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metadata
language: en
tags:
  - text-classification
  - pytorch
  - roberta
  - emotions
  - multi-class-classification
  - multi-label-classification
datasets:
  - go_emotions
license: mit
widget:
  - text: I am not having a great day.

Overview

Model trained from roberta-base on the go_emotions dataset for multi-label classification.

ONNX

An version of this model in ONNX format (including an INT8 quantized ONNX version) is now available at https://huggingface.co/SamLowe/roberta-base-go_emotions-onnx

Dataset used for the model

go_emotions is based on Reddit data and has 28 labels. It is a multi-label dataset where one or multiple labels may apply for any given input text, hence this model is a multi-label classification model with 28 'probability' float outputs for any given input text. Typically a threshold of 0.5 is applied to the probabilities for the prediction for each label.

How the model was created

The model was trained using AutoModelForSequenceClassification.from_pretrained with problem_type="multi_label_classification" for 3 epochs with a learning rate of 2e-5 and weight decay of 0.01.

Inference

There are multiple ways to use this model in Huggingface Transformers. Possibly the simplest is using a pipeline:

from transformers import pipeline

classifier = pipeline(task="text-classification", model="SamLowe/roberta-base-go_emotions", top_k=None)

sentences = ["I am not having a great day"]

model_outputs = classifier(sentences)
print(model_outputs[0])
# produces a list of dicts for each of the labels

Evaluation / metrics

Evaluation of the model is available at

Summary

As provided in the above notebook, evaluation of the multi-label output (of the 28 dim output via a threshold of 0.5 to binarize each) using the dataset test split gives:

  • Accuracy: 0.474
  • Precision: 0.575
  • Recall: 0.396
  • F1: 0.450

But the metrics are more meaningful when measured per label given the multi-label nature (each label is effectively an independent binary classification) and the fact that there is drastically different representations of the labels in the dataset.

With a threshold of 0.5 applied to binarize the model outputs, as per the above notebook, the metrics per label are:

accuracy precision recall f1 mcc support threshold
admiration 0.946 0.725 0.675 0.699 0.670 504 0.5
amusement 0.982 0.790 0.871 0.829 0.821 264 0.5
anger 0.970 0.652 0.379 0.479 0.483 198 0.5
annoyance 0.940 0.472 0.159 0.238 0.250 320 0.5
approval 0.942 0.609 0.302 0.404 0.403 351 0.5
caring 0.973 0.448 0.319 0.372 0.364 135 0.5
confusion 0.972 0.500 0.431 0.463 0.450 153 0.5
curiosity 0.950 0.537 0.356 0.428 0.412 284 0.5
desire 0.987 0.630 0.410 0.496 0.502 83 0.5
disappointment 0.974 0.625 0.199 0.302 0.343 151 0.5
disapproval 0.950 0.494 0.307 0.379 0.365 267 0.5
disgust 0.982 0.707 0.333 0.453 0.478 123 0.5
embarrassment 0.994 0.750 0.243 0.367 0.425 37 0.5
excitement 0.983 0.603 0.340 0.435 0.445 103 0.5
fear 0.992 0.758 0.603 0.671 0.672 78 0.5
gratitude 0.990 0.960 0.881 0.919 0.914 352 0.5
grief 0.999 0.000 0.000 0.000 0.000 6 0.5
joy 0.978 0.647 0.559 0.600 0.590 161 0.5
love 0.982 0.773 0.832 0.802 0.793 238 0.5
nervousness 0.996 0.600 0.130 0.214 0.278 23 0.5
optimism 0.972 0.667 0.376 0.481 0.488 186 0.5
pride 0.997 0.000 0.000 0.000 0.000 16 0.5
realization 0.974 0.541 0.138 0.220 0.264 145 0.5
relief 0.998 0.000 0.000 0.000 0.000 11 0.5
remorse 0.991 0.553 0.750 0.636 0.640 56 0.5
sadness 0.977 0.621 0.494 0.550 0.542 156 0.5
surprise 0.981 0.750 0.404 0.525 0.542 141 0.5
neutral 0.782 0.694 0.604 0.646 0.492 1787 0.5

Optimizing the threshold per label for the one that gives the optimum F1 metrics gives slightly better metrics - sacrificing some precision for a greater gain in recall, hence to the benefit of F1 (how this was done is shown in the above notebook):

accuracy precision recall f1 mcc support threshold
admiration 0.940 0.651 0.776 0.708 0.678 504 0.25
amusement 0.982 0.781 0.890 0.832 0.825 264 0.45
anger 0.959 0.454 0.601 0.517 0.502 198 0.15
annoyance 0.864 0.243 0.619 0.349 0.328 320 0.10
approval 0.926 0.432 0.442 0.437 0.397 351 0.30
caring 0.972 0.426 0.385 0.405 0.391 135 0.40
confusion 0.974 0.548 0.412 0.470 0.462 153 0.55
curiosity 0.943 0.473 0.711 0.568 0.552 284 0.25
desire 0.985 0.518 0.530 0.524 0.516 83 0.25
disappointment 0.974 0.562 0.298 0.390 0.398 151 0.40
disapproval 0.941 0.414 0.468 0.439 0.409 267 0.30
disgust 0.978 0.523 0.463 0.491 0.481 123 0.20
embarrassment 0.994 0.567 0.459 0.507 0.507 37 0.10
excitement 0.981 0.500 0.417 0.455 0.447 103 0.35
fear 0.991 0.712 0.667 0.689 0.685 78 0.40
gratitude 0.990 0.957 0.889 0.922 0.917 352 0.45
grief 0.999 0.333 0.333 0.333 0.333 6 0.05
joy 0.978 0.623 0.646 0.634 0.623 161 0.40
love 0.982 0.740 0.899 0.812 0.807 238 0.25
nervousness 0.996 0.571 0.348 0.432 0.444 23 0.25
optimism 0.971 0.580 0.565 0.572 0.557 186 0.20
pride 0.998 0.875 0.438 0.583 0.618 16 0.10
realization 0.961 0.270 0.262 0.266 0.246 145 0.15
relief 0.992 0.152 0.636 0.246 0.309 11 0.05
remorse 0.991 0.541 0.946 0.688 0.712 56 0.10
sadness 0.977 0.599 0.583 0.591 0.579 156 0.40
surprise 0.977 0.543 0.674 0.601 0.593 141 0.15
neutral 0.758 0.598 0.810 0.688 0.513 1787 0.25

Commentary on the dataset

Some labels (E.g. gratitude) when considered independently perform very strongly with F1 exceeding 0.9, whilst others (E.g. relief) perform very poorly.

This is a challenging dataset. Labels such as relief do have much fewer examples in the training data (less than 100 out of the 40k+, and only 11 in the test split).

But there is also some ambiguity and/or labelling errors visible in the training data of go_emotions that is suspected to constrain the performance. Data cleaning on the dataset to reduce some of the mistakes, ambiguity, conflicts and duplication in the labelling would produce a higher performing model.