finance financial

SEC-BERT

<img align="center" src="https://i.ibb.co/0yz81K9/sec-bert-logo.png" alt="sec-bert-logo" width="400"/>

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SEC-BERT is a family of BERT models for the financial domain, intended to assist financial NLP research and FinTech applications. SEC-BERT consists of the following models:

Pre-training corpus

The model was pre-trained on 260,773 10-K filings from 1993-2019, publicly available at <a href="https://www.sec.gov/">U.S. Securities and Exchange Commission (SEC)</a>

Pre-training details

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Load Pretrained Model

from transformers import AutoTokenizer, AutoModel

tokenizer = AutoTokenizer.from_pretrained("nlpaueb/sec-bert-num")
model = AutoModel.from_pretrained("nlpaueb/sec-bert-num")

Pre-process Text

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To use SEC-BERT-NUM, you have to pre-process texts replacing every numerical token with [NUM] pseudo-token. Below there is an example of how you can pre-process a simple sentence. This approach is quite simple; feel free to modify it as you see fit. </div>

import re
import spacy
from transformers import AutoTokenizer

tokenizer = AutoTokenizer.from_pretrained("nlpaueb/sec-bert-num")
spacy_tokenizer = spacy.load("en_core_web_sm")

sentence = "Total net sales decreased 2% or $5.4 billion during 2019 compared to 2018."

def sec_bert_num_preprocess(text):
    tokens = [t.text for t in spacy_tokenizer(text)]

    processed_text = []
    for token in tokens:
        if re.fullmatch(r"(\d+[\d,.]*)|([,.]\d+)", token):
            processed_text.append('[NUM]')
        else:
            processed_text.append(token)
            
    return ' '.join(processed_text)
        
tokenized_sentence = tokenizer.tokenize(sec_bert_num_preprocess(sentence))
print(tokenized_sentence)
"""
['total', 'net', 'sales', 'decreased', '[NUM]', '%', 'or', '$', '[NUM]', 'billion', 'during', '[NUM]', 'compared', 'to', '[NUM]', '.']
"""

Using SEC-BERT variants as Language Models

Sample Masked Token
Total net sales [MASK] 2% or $5.4 billion during 2019 compared to 2018. decreased
Model Predictions (Probability)
BERT-BASE-UNCASED increased (0.221), were (0.131), are (0.103), rose (0.075), of (0.058)
SEC-BERT-BASE increased (0.678), decreased (0.282), declined (0.017), grew (0.016), rose (0.004)
SEC-BERT-NUM increased (0.753), decreased (0.211), grew (0.019), declined (0.010), rose (0.006)
SEC-BERT-SHAPE increased (0.747), decreased (0.214), grew (0.021), declined (0.013), rose (0.002)
Sample Masked Token
Total net sales decreased 2% or $5.4 [MASK] during 2019 compared to 2018. billion
Model Predictions (Probability)
BERT-BASE-UNCASED billion (0.841), million (0.097), trillion (0.028), ##m (0.015), ##bn (0.006)
SEC-BERT-BASE million (0.972), billion (0.028), millions (0.000), ##million (0.000), m (0.000)
SEC-BERT-NUM million (0.974), billion (0.012), , (0.010), thousand (0.003), m (0.000)
SEC-BERT-SHAPE million (0.978), billion (0.021), % (0.000), , (0.000), millions (0.000)
Sample Masked Token
Total net sales decreased [MASK]% or $5.4 billion during 2019 compared to 2018. 2
Model Predictions (Probability)
BERT-BASE-UNCASED 20 (0.031), 10 (0.030), 6 (0.029), 4 (0.027), 30 (0.027)
SEC-BERT-BASE 13 (0.045), 12 (0.040), 11 (0.040), 14 (0.035), 10 (0.035)
SEC-BERT-NUM [NUM] (1.000), one (0.000), five (0.000), three (0.000), seven (0.000)
SEC-BERT-SHAPE [XX] (0.316), [XX.X] (0.253), [X.X] (0.237), [X] (0.188), [X.XX] (0.002)
Sample Masked Token
Total net sales decreased 2[MASK] or $5.4 billion during 2019 compared to 2018. %
Model Predictions (Probability)
BERT-BASE-UNCASED % (0.795), percent (0.174), ##fold (0.009), billion (0.004), times (0.004)
SEC-BERT-BASE % (0.924), percent (0.076), points (0.000), , (0.000), times (0.000)
SEC-BERT-NUM % (0.882), percent (0.118), million (0.000), units (0.000), bps (0.000)
SEC-BERT-SHAPE % (0.961), percent (0.039), bps (0.000), , (0.000), bcf (0.000)
Sample Masked Token
Total net sales decreased 2% or $[MASK] billion during 2019 compared to 2018. 5.4
Model Predictions (Probability)
BERT-BASE-UNCASED 1 (0.074), 4 (0.045), 3 (0.044), 2 (0.037), 5 (0.034)
SEC-BERT-BASE 1 (0.218), 2 (0.136), 3 (0.078), 4 (0.066), 5 (0.048)
SEC-BERT-NUM [NUM] (1.000), l (0.000), 1 (0.000), - (0.000), 30 (0.000)
SEC-BERT-SHAPE [X.X] (0.787), [X.XX] (0.095), [XX.X] (0.049), [X.XXX] (0.046), [X] (0.013)
Sample Masked Token
Total net sales decreased 2% or $5.4 billion during [MASK] compared to 2018. 2019
Model Predictions (Probability)
BERT-BASE-UNCASED 2017 (0.485), 2018 (0.169), 2016 (0.164), 2015 (0.070), 2014 (0.022)
SEC-BERT-BASE 2019 (0.990), 2017 (0.007), 2018 (0.003), 2020 (0.000), 2015 (0.000)
SEC-BERT-NUM [NUM] (1.000), as (0.000), fiscal (0.000), year (0.000), when (0.000)
SEC-BERT-SHAPE [XXXX] (1.000), as (0.000), year (0.000), periods (0.000), , (0.000)
Sample Masked Token
Total net sales decreased 2% or $5.4 billion during 2019 compared to [MASK]. 2018
Model Predictions (Probability)
BERT-BASE-UNCASED 2017 (0.100), 2016 (0.097), above (0.054), inflation (0.050), previously (0.037)
SEC-BERT-BASE 2018 (0.999), 2019 (0.000), 2017 (0.000), 2016 (0.000), 2014 (0.000)
SEC-BERT-NUM [NUM] (1.000), year (0.000), last (0.000), sales (0.000), fiscal (0.000)
SEC-BERT-SHAPE [XXXX] (1.000), year (0.000), sales (0.000), prior (0.000), years (0.000)
Sample Masked Token
During 2019, the Company [MASK] $67.1 billion of its common stock and paid dividend equivalents of $14.1 billion. repurchased
Model Predictions (Probability)
BERT-BASE-UNCASED held (0.229), sold (0.192), acquired (0.172), owned (0.052), traded (0.033)
SEC-BERT-BASE repurchased (0.913), issued (0.036), purchased (0.029), redeemed (0.010), sold (0.003)
SEC-BERT-NUM repurchased (0.917), purchased (0.054), reacquired (0.013), issued (0.005), acquired (0.003)
SEC-BERT-SHAPE repurchased (0.902), purchased (0.068), issued (0.010), reacquired (0.008), redeemed (0.006)
Sample Masked Token
During 2019, the Company repurchased $67.1 billion of its common [MASK] and paid dividend equivalents of $14.1 billion. stock
Model Predictions (Probability)
BERT-BASE-UNCASED stock (0.835), assets (0.039), equity (0.025), debt (0.021), bonds (0.017)
SEC-BERT-BASE stock (0.857), shares (0.135), equity (0.004), units (0.002), securities (0.000)
SEC-BERT-NUM stock (0.842), shares (0.157), equity (0.000), securities (0.000), units (0.000)
SEC-BERT-SHAPE stock (0.888), shares (0.109), equity (0.001), securities (0.001), stocks (0.000)
Sample Masked Token
During 2019, the Company repurchased $67.1 billion of its common stock and paid [MASK] equivalents of $14.1 billion. dividend
Model Predictions (Probability)
BERT-BASE-UNCASED cash (0.276), net (0.128), annual (0.083), the (0.040), debt (0.027)
SEC-BERT-BASE dividend (0.890), cash (0.018), dividends (0.016), share (0.013), tax (0.010)
SEC-BERT-NUM dividend (0.735), cash (0.115), share (0.087), tax (0.025), stock (0.013)
SEC-BERT-SHAPE dividend (0.655), cash (0.248), dividends (0.042), share (0.019), out (0.003)
Sample Masked Token
During 2019, the Company repurchased $67.1 billion of its common stock and paid dividend [MASK] of $14.1 billion. equivalents
Model Predictions (Probability)
BERT-BASE-UNCASED revenue (0.085), earnings (0.078), rates (0.065), amounts (0.064), proceeds (0.062)
SEC-BERT-BASE payments (0.790), distributions (0.087), equivalents (0.068), cash (0.013), amounts (0.004)
SEC-BERT-NUM payments (0.845), equivalents (0.097), distributions (0.024), increases (0.005), dividends (0.004)
SEC-BERT-SHAPE payments (0.784), equivalents (0.093), distributions (0.043), dividends (0.015), requirements (0.009)

Publication

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If you use this model cite the following article:<br> FiNER: Financial Numeric Entity Recognition for XBRL Tagging<br> Lefteris Loukas, Manos Fergadiotis, Ilias Chalkidis, Eirini Spyropoulou, Prodromos Malakasiotis, Ion Androutsopoulos and George Paliouras<br> In the Proceedings of the 60th Annual Meeting of the Association for Computational Linguistics (ACL 2022) (Long Papers), Dublin, Republic of Ireland, May 22 - 27, 2022 </div>

@inproceedings{loukas-etal-2022-finer,
    title = {FiNER: Financial Numeric Entity Recognition for XBRL Tagging},
    author = {Loukas, Lefteris and
      Fergadiotis, Manos and
      Chalkidis, Ilias and
      Spyropoulou, Eirini and
      Malakasiotis, Prodromos and
      Androutsopoulos, Ion and
      Paliouras George},
    booktitle = {Proceedings of the 60th Annual Meeting of the Association for Computational Linguistics (ACL 2022)},
    publisher = {Association for Computational Linguistics},
    location = {Dublin, Republic of Ireland},
    year = {2022},
    url = {https://arxiv.org/abs/2203.06482}
}

About Us

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AUEB's Natural Language Processing Group develops algorithms, models, and systems that allow computers to process and generate natural language texts.

The group's current research interests include:

The group is part of the Information Processing Laboratory of the Department of Informatics of the Athens University of Economics and Business. </div>

Manos Fergadiotis on behalf of AUEB's Natural Language Processing Group