ArXivRecommenderSystem / data_cleaning.py
Michael-Geis
removed empty embedding folder
d129f38
raw
history blame
10.4 kB
import regex
import pandas as pd
import json
import sentence_transformers.util
import os
def main(raw_metadata_df, path_to_embeddings):
clean_metadata_df = pd.DataFrame(
columns=['sentences','authors','msc_tags','msc_cos_sim']
)
clean_title = raw_metadata_df.title.apply(cleanse)
clean_abstract = raw_metadata_df.summary.apply(cleanse)
clean_metadata_df.sentences = clean_title + ' ' + clean_abstract
clean_metadata_df.authors = raw_metadata_df.authors
clean_metadata_df.msc_tags = raw_metadata_df.categories.apply(cats_to_msc)
return clean_metadata_df
##
def category_map():
"""Maps arXiv subject categories to their full english names.
Returns:
Python dict whose keys are arXiv tags and whose values are their English names.
Note that the list is not exhaustive in the sense that many categories have aliases that
are not included. (Some are, e.g. math.MP and math-ph).
"""
return {'astro-ph': 'Astrophysics',
'astro-ph.CO': 'Cosmology and Nongalactic Astrophysics',
'astro-ph.EP': 'Earth and Planetary Astrophysics',
'astro-ph.GA': 'Astrophysics of Galaxies',
'astro-ph.HE': 'High Energy Astrophysical Phenomena',
'astro-ph.IM': 'Instrumentation and Methods for Astrophysics',
'astro-ph.SR': 'Solar and Stellar Astrophysics',
'cond-mat.dis-nn': 'Disordered Systems and Neural Networks',
'cond-mat.mes-hall': 'Mesoscale and Nanoscale Physics',
'cond-mat.mtrl-sci': 'Materials Science',
'cond-mat.other': 'Other Condensed Matter',
'cond-mat.quant-gas': 'Quantum Gases',
'cond-mat.soft': 'Soft Condensed Matter',
'cond-mat.stat-mech': 'Statistical Mechanics',
'cond-mat.str-el': 'Strongly Correlated Electrons',
'cond-mat.supr-con': 'Superconductivity',
'cond-mat': 'Condensed Matter',
'cs.AI': 'Artificial Intelligence',
'cs.AR': 'Hardware Architecture',
'cs.CC': 'Computational Complexity',
'cs.CE': 'Computational Engineering, Finance, and Science',
'cs.CG': 'Computational Geometry',
'cs.CL': 'Computation and Language',
'cs.CR': 'Cryptography and Security',
'cs.CV': 'Computer Vision and Pattern Recognition',
'cs.CY': 'Computers and Society',
'cs.DB': 'Databases',
'cs.DC': 'Distributed, Parallel, and Cluster Computing',
'cs.DL': 'Digital Libraries',
'cs.DM': 'Discrete Mathematics',
'cs.DS': 'Data Structures and Algorithms',
'cs.ET': 'Emerging Technologies',
'cs.FL': 'Formal Languages and Automata Theory',
'cs.GL': 'General Literature',
'cs.GR': 'Graphics',
'cs.GT': 'Computer Science and Game Theory',
'cs.HC': 'Human-Computer Interaction',
'cs.IR': 'Information Retrieval',
'cs.IT': 'Information Theory',
'cs.LG': 'Machine Learning',
'cs.LO': 'Logic in Computer Science',
'cs.MA': 'Multiagent Systems',
'cs.MM': 'Multimedia',
'cs.MS': 'Mathematical Software',
'cs.NA': 'Numerical Analysis',
'cs.NE': 'Neural and Evolutionary Computing',
'cs.NI': 'Networking and Internet Architecture',
'cs.OH': 'Other Computer Science',
'cs.OS': 'Operating Systems',
'cs.PF': 'Performance',
'cs.PL': 'Programming Languages',
'cs.RO': 'Robotics',
'cs.SC': 'Symbolic Computation',
'cs.SD': 'Sound',
'cs.SE': 'Software Engineering',
'cs.SI': 'Social and Information Networks',
'cs.SY': 'Systems and Control',
'econ.EM': 'Econometrics',
'econ.GN': 'General Economics',
'econ.TH': 'Theoretical Economics',
'eess.AS': 'Audio and Speech Processing',
'eess.IV': 'Image and Video Processing',
'eess.SP': 'Signal Processing',
'eess.SY': 'Systems and Control',
'dg-ga': 'Differential Geometry',
'gr-qc': 'General Relativity and Quantum Cosmology',
'hep-ex': 'High Energy Physics - Experiment',
'hep-lat': 'High Energy Physics - Lattice',
'hep-ph': 'High Energy Physics - Phenomenology',
'hep-th': 'High Energy Physics - Theory',
'math.AC': 'Commutative Algebra',
'math.AG': 'Algebraic Geometry',
'math.AP': 'Analysis of PDEs',
'math.AT': 'Algebraic Topology',
'math.CA': 'Classical Analysis and ODEs',
'math.CO': 'Combinatorics',
'math.CT': 'Category Theory',
'math.CV': 'Complex Variables',
'math.DG': 'Differential Geometry',
'math.DS': 'Dynamical Systems',
'math.FA': 'Functional Analysis',
'math.GM': 'General Mathematics',
'math.GN': 'General Topology',
'math.GR': 'Group Theory',
'math.GT': 'Geometric Topology',
'math.HO': 'History and Overview',
'math.IT': 'Information Theory',
'math.KT': 'K-Theory and Homology',
'math.LO': 'Logic',
'math.MG': 'Metric Geometry',
'math.MP': 'Mathematical Physics',
'math.NA': 'Numerical Analysis',
'math.NT': 'Number Theory',
'math.OA': 'Operator Algebras',
'math.OC': 'Optimization and Control',
'math.PR': 'Probability',
'math.QA': 'Quantum Algebra',
'math.RA': 'Rings and Algebras',
'math.RT': 'Representation Theory',
'math.SG': 'Symplectic Geometry',
'math.SP': 'Spectral Theory',
'math.ST': 'Statistics Theory',
'math-ph': 'Mathematical Physics',
'funct-an': 'Functional Analysis',
'alg-geom': 'Algebraic Geometry',
'nlin.AO': 'Adaptation and Self-Organizing Systems',
'chao-dyn': 'Chaotic Dynamics',
'nlin.CD': 'Chaotic Dynamics',
'nlin.CG': 'Cellular Automata and Lattice Gases',
'nlin.PS': 'Pattern Formation and Solitons',
'nlin.SI': 'Exactly Solvable and Integrable Systems',
'nucl-ex': 'Nuclear Experiment',
'nucl-th': 'Nuclear Theory',
'physics.acc-ph': 'Accelerator Physics',
'physics.ao-ph': 'Atmospheric and Oceanic Physics',
'physics.app-ph': 'Applied Physics',
'physics.atm-clus': 'Atomic and Molecular Clusters',
'physics.atom-ph': 'Atomic Physics',
'physics.bio-ph': 'Biological Physics',
'physics.chem-ph': 'Chemical Physics',
'physics.class-ph': 'Classical Physics',
'physics.comp-ph': 'Computational Physics',
'physics.data-an': 'Data Analysis, Statistics and Probability',
'physics.ed-ph': 'Physics Education',
'physics.flu-dyn': 'Fluid Dynamics',
'physics.gen-ph': 'General Physics',
'physics.geo-ph': 'Geophysics',
'physics.hist-ph': 'History and Philosophy of Physics',
'physics.ins-det': 'Instrumentation and Detectors',
'physics.med-ph': 'Medical Physics',
'physics.optics': 'Optics',
'physics.plasm-ph': 'Plasma Physics',
'physics.pop-ph': 'Popular Physics',
'physics.soc-ph': 'Physics and Society',
'physics.space-ph': 'Space Physics',
'q-bio.BM': 'Biomolecules',
'q-bio.CB': 'Cell Behavior',
'q-bio.GN': 'Genomics',
'q-bio.MN': 'Molecular Networks',
'q-bio.NC': 'Neurons and Cognition',
'q-bio.OT': 'Other Quantitative Biology',
'q-bio.PE': 'Populations and Evolution',
'q-bio.QM': 'Quantitative Methods',
'q-bio.SC': 'Subcellular Processes',
'q-bio.TO': 'Tissues and Organs',
'q-fin.CP': 'Computational Finance',
'q-fin.EC': 'Economics',
'q-fin.GN': 'General Finance',
'q-fin.MF': 'Mathematical Finance',
'q-fin.PM': 'Portfolio Management',
'q-fin.PR': 'Pricing of Securities',
'q-fin.RM': 'Risk Management',
'q-fin.ST': 'Statistical Finance',
'q-fin.TR': 'Trading and Market Microstructure',
'quant-ph': 'Quantum Physics',
'q-alg' : 'Quantum Algebra',
'stat.AP': 'Applications',
'stat.CO': 'Computation',
'stat.ME': 'Methodology',
'stat.ML': 'Machine Learning',
'stat.OT': 'Other Statistics',
'stat.TH': 'Statistics Theory'}
## 1. Latin-ize latex accents enclosed in brackets
def remove_latex_accents(string):
accent = r'\\[\'\"\^\`H\~ckl=bdruvtoi]\{([a-z])\}'
replacement = r'\1'
string = regex.sub(accent,replacement, string)
return string
## 2. Remove latex environments
def remove_env(string):
env = r'\\[a-z]{2,}{[^{}]+?}'
string = regex.sub(env,'',string)
return string
## 3. Latin-ize non-{} enclosed latex accents:
def remove_accents(string):
accent = r'\\[\'\"\^\`H\~ckl=bdruvtoi]([a-z])'
replacement = r'\1'
string = regex.sub(accent,replacement,string)
return string
## 4. ONLY remove latex'd math that is separated as a 'word' i.e. has space characters on either side of it.
def remove_latex(string):
latex = r'\s(\$\$?)[^\$]*?\1\S*'
string = regex.sub(latex,' LATEX ',string)
return string
def cleanse(string):
string = string.replace('\n',' ')
string = remove_latex_accents(string)
string = remove_env(string)
string = remove_accents(string)
string = remove_latex(string)
return string
##
def find_hyph(text):
pattern = r'(?<!-)\b(?:\w+)(?=-)(?:-(?=\w)\w+)+(?!-)\b'
keywords = regex.findall(pattern,text)
if keywords == []:
return None
else:
return list(set(keywords))
def find_msc(cat_list):
pattern = r'\b\d{2}[0-9a-zA-Z]{3}\b'
out = []
for cat in cat_list:
tags = regex.findall(pattern,cat)
for tag in tags:
out.append(tag)
return out
def msc_tags():
with open('./data/msc.json','r') as file:
text = file.read()
return json.loads(text)
def cats_to_msc(cat_list):
out = []
for tag in find_msc(cat_list):
if tag in msc_tags().keys():
out.append(msc_tags()[tag])
else:
continue
if out == []:
return None
else:
return out
##
def msc_encoded_dict():
encoded_tags = pd.read_parquet('./data/msc_mini_embeddings.parquet').to_numpy()
return {k : v for (k,v) in zip(msc_tags().values(), encoded_tags)}
def doc_encoded_dict():
library_embeddings = pd.read_parquet('./data/APSP_mini_vec.parquet')
docs = library_embeddings.docs.to_list()
encoded_docs = library_embeddings.vecs.to_numpy()
return {k : v for (k,v) in zip(docs , encoded_docs)}
def score_tags(processed_arxiv_row):
tag_list = processed_arxiv_row.msc_tags
title_plus_abstract = processed_arxiv_row.docs
if tag_list is None:
return None
embedded_msc_tags = [msc_encoded_dict()[tag] for tag in tag_list]
return sentence_transformers.util.semantic_search(
query_embeddings=doc_encoded_dict()[title_plus_abstract],
corpus_embeddings=embedded_msc_tags,
)[0]