0
$\begingroup$

My goal is to predict the most appropriate answer from an utterance, in a group of 21 potential answers. (I'm not sure the "question" is called utterance though. )

Example:

Utterance: How are you today? Answers: Answer1, 2, ..., 21.

I have a training file with this format:

Utterance: Answers: Good answer, wrong answer1, wrong answer2,..., wrong answer20.

My problem

For the first time, we have to make a prediction from a group of possible answers, and, thus, this is a MCQ form.

Any ideas how I could start the problem?

What I've done

For the moment, the only thing I did was to choose the answers from the 21 possible answers which had the highest cosine similarity with the utterance. (So, unsupervised). It's not that bad (24% against 1/21 at random), but I'm sure there are ways to make something really better.

What I don't want to do at first

Use a generative model which predicts a full sentence. I want to choose the best candidate amongs the 21 answers, and use the training file which can allow us to do supervised learning.

$\endgroup$

1 Answer 1

0
$\begingroup$

Since answers change between different questions, your problem does not fit 'regular' classification problems.
And due to textual nature of your input/output, regression is not the best fit either.
This leaves me thinking K-NN is a good way utilizing supervised learning.

I don't have any good reference for this but this approach makes sense to me:

1) Embed both questions and answers into same space(using TF/IDF and PCA for example).
2) For a new(unseen) question find near neighboring labeled questions(from the training set), using K-NN.
3) Get neighboring questions answers.
4) Use K-NN(Or other distance based method) to find nearest neighbor in unseen question answer choices.

$\endgroup$

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

Not the answer you're looking for? Browse other questions tagged or ask your own question.