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roberta-base-suicide-prediction-phr

This model is a fine-tuned version of roberta-base on this dataset sourced from Reddit. It achieves the following results on the evaluation/validation set:

  • Loss: 0.1543
  • Accuracy: 0.9652972367116438
  • Recall: 0.966571403827834
  • Precision: 0.9638169257340242
  • F1: 0.9651921995935487

It achieves the following result on validation partition of this updated dataset

  • Loss: 0.08761
  • Accuracy: 0.97065
  • Recall: 0.96652
  • Precision: 0.97732
  • F1: 0.97189

Model description

This model is a finetune of roberta-base to detect suicidal tendencies in a given text.

Training and evaluation data

  • The dataset is sourced from Reddit and is available on Kaggle.
  • The dataset contains text with binary labels for suicide or non-suicide.
  • The dataset was cleaned, and following steps were applied
    • Converted to lowercase
    • Removed numbers and special characters.
    • Removed URLs, Emojis and accented characters.
    • Removed any word contractions.
    • Remove any extra white spaces and any extra spaces after a single space.
    • Removed any consecutive characters repeated more than 3 times.
    • Tokenised the text, then lemmatized it and then removed the stopwords (excluding not).
  • The cleaned dataset can be found here
  • The evaluation set had ~23000 samples, while the training set had ~186k samples, i.e. a 80:10:10 (train:test:val) split.

Training procedure

  • The model was trained on an RTXA5000 GPU.

Training hyperparameters

The following hyperparameters were used during training:

  • learning_rate: 2e-05
  • train_batch_size: 16
  • eval_batch_size: 16
  • seed: 42
  • optimizer: Adam with betas=(0.9,0.999) and epsilon=1e-08
  • lr_scheduler_type: linear
  • num_epochs: 3

Training results

Training Loss Epoch Step Validation Loss Accuracy Recall Precision F1
0.2023 0.09 1000 0.1868 {'accuracy': 0.9415010561710566} {'recall': 0.9389451805663809} {'precision': 0.943274752044545} {'f1': 0.9411049867627274}
0.1792 0.17 2000 0.1465 {'accuracy': 0.9528387291460103} {'recall': 0.9615484541439335} {'precision': 0.9446949714966392} {'f1': 0.9530472103004292}
0.1596 0.26 3000 0.1871 {'accuracy': 0.9523645298961072} {'recall': 0.9399844115354637} {'precision': 0.9634297887448962} {'f1': 0.9515627054749485}
0.1534 0.34 4000 0.1563 {'accuracy': 0.9518041126007674} {'recall': 0.974971854161254} {'precision': 0.9314139157772814} {'f1': 0.9526952695269527}
0.1553 0.43 5000 0.1691 {'accuracy': 0.9513730223735828} {'recall': 0.93141075604053} {'precision': 0.9697051663510955} {'f1': 0.950172276702889}
0.1537 0.52 6000 0.1347 {'accuracy': 0.9568478682588266} {'recall': 0.9644063393089114} {'precision': 0.9496844618795839} {'f1': 0.9569887852876723}
0.1515 0.6 7000 0.1276 {'accuracy': 0.9565461050997974} {'recall': 0.9426690915389279} {'precision': 0.9691924138545098} {'f1': 0.9557467732022126}
0.1453 0.69 8000 0.1351 {'accuracy': 0.960210372030866} {'recall': 0.9589503767212263} {'precision': 0.961031070994619} {'f1': 0.959989596428107}
0.1526 0.78 9000 0.1423 {'accuracy': 0.9610725524852352} {'recall': 0.9612020438209059} {'precision': 0.9606196988056085} {'f1': 0.9609107830829834}
0.1437 0.86 10000 0.1365 {'accuracy': 0.9599948269172738} {'recall': 0.9625010825322594} {'precision': 0.9573606684468946} {'f1': 0.9599239937813093}
0.1317 0.95 11000 0.1275 {'accuracy': 0.9616760788032935} {'recall': 0.9653589676972374} {'precision': 0.9579752492265383} {'f1': 0.9616529353405513}
0.125 1.03 12000 0.1428 {'accuracy': 0.9608138983489244} {'recall': 0.9522819780029445} {'precision': 0.9684692619341201} {'f1': 0.9603074101567617}
0.1135 1.12 13000 0.1627 {'accuracy': 0.960770789326206} {'recall': 0.9544470425218672} {'precision': 0.966330556773345} {'f1': 0.9603520390379923}
0.1096 1.21 14000 0.1240 {'accuracy': 0.9624520412122257} {'recall': 0.9566987096215467} {'precision': 0.9675074443860571} {'f1': 0.962072719355541}
0.1213 1.29 15000 0.1502 {'accuracy': 0.9616760788032935} {'recall': 0.9659651857625358} {'precision': 0.9574248927038627} {'f1': 0.9616760788032936}
0.1166 1.38 16000 0.1574 {'accuracy': 0.958873992326594} {'recall': 0.9438815276695246} {'precision': 0.9726907630522088} {'f1': 0.9580696202531646}
0.1214 1.47 17000 0.1626 {'accuracy': 0.9562443419407682} {'recall': 0.9773101238416905} {'precision': 0.9374480810765908} {'f1': 0.9569641721433114}
0.1064 1.55 18000 0.1653 {'accuracy': 0.9624089321895073} {'recall': 0.9622412747899888} {'precision': 0.9622412747899888} {'f1': 0.9622412747899888}
0.1046 1.64 19000 0.1608 {'accuracy': 0.9640039660300901} {'recall': 0.9697756993158396} {'precision': 0.9584046559397467} {'f1': 0.9640566484438896}
0.1043 1.72 20000 0.1556 {'accuracy': 0.960770789326206} {'recall': 0.9493374902572097} {'precision': 0.9712058119961017} {'f1': 0.9601471489883507}
0.0995 1.81 21000 0.1646 {'accuracy': 0.9602534810535845} {'recall': 0.9752316619035247} {'precision': 0.9465411448264268} {'f1': 0.9606722402320423}
0.1065 1.9 22000 0.1721 {'accuracy': 0.9627106953485365} {'recall': 0.9710747380271932} {'precision': 0.9547854223433242} {'f1': 0.9628611910179897}
0.1204 1.98 23000 0.1214 {'accuracy': 0.9629693494848471} {'recall': 0.961028838659392} {'precision': 0.9644533286980705} {'f1': 0.9627380384331756}
0.0852 2.07 24000 0.1583 {'accuracy': 0.9643919472345562} {'recall': 0.9624144799515025} {'precision': 0.9659278574532811} {'f1': 0.9641679680721846}
0.0812 2.16 25000 0.1594 {'accuracy': 0.9635728758029055} {'recall': 0.9572183251060882} {'precision': 0.9692213258505787} {'f1': 0.9631824321380331}
0.0803 2.24 26000 0.1629 {'accuracy': 0.9639177479846532} {'recall': 0.9608556334978783} {'precision': 0.9664634146341463} {'f1': 0.963651365787988}
0.0832 2.33 27000 0.1570 {'accuracy': 0.9631417855757209} {'recall': 0.9658785831817788} {'precision': 0.9603065266058206} {'f1': 0.9630844954881052}
0.0887 2.41 28000 0.1551 {'accuracy': 0.9623227141440703} {'recall': 0.9669178141508616} {'precision': 0.9577936004117698} {'f1': 0.9623340803309774}
0.084 2.5 29000 0.1585 {'accuracy': 0.9644350562572747} {'recall': 0.9613752489824197} {'precision': 0.96698606271777} {'f1': 0.9641724931602031}
0.0807 2.59 30000 0.1601 {'accuracy': 0.9639177479846532} {'recall': 0.9699489044773534} {'precision': 0.9580838323353293} {'f1': 0.9639798597065025}
0.079 2.67 31000 0.1645 {'accuracy': 0.9628400224166919} {'recall': 0.9558326838139777} {'precision': 0.9690929844586882} {'f1': 0.9624171607952564}
0.0913 2.76 32000 0.1560 {'accuracy': 0.9642626201664009} {'recall': 0.964752749631939} {'precision': 0.9635011243729459} {'f1': 0.9641265307888701}
0.0927 2.85 33000 0.1491 {'accuracy': 0.9649523645298961} {'recall': 0.9659651857625358} {'precision': 0.9637117677553136} {'f1': 0.9648371610224472}
0.0882 2.93 34000 0.1543 {'accuracy': 0.9652972367116438} {'recall': 0.966571403827834} {'precision': 0.9638169257340242} {'f1': 0.9651921995935487}

Framework versions

  • Transformers 4.31.0
  • Pytorch 2.1.0+cu121
  • Datasets 2.14.5
  • Tokenizers 0.13.3
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