don't really care if a few extra "thanks, that worked well" style comments hang around, but I do want to know if people are being insulted and move on that right away. According to Jon, we have only an 80% accept rate on those, so it would be much easier to see if machine learning could flag those better than the average community member.

While I do appreciate the intent and design of your flagging system, going after slightly noisy but complimentary comments isn't my highest priority as a moderator. There has to be a better way for the community to handle these, or to even hide them intelligently, instead of requiring moderators to step in for each one.