license: mit
license_link: https://mit-license.org/
datasets:
- abullard1/steam-reviews-constructiveness-binary-label-annotations-1.5k
language:
- en
base_model: albert/albert-base-v2
pipeline_tag: text-classification
library_name: transformers
tags:
- steam-reviews
- BERT
- albert-base-v2
- text-classification
- sentiment-analysis
- constructiveness
- gaming
- sentiment-analysis
- text-classification
- fine-tuned
developers:
- Samuel Ruairí Bullard
- Marco Schreiner
thumbnail: >-
https://i.ibb.co/Ky0wcYy/abullard1-steam-review-constructiveness-classifier-logo-modified-1.png
spaces: abullard1/steam-review-constructiveness-classifier
inference: true
inference_endpoint: https://qautc3jglsumwam2.eu-west-1.aws.endpoints.huggingface.cloud
widget:
- text: >-
Review: I think this is a great game but it still has some room for
improvement., Playtime: 12, Voted Up: True, Upvotes: 1, Votes Funny: 0
example_title: Constructive Review
- text: >-
Review: Trash game. Deleted., Playtime: 1, Voted Up: False, Upvotes: 0,
Votes Funny: 0
example_title: Non-Constructive Review
model-index:
- name: albert-v2-steam-review-constructiveness-classifier
results:
- task:
type: text-classification
dataset:
name: >-
abullard1/steam-reviews-constructiveness-binary-label-annotations-1.5k
type: >-
abullard1/steam-reviews-constructiveness-binary-label-annotations-1.5k
metrics:
- name: Accuracy
type: accuracy
value: 0.796
- name: Precision
type: precision
value: 0.8
- name: Recall
type: recall
value: 0.818
- name: F1-score
type: f1
value: 0.794
Fine-tuned ALBERT Model for Constructiveness Detection in Steam Reviews
Model Summary
This model is a fine-tuned version of albert-base-v2, designed to classify whether Steam game reviews are constructive or non-constructive. It was trained on the steam-reviews-constructiveness-binary-label-annotations-1.5k dataset, containing user-generated game reviews labeled as either:
- 1 (constructive)
- 0 (non-constructive)
The dataset features were combined into a single string per review, formatted as follows:
"Review: {review}, Playtime: {author_playtime_at_review}, Voted Up: {voted_up}, Upvotes: {votes_up}, Votes Funny: {votes_funny}" and then fed to the model accompanied by the respective constructive labels.
This approach of concatenating the features into a simple String offers a good trade-off between complexity and performance, compared to other options.
Intended Use
The model can be applied in any scenario where it's important to distinguish between helpful and unhelpful textual feedback, particularly in the context of gaming communities or online reviews. Potential use cases are platforms like Steam, Discord, or any community-driven feedback systems where understanding the quality of feedback is critical.
Limitations
- Domain Specificity: The model was trained on Steam reviews and may not generalize well outside gaming.
- Dataset Imbalance: The training data has an approximate 63.04%-36.96% split between non-constructive and constructive reviews.
Evaluation Results
The model was trained and evaluated using an 80/10/10 Train/Dev/Test split, achieving the following performance metrics during evaluation using the test set:
- Accuracy: 0.80
- Precision: 0.80
- Recall: 0.82
- F1-score: 0.79
These results indicate that the model performs reasonably well at identifying the correct label. (~80%)
How to Use
Huggingface Space
Explore and test the model interactively on its Hugging Face Space.
Transformers Library
To use the model programmatically, use this Python snippet:
from transformers import pipeline
import torch
device = 0 if torch.cuda.is_available() else -1
torch_d_type = torch.float16 if torch.cuda.is_available() else torch.float32
base_model_name = "albert-base-v2"
finetuned_model_name = "abullard1/albert-v2-steam-review-constructiveness-classifier"
classifier = pipeline(
task="text-classification",
model=finetuned_model_name,
tokenizer=base_model_name,
device=device,
top_k=None,
truncation=True,
max_length=512,
torch_dtype=torch_d_type)
review = "Review: I think this is a great game but it still has some room for improvement., Playtime: 12, Voted Up: True, Upvotes: 1, Votes Funny: 0"
result = classifier(review)
print(result)
License
This model is licensed under the MIT License, allowing open and flexible use of the model for both academic and commercial purposes.