metadata
language:
- en
tags:
- t5
- qa
- askscience
- lfqa
- information retrieval
datasets:
- eli5
metrics:
- rouge
widget:
- text: why aren't there more planets in our solar system?
example_title: solar system
- text: >-
question: what is a probability distribution? context: I am just learning
about statistics.
example_title: probability distribution
- text: >-
question: how does exercise help us lose weight? context: I started
working out two weeks ago and already feel a lot better, and started to
think about it and became deeply confused.
example_title: pumpen
- text: what is a neural network?
example_title: deep learning
- text: How can computers understand human language?
example_title: NLP
inference:
parameters:
max_length: 64
no_repeat_ngram_size: 2
encoder_no_repeat_ngram_size: 3
repetition_penalty: 2.4
length_penalty: 0.5
num_beams: 4
early_stopping: true
t5 - base- askscience
- t5-v1_1 trained on the entirety of the askscience sub-section of the eli5 dataset for one epoch.
- compare to bart on eli5 here
- note that for the inference API, the model is restricted to outputting 64 tokens - by using the model in python with the transformers library, you can get longer outputs.
training
- for inputs, the model was presented with the post title and the post selftext encoded as:
question: <post title> context: <post selftext>
. You may see better results if queries are posed in this fashion. - The top two replies were aggregated and presented to the model as the output text.
- Training for longer will be explored, but given that the dataset has 127k examples and the loss flatlines at 0.5 epochs so this model should be fairly viable.