Track and measure constructs, concepts or categories in text documents. Built on top of the litellm package to use most Generative AI models.
If you use, please cite: Low DM, Rankin O, Coppersmith DDL, Bentley KH, Nock MK, Ghosh SS (2024). Building lexicons with generative AI result in lightweight and interpretable text models with high content validity. arXiv.
pip install construct-tracker
We want to know if these documents contain mentions of certain construct "insight"
documents = [
"Every time I speak with my cousin Bob, I have great moments of clarity and wisdom", # mention of insight
"He meditates a lot, but he's not super smart" # related to mindfulness, only somewhat related to insight
"He is too competitive"] #not very related
Choose model here and obtain an API key from that provider. Cohere offers a free trial API key, 5 requests per minute. I'm going to choose GPT-4o:
os.environ["OPENAI_API_KEY"] = 'YOUR_OPENAI_API_KEY'
gpt4o = "gpt-4o-2024-05-13"
Two lines of code to create a lexicon
l = lexicon.Lexicon() # Initialize lexicon
l.add('Insight', section = 'tokens', value = 'create', source = gpt4o)
See results:
print(l.constructs['Insight']['tokens'])
['acuity', 'acumen', 'analysis', 'apprehension', 'awareness', 'clarity', 'comprehension', 'contemplation', 'depth', 'discernment', 'enlightenment', 'epiphany', 'foresight', 'grasp', 'illumination', 'insightfulness', 'interpretation', 'introspection', 'intuition', 'meditation', 'perception', 'perceptiveness', 'perspicacity', 'profoundness', 'realization', 'recognition', 'reflection', 'revelation', 'shrewdness', 'thoughtfulness', 'understanding', 'vision', 'wisdom']
We'll repeat for other constructs ("Mindfulness", "Compassion"). Now count whether tokens appear in document:
feature_vectors, matches_counter_d, matches_per_doc, matches_per_construct = lexicon.extract(
documents,
l.constructs,
normalize = False)
display(feature_vectors)
This traditional approach is perfectly interpretable. The first document contains three matches related to insight. Let's see which ones with highlight_matches()
:
lexicon.highlight_matches(documents, 'Insight', matches_construct2doc, max_matches = 1)
We provide many features to add/remove tokens, generate definitions, validate with human ratings, and much more (see tutorials/construct_tracker.ipynb
)
Lexicon is available in multiple formats:
https://github.com/danielmlow/construct-tracker/blob/main/src/construct_tracker/data/lexicons/suicide_risk_lexicon_v1-0/suicide_risk_lexicon_validated_24-08-02T21-27-35.csv
https://github.com/danielmlow/construct-tracker/blob/main/src/construct_tracker/data/lexicons/suicide_risk_lexicon_v1-0/suicide_risk_lexicon_validated_24-08-02T21-27-35.json
Or you can load lexicon object from the pickle file to extract features from new document.
We have created a lexicon with 49 risk factors for suicidal thoughts and behaviors validated by clinicians who are experts in suicide research.
from construct_tracker import lexicon
# Load lexicon
srl = lexicon.load_lexicon(name = 'srl_v1-0')
# Load only tokens that are highly prototypical of each construct
srl_prototypes = lexicon.load_lexicon(name = 'srl_prototypes_v1-0')
# Save general info on the lexicon
my_lexicon = lexicon.Lexicon() # Initialize lexicon
my_lexicon.name = 'Insight' # Set lexicon name
my_lexicon.description = 'Insight lexicon with constructs related to insight, mindfulness, and compassion'
my_lexicon.creator = 'DML' # your name or initials for transparency in logging who made changes
my_lexicon.version = '1.0' # Set version. Over time, others may modify your lexicon, so good to keep track. MAJOR.MINOR. (e.g., MAJOR: new constructs or big changes to a construct, Minor: small changes to a construct)
# Each construct is a dict. You can save a lot of metadata depending on what you provide for each construct, for instance:
print(my_lexicon.constructs)
{
'Insight': {
'variable_name': 'insight', # a name that is not sensitive to case with no spaces
'prompt_name': 'insight',
'domain': 'psychology', # to guide Gen AI model as to sense of the construct (depression has different senses in psychology, geology, and economics)
'examples': ['clarity', 'enlightenment', 'wise'], # to guide Gen AI model
'definition': "the clarity of understanding of one's thoughts, feelings and behavior", # can be used in prompt and/or human validation
'definition_references': 'Grant, A. M., Franklin, J., & Langford, P. (2002). The self-reflection and insight scale: A new measure of private self-consciousness. Social Behavior and Personality: an international journal, 30(8), 821-835.',
'tokens': ['acknowledgment',
'acuity',
'acumen',
'analytical',
'astute',
'awareness',
'clarity',
...],
'tokens_lemmatized': [], # when counting you can lemmatize all tokens for better results
'remove': [], #which tokens to remove
'tokens_metadata': {'gpt-4o-2024-05-13, temperature-0, ...': {
'action': 'create',
'tokens': [...],
'prompt': 'Provide many single words and some short phrases ...',
'time_elapsed': 14.21},
{'gpt-4o-2024-05-13, temperature-1, ...': { ... }},
}
},
'Mindfulness': {...},
'Compassion': {...},
}
See docs/contributing.md