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BatterySciBERT-uncased for Battery Abstract Multi-label Classification

This new model is a fine-tuned version of the BatterySciBERT-uncased model on a few-sample dataset of 1140 abstract of paper.
This model is uncased.

Hyperparameters

batch_size = 4
n_epochs = 16
base_LM_model = "batteryscibert-uncased"
learning_rate = 3e-5

Performance

"Validation Micro F1-score": 94.54,
"Test Micro F1-score": 93.42,

Details on the test set

Predicted Label Precision Recall F1 score
Coating 95.83% 76.67% 85.19%
Computation 86.96% 90.90% 88.89%
Doping 96.30% 100% 98.11%
Experiment 98.02% 93.40% 95.65%
Sodium layered oxide cathode 93.75% 91.84% 92.78%
Aggregate Metric Micro average 95.51% 91.42% 93.42%
Macro average 94.17% 90.56% 92.12%

Use in Transformers

from transformers import AutoModelForSequenceClassification, AutoTokenizer, pipeline
model_name = "NoWayBack/batteryscibert-uncased-abstract-mtc"

# Get predictions
nlp = pipeline('text-classification', model=model_name, tokenizer=model_name, top_k=5)
input_string = "Sodium-ion batteries are among the most promising alternatives to lithium-based " \
               "technologies for grid and other energy storage applications due to their cost benefits " \
               "and sustainable resource supply. For the cathode—the component that largely determines the " \
               "energy density of a sodium-ion battery cell—one major category of materials is P2-type layered oxides."
res = nlp(input_string)

# Load model & tokenizer
model = AutoModelForSequenceClassification.from_pretrained(model_name)
tokenizer = AutoTokenizer.from_pretrained(model_name)
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