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I think the most obvious insight (to me) might be that our approach to this and yours might be different. Our goal is to try to nip low-quality stuff in the bud to keep it from repelling our best contributors, which means we want to feed low-quality questions to the review queue as they come in, rather than letting them occupy valuable real estate in place of better questions. Obviously we have access to the system in a way that you don't, and that can affect our respective models. I'm curious to see what you come up with, though. We'd be happy to take a close look at anything that would help us accomplish our goals.

Where we have spent most of our time thus far is modeling, although now we're actually writing code. At the beginning, we tried doing semi-manual training using the Accord Framework (which is fairly a complete statistical/ML framework for .NET). We then discovered that for purely modeling purposes, vowpal wabbit is much more productive. You still have to do your own feature extraction, but vowpal makes it very easy to train once you have your data. Most of our modeling has been with one-against-all classification with the default squared-error loss function, although we've tried out models with binary logistic regression as well. See Vowpal Wabbit inverted_hash option produces empty output, but why?Vowpal Wabbit inverted_hash option produces empty output, but why? for some OAA vs binary results that I thought a bit unexpected.

We are only looking at information contained in a new post to do our scoring. That means we are not taking any kind of user information into account - for one, we don't want to bias for or against a particular type of user. To paraphrase a famous line, "We want the scoring to based not on the color of the user's avatar, but on the content of their question." Anyway, this is more restrictive than it sounds at first. Brand-spanking-new posts have only a title, the body, and tags. There is no post history, there are no comments, and we don't consider who the user is.

I suggest that you try to make small models (e.g., < 500 features). We found that after a few hundred features, accuracy didn't go up much with more features (I have a model with < 100 features that performs only 2% worse than other models with thousands on certain test sets). Small models are much easier to work with, so you won't loose as much time to dataslinging.

The only other things I can think of at the moment are just general ML advice: clean your data, make sure your test/validation sets make sense and aren't overlapping, etc.

Good luck! I'll add to this if I think of anything else.

I think the most obvious insight (to me) might be that our approach to this and yours might be different. Our goal is to try to nip low-quality stuff in the bud to keep it from repelling our best contributors, which means we want to feed low-quality questions to the review queue as they come in, rather than letting them occupy valuable real estate in place of better questions. Obviously we have access to the system in a way that you don't, and that can affect our respective models. I'm curious to see what you come up with, though. We'd be happy to take a close look at anything that would help us accomplish our goals.

Where we have spent most of our time thus far is modeling, although now we're actually writing code. At the beginning, we tried doing semi-manual training using the Accord Framework (which is fairly a complete statistical/ML framework for .NET). We then discovered that for purely modeling purposes, vowpal wabbit is much more productive. You still have to do your own feature extraction, but vowpal makes it very easy to train once you have your data. Most of our modeling has been with one-against-all classification with the default squared-error loss function, although we've tried out models with binary logistic regression as well. See Vowpal Wabbit inverted_hash option produces empty output, but why? for some OAA vs binary results that I thought a bit unexpected.

We are only looking at information contained in a new post to do our scoring. That means we are not taking any kind of user information into account - for one, we don't want to bias for or against a particular type of user. To paraphrase a famous line, "We want the scoring to based not on the color of the user's avatar, but on the content of their question." Anyway, this is more restrictive than it sounds at first. Brand-spanking-new posts have only a title, the body, and tags. There is no post history, there are no comments, and we don't consider who the user is.

I suggest that you try to make small models (e.g., < 500 features). We found that after a few hundred features, accuracy didn't go up much with more features (I have a model with < 100 features that performs only 2% worse than other models with thousands on certain test sets). Small models are much easier to work with, so you won't loose as much time to dataslinging.

The only other things I can think of at the moment are just general ML advice: clean your data, make sure your test/validation sets make sense and aren't overlapping, etc.

Good luck! I'll add to this if I think of anything else.

I think the most obvious insight (to me) might be that our approach to this and yours might be different. Our goal is to try to nip low-quality stuff in the bud to keep it from repelling our best contributors, which means we want to feed low-quality questions to the review queue as they come in, rather than letting them occupy valuable real estate in place of better questions. Obviously we have access to the system in a way that you don't, and that can affect our respective models. I'm curious to see what you come up with, though. We'd be happy to take a close look at anything that would help us accomplish our goals.

Where we have spent most of our time thus far is modeling, although now we're actually writing code. At the beginning, we tried doing semi-manual training using the Accord Framework (which is fairly a complete statistical/ML framework for .NET). We then discovered that for purely modeling purposes, vowpal wabbit is much more productive. You still have to do your own feature extraction, but vowpal makes it very easy to train once you have your data. Most of our modeling has been with one-against-all classification with the default squared-error loss function, although we've tried out models with binary logistic regression as well. See Vowpal Wabbit inverted_hash option produces empty output, but why? for some OAA vs binary results that I thought a bit unexpected.

We are only looking at information contained in a new post to do our scoring. That means we are not taking any kind of user information into account - for one, we don't want to bias for or against a particular type of user. To paraphrase a famous line, "We want the scoring to based not on the color of the user's avatar, but on the content of their question." Anyway, this is more restrictive than it sounds at first. Brand-spanking-new posts have only a title, the body, and tags. There is no post history, there are no comments, and we don't consider who the user is.

I suggest that you try to make small models (e.g., < 500 features). We found that after a few hundred features, accuracy didn't go up much with more features (I have a model with < 100 features that performs only 2% worse than other models with thousands on certain test sets). Small models are much easier to work with, so you won't loose as much time to dataslinging.

The only other things I can think of at the moment are just general ML advice: clean your data, make sure your test/validation sets make sense and aren't overlapping, etc.

Good luck! I'll add to this if I think of anything else.

typo
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Ben Collins
  • 20.7k
  • 18
  • 8

I think the most obvious insight (to me) might be that our approach to this and yours might be different. Our goal is to try to nip low-quality stuff in the bud to keep it from repelling our best contributors, which means we want to feed low-quality questions to the review queue as they come in, rather than letting them occupy valuable real estate in place of better questions. Obviously we have access to the system in a way that you don't, and that can affect our respective models. I'm curious to see what you come up with, though. We'd be happy to take a close look at anything that would help us accomplish our goals.

Where we have spent most of our time thus far is modeling, although now we're actually writing code. At the beginning, we tried doing semi-manual training using the Accord Framework (which is fairly a fairly complete statistical/ML framework for .NET). We then discovered that for purely modeling purposes, vowpal wabbit is much more productive. You still have to do your own feature extraction, but vowpal makes it very easy to train once you have your data. Most of our modeling has been with one-against-all classification with the default squared-error loss function, although we've tried out models with binary logistic regression as well. See Vowpal Wabbit inverted_hash option produces empty output, but why? for some OAA vs binary results that I thought a bit unexpected.

We are only looking at information contained in a new post to do our scoring. That means we are not taking any kind of user information into account - for one, we don't want to bias for or against a particular type of user. To paraphrase a famous line, "We want the scoring to based not on the color of the user's avatar, but on the content of their question." Anyway, this is more restrictive than it sounds at first. Brand-spanking-new posts have only a title, the body, and tags. There is no post history, there are no comments, and we don't consider who the user is.

I suggest that you try to make small models (e.g., < 500 features). We found that after a few hundred features, accuracy didn't go up much with more features (I have a model with < 100 features that performs only 2% worse than other models with thousands on certain test sets). Small models are much easier to work with, so you won't loose as much time to dataslinging.

The only other things I can think of at the moment are just general ML advice: clean your data, make sure your test/validation sets make sense and aren't overlapping, etc.

Good luck! I'll add to this if I think of anything else.

I think the most obvious insight (to me) might be that our approach to this and yours might be different. Our goal is to try to nip low-quality stuff in the bud to keep it from repelling our best contributors, which means we want to feed low-quality questions to the review queue as they come in, rather than letting them occupy valuable real estate in place of better questions. Obviously we have access to the system in a way that you don't, and that can affect our respective models. I'm curious to see what you come up with, though. We'd be happy to take a close look at anything that would help us accomplish our goals.

Where we have spent most of our time thus far is modeling, although now we're actually writing code. At the beginning, we tried doing semi-manual training using the Accord Framework (which is fairly a fairly complete statistical/ML framework for .NET). We then discovered that for purely modeling purposes, vowpal wabbit is much more productive. You still have to do your own feature extraction, but vowpal makes it very easy to train once you have your data. Most of our modeling has been with one-against-all classification with the default squared-error loss function, although we've tried out models with binary logistic regression as well. See Vowpal Wabbit inverted_hash option produces empty output, but why? for some OAA vs binary results that I thought a bit unexpected.

We are only looking at information contained in a new post to do our scoring. That means we are not taking any kind of user information into account - for one, we don't want to bias for or against a particular type of user. To paraphrase a famous line, "We want the scoring to based not on the color of the user's avatar, but on the content of their question." Anyway, this is more restrictive than it sounds at first. Brand-spanking-new posts have only a title, the body, and tags. There is no post history, there are no comments, and we don't consider who the user is.

I suggest that you try to make small models (e.g., < 500 features). We found that after a few hundred features, accuracy didn't go up much with more features (I have a model with < 100 features that performs only 2% worse than other models with thousands on certain test sets). Small models are much easier to work with, so you won't loose as much time to dataslinging.

The only other things I can think of at the moment are just general ML advice: clean your data, make sure your test/validation sets make sense and aren't overlapping, etc.

Good luck! I'll add to this if I think of anything else.

I think the most obvious insight (to me) might be that our approach to this and yours might be different. Our goal is to try to nip low-quality stuff in the bud to keep it from repelling our best contributors, which means we want to feed low-quality questions to the review queue as they come in, rather than letting them occupy valuable real estate in place of better questions. Obviously we have access to the system in a way that you don't, and that can affect our respective models. I'm curious to see what you come up with, though. We'd be happy to take a close look at anything that would help us accomplish our goals.

Where we have spent most of our time thus far is modeling, although now we're actually writing code. At the beginning, we tried doing semi-manual training using the Accord Framework (which is fairly a complete statistical/ML framework for .NET). We then discovered that for purely modeling purposes, vowpal wabbit is much more productive. You still have to do your own feature extraction, but vowpal makes it very easy to train once you have your data. Most of our modeling has been with one-against-all classification with the default squared-error loss function, although we've tried out models with binary logistic regression as well. See Vowpal Wabbit inverted_hash option produces empty output, but why? for some OAA vs binary results that I thought a bit unexpected.

We are only looking at information contained in a new post to do our scoring. That means we are not taking any kind of user information into account - for one, we don't want to bias for or against a particular type of user. To paraphrase a famous line, "We want the scoring to based not on the color of the user's avatar, but on the content of their question." Anyway, this is more restrictive than it sounds at first. Brand-spanking-new posts have only a title, the body, and tags. There is no post history, there are no comments, and we don't consider who the user is.

I suggest that you try to make small models (e.g., < 500 features). We found that after a few hundred features, accuracy didn't go up much with more features (I have a model with < 100 features that performs only 2% worse than other models with thousands on certain test sets). Small models are much easier to work with, so you won't loose as much time to dataslinging.

The only other things I can think of at the moment are just general ML advice: clean your data, make sure your test/validation sets make sense and aren't overlapping, etc.

Good luck! I'll add to this if I think of anything else.

Source Link
Ben Collins
  • 20.7k
  • 18
  • 8

I think the most obvious insight (to me) might be that our approach to this and yours might be different. Our goal is to try to nip low-quality stuff in the bud to keep it from repelling our best contributors, which means we want to feed low-quality questions to the review queue as they come in, rather than letting them occupy valuable real estate in place of better questions. Obviously we have access to the system in a way that you don't, and that can affect our respective models. I'm curious to see what you come up with, though. We'd be happy to take a close look at anything that would help us accomplish our goals.

Where we have spent most of our time thus far is modeling, although now we're actually writing code. At the beginning, we tried doing semi-manual training using the Accord Framework (which is fairly a fairly complete statistical/ML framework for .NET). We then discovered that for purely modeling purposes, vowpal wabbit is much more productive. You still have to do your own feature extraction, but vowpal makes it very easy to train once you have your data. Most of our modeling has been with one-against-all classification with the default squared-error loss function, although we've tried out models with binary logistic regression as well. See Vowpal Wabbit inverted_hash option produces empty output, but why? for some OAA vs binary results that I thought a bit unexpected.

We are only looking at information contained in a new post to do our scoring. That means we are not taking any kind of user information into account - for one, we don't want to bias for or against a particular type of user. To paraphrase a famous line, "We want the scoring to based not on the color of the user's avatar, but on the content of their question." Anyway, this is more restrictive than it sounds at first. Brand-spanking-new posts have only a title, the body, and tags. There is no post history, there are no comments, and we don't consider who the user is.

I suggest that you try to make small models (e.g., < 500 features). We found that after a few hundred features, accuracy didn't go up much with more features (I have a model with < 100 features that performs only 2% worse than other models with thousands on certain test sets). Small models are much easier to work with, so you won't loose as much time to dataslinging.

The only other things I can think of at the moment are just general ML advice: clean your data, make sure your test/validation sets make sense and aren't overlapping, etc.

Good luck! I'll add to this if I think of anything else.