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surprisal's Introduction

surprisal

Compute surprisal from language models!

surprisal supports most Causal Language Models (GPT2- and GPTneo-like models) from Huggingface or local checkpoint, as well as GPT3 models from OpenAI using their API!

Masked Language Models (BERT-like models) are in the pipeline and will be supported at a future time.

Usage

The snippet below computes per-token surprisals for a list of sentences

from surprisal import AutoHuggingFaceModel

sentences = [
    "The cat is on the mat",
    "The cat is on the hat",
    "The cat is on the pizza",
    "The pizza is on the mat",
    "I told you that the cat is on the mat",
    "I told you the cat is on the mat",
]

m = AutoHuggingFaceModel.from_pretrained('gpt2')
m.to('cuda') # optionally move your model to GPU!

for result in m.surprise(sentences):
    print(result)

and produces output of this sort:

       The       Ġcat        Ġis        Ġon       Ġthe       Ġmat  
     3.276      9.222      2.463      4.145      0.961      7.237  
       The       Ġcat        Ġis        Ġon       Ġthe       Ġhat  
     3.276      9.222      2.463      4.145      0.961      9.955  
       The       Ġcat        Ġis        Ġon       Ġthe     Ġpizza  
     3.276      9.222      2.463      4.145      0.961      8.212  
       The     Ġpizza        Ġis        Ġon       Ġthe       Ġmat  
     3.276     10.860      3.212      4.910      0.985      8.379  
         I      Ġtold       Ġyou      Ġthat       Ġthe       Ġcat        Ġis        Ġon       Ġthe       Ġmat 
     3.998      6.856      0.619      2.443      2.711      7.955      2.596      4.804      1.139      6.946 
         I      Ġtold       Ġyou       Ġthe       Ġcat        Ġis        Ġon       Ġthe       Ġmat  
     3.998      6.856      0.619      4.115      7.612      3.031      4.817      1.233      7.033 

extracting surprisal over a substring

A surprisal object can be aggregated over a subset of tokens that best match a span of words or characters. Word boundaries are inherited from the model's standard tokenizer, and may not be consistent across models, so using character spans when slicing is the default and recommended option. Surprisals are in log space, and therefore added over tokens during aggregation. For example:

>>> [s] = m.surprise("The cat is on the mat")
>>> s[3:6, "word"] 
12.343366384506226
Ġon Ġthe Ġmat
>>> s[3:6, "char"]
9.222099304199219
Ġcat
>>> s[3:6]
9.222099304199219
Ġcat

GPT-3 using OpenAI API

In order to use a GPT-3 model from OpenAI's API, you will need to obtain your organization ID and user-specific API key using your account. Then, use the OpenAIModel in the same way as a Huggingface model.

import surprisal
m = surprisal.OpenAIModel(model_id='text-davinci-002',
                          openai_api_key="sk-xxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxx", 
                          openai_org="org-xxxxxxxxxxxxxxxxxxxxxxxx")

These values can also be passed using environment variables, OPENAI_API_KEY and OPENAI_ORG before calling a script.

You can also call Surprisal.lineplot() to visualize the surprisals:

from matplotlib import pyplot as plt

f, a = None, None
for result in m.surprise(sentences):
    f, a = result.lineplot(f, a)

plt.show()

surprisal also has a minimal CLI:

python -m surprisal -m distilgpt2 "I went to the train station today."
      I      Ġwent        Ġto       Ġthe     Ġtrain   Ġstation     Ġtoday          . 
  4.984      5.729      0.812      1.723      7.317      0.497      4.600      2.528 

python -m surprisal -m distilgpt2 "I went to the space station today."
      I      Ġwent        Ġto       Ġthe     Ġspace   Ġstation     Ġtoday          . 
  4.984      5.729      0.812      1.723      8.425      0.707      5.182      2.574

Installing

pip install surprisal

Acknowledgments

Inspired from the now-inactive lm-scorer; thanks to folks from CPLlab and EvLab for comments and help.

License

MIT License. (C) 2022, Aalok S.

surprisal's People

Contributors

aalok-sathe avatar smeylan avatar

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