--- tags: - bertopic library_name: bertopic pipeline_tag: text-classification --- # potloc-topic-model This is a [BERTopic](https://github.com/MaartenGr/BERTopic) model. BERTopic is a flexible and modular topic modeling framework that allows for the generation of easily interpretable topics from large datasets. ## Usage To use this model, please install BERTopic: ``` pip install -U bertopic ``` You can use the model as follows: ```python from bertopic import BERTopic topic_model = BERTopic.load("joshEm/potloc-topic-model") topic_model.get_topic_info() ``` ## Topic overview * Number of topics: 132 * Number of training documents: 10000
Click here for an overview of all topics. | Topic ID | Topic Keywords | Topic Frequency | Label | |----------|----------------|-----------------|-------| | -1 | the - in - and - of - to | 10 | -1_the_in_and_of | | 0 | computer - yahoo - windows - click - can | 3344 | 0_computer_yahoo_windows_click | | 1 | god - jesus - bible - of - believe | 958 | 1_god_jesus_bible_of | | 2 | bush - president - war - iraq - us | 487 | 2_bush_president_war_iraq | | 3 | court - job - to - for - jail | 387 | 3_court_job_to_for | | 4 | equation - solve - number - answer - numbers | 208 | 4_equation_solve_number_answer | | 5 | foreheadnheadon - directly - apply - skin - ear | 162 | 5_foreheadnheadon_directly_apply_skin | | 6 | song - lyrics - me - oh - music | 130 | 6_song_lyrics_me_oh | | 7 | degree - school - university - college - courses | 123 | 7_degree_school_university_college | | 8 | credit - account - mortgage - bank - loan | 122 | 8_credit_account_mortgage_bank | | 9 | music - song - songs - rock - favorite | 111 | 9_music_song_songs_rock | | 10 | friends - meet - friend - looking - woman | 109 | 10_friends_meet_friend_looking | | 11 | sex - orgasm - sexual - ejaculation - men | 95 | 11_sex_orgasm_sexual_ejaculation | | 12 | where - ebay - buy - shirt - find | 94 | 12_where_ebay_buy_shirt | | 13 | usa - cup - world - win - team | 90 | 13_usa_cup_world_win | | 14 | illegal - immigrants - mexico - illegals - immigration | 81 | 14_illegal_immigrants_mexico_illegals | | 15 | ball - sport - bowling - play - tennis | 80 | 15_ball_sport_bowling_play | | 16 | plants - plant - whales - species - seals | 78 | 16_plants_plant_whales_species | | 17 | man - joke - said - he - she | 77 | 17_man_joke_said_he | | 18 | him - he - me - guy - but | 72 | 18_him_he_me_guy | | 19 | period - doctor - periods - pregnant - pregnancy | 65 | 19_period_doctor_periods_pregnant | | 20 | study - math - test - sat - practice | 64 | 20_study_math_test_sat | | 21 | water - solution - moles - reaction - grams | 64 | 21_water_solution_moles_reaction | | 22 | flag - 1918 - of - was - the | 63 | 22_flag_1918_of_was | | 23 | means - french - mi - word - mean | 63 | 23_means_french_mi_word | | 24 | baseball - player - he - sox - pitcher | 62 | 24_baseball_player_he_sox | | 25 | girls - guys - men - girl - women | 60 | 25_girls_guys_men_girl | | 26 | questions - points - question - bored - answers | 60 | 26_questions_points_question_bored | | 27 | sleep - feel - hours - depression - you | 57 | 27_sleep_feel_hours_depression | | 28 | dna - genetic - blood - gene - cells | 54 | 28_dna_genetic_blood_gene | | 29 | english - language - french - learn - spanish | 54 | 29_english_language_french_learn | | 30 | search - find - name - looking - address | 53 | 30_search_find_name_looking | | 31 | word - winter - words - letters - letter | 53 | 31_word_winter_words_letters | | 32 | weight - calories - fat - diet - eat | 52 | 32_weight_calories_fat_diet | | 33 | bowl - game - qb - team - usc | 47 | 33_bowl_game_qb_team | | 34 | moon - time - horizon - day - sun | 47 | 34_moon_time_horizon_day | | 35 | wwe - guerrero - tna - diva - cena | 45 | 35_wwe_guerrero_tna_diva | | 36 | her - mom - gift - she - ideas | 44 | 36_her_mom_gift_she | | 37 | him - he - sister - my - his | 44 | 37_him_he_sister_my | | 38 | book - books - read - harlem - beard | 43 | 38_book_books_read_harlem | | 39 | color - blue - sky - light - colors | 43 | 39_color_blue_sky_light | | 40 | tax - taxes - unemployment - state - income | 42 | 40_tax_taxes_unemployment_state | | 41 | alamo - movie - movies - trilogy - aka | 42 | 41_alamo_movie_movies_trilogy | | 42 | show - watch - anime - episodes - tv | 42 | 42_show_watch_anime_episodes | | 43 | insurance - health - disability - help - for | 42 | 43_insurance_health_disability_help | | 44 | girl - her - she - likes - ask | 42 | 44_girl_her_she_likes | | 45 | navy - military - army - marine - marines | 41 | 45_navy_military_army_marine | | 46 | white - black - racist - blacks - racism | 40 | 46_white_black_racist_blacks | | 47 | cheat - spouse - wife - her - she | 40 | 47_cheat_spouse_wife_her | | 48 | he - him - likes - guy - me | 39 | 48_he_him_likes_guy | | 49 | visa - passport - birth - us - citizen | 38 | 49_visa_passport_birth_us | | 50 | marijuana - drug - weed - opium - test | 37 | 50_marijuana_drug_weed_opium | | 51 | velocity - force - angle - cm - triangle | 37 | 51_velocity_force_angle_cm | | 52 | cup - championship - world - player - euro | 36 | 52_cup_championship_world_player | | 53 | nascar - racing - fight - gordon - sport | 33 | 53_nascar_racing_fight_gordon | | 54 | celebrities - tom - celebrity - her - jolie | 32 | 54_celebrities_tom_celebrity_her | | 55 | cricket - india - batsman - dravid - indian | 31 | 55_cricket_india_batsman_dravid | | 56 | weight - eat - skinny - fat - healthy | 30 | 56_weight_eat_skinny_fat | | 57 | eye - lenses - astigmatism - eyes - glasses | 30 | 57_eye_lenses_astigmatism_eyes | | 58 | people - yourself - person - others - confidence | 29 | 58_people_yourself_person_others | | 59 | stock - fund - shares - mutual - market | 29 | 59_stock_fund_shares_mutual | | 60 | arsenal - liverpool - league - fans - celtic | 29 | 60_arsenal_liverpool_league_fans | | 61 | warming - global - climate - ice - snow | 29 | 61_warming_global_climate_ice | | 62 | her - she - friend - friends - me | 28 | 62_her_she_friend_friends | | 63 | wave - frequency - electromagnetic - radar - antenna | 28 | 63_wave_frequency_electromagnetic_radar | | 64 | dream - dreams - my - elevator - was | 27 | 64_dream_dreams_my_elevator | | 65 | gauge - bullet - caliber - gun - barrel | 27 | 65_gauge_bullet_caliber_gun | | 66 | pain - knee - elbow - tennis - shoulder | 27 | 66_pain_knee_elbow_tennis | | 67 | beach - trail - resort - appalachian - shaw | 26 | 67_beach_trail_resort_appalachian | | 68 | scam - home - quixtar - money - survey | 25 | 68_scam_home_quixtar_money | | 69 | business - sell - idea - start - money | 25 | 69_business_sell_idea_start | | 70 | tv - watch - channels - espn - cup | 25 | 70_tv_watch_channels_espn | | 71 | abs - muscles - exercises - reps - muscle | 25 | 71_abs_muscles_exercises_reps | | 72 | hair - shave - cut - pubic - trim | 25 | 72_hair_shave_cut_pubic | | 73 | psychic - divination - astrology - cards - tarot | 25 | 73_psychic_divination_astrology_cards | | 74 | number - phone - code - address - area | 24 | 74_number_phone_code_address | | 75 | was - my - hit - ever - freezer | 24 | 75_was_my_hit_ever | | 76 | trailers - trailer - dvd - media - wmp | 24 | 76_trailers_trailer_dvd_media | | 77 | penis - condom - size - sex - inches | 24 | 77_penis_condom_size_sex | | 78 | love - person - beloved - live - we | 24 | 78_love_person_beloved_live | | 79 | war - world - countries - soviet - were | 24 | 79_war_world_countries_soviet | | 80 | de - le - la - et - les | 24 | 80_de_le_la_et | | 81 | job - jobs - guard - where - work | 24 | 81_job_jobs_guard_where | | 82 | christmas - thanksgiving - holidays - celebrate - tree | 24 | 82_christmas_thanksgiving_holidays_celebrate | | 83 | hepatitis - pneumonia - infections - vaccination - link | 23 | 83_hepatitis_pneumonia_infections_vaccination | | 84 | peanuts - ibs - may - heartburn - bowel | 22 | 84_peanuts_ibs_may_heartburn | | 85 | name - sarah - named - pronounced - my | 21 | 85_name_sarah_named_pronounced | | 86 | kids - he - husband - him - cheated | 20 | 86_kids_he_husband_him | | 87 | gas - oil - energy - kingdom - 2006 | 19 | 87_gas_oil_energy_kingdom | | 88 | taller - tall - height - grow - short | 19 | 88_taller_tall_height_grow | | 89 | estate - property - heirs - lien - damages | 19 | 89_estate_property_heirs_lien | | 90 | aluminum - 68 - element - 212 - metal | 18 | 90_aluminum_68_element_212 | | 91 | organization - management - organizational - behavior - leadership | 18 | 91_organization_management_organizational_behavior | | 92 | melatonin - medication - effects - dosage - zofran | 18 | 92_melatonin_medication_effects_dosage | | 93 | smoking - quit - smoke - smoked - session | 17 | 93_smoking_quit_smoke_smoked | | 94 | nba - referees - game - heat - win | 17 | 94_nba_referees_game_heat | | 95 | superman - doom - hero - vs - super | 17 | 95_superman_doom_hero_vs | | 96 | skateboarding - skateboard - snowboard - snowboarding - gymnastics | 17 | 96_skateboarding_skateboard_snowboard_snowboarding | | 97 | electron - quarks - neutrons - antimatter - particle | 16 | 97_electron_quarks_neutrons_antimatter | | 98 | happy - happiness - life - rushhour - secret | 16 | 98_happy_happiness_life_rushhour | | 99 | fart - farting - gas - embarrassing - flatus | 16 | 99_fart_farting_gas_embarrassing | | 100 | teeth - tooth - dentist - gums - braces | 16 | 100_teeth_tooth_dentist_gums | | 101 | scorpio - zodiac - libra - signs - cancers | 16 | 101_scorpio_zodiac_libra_signs | | 102 | dog - wolf - sheep - horse - animal | 16 | 102_dog_wolf_sheep_horse | | 103 | hiv - aids - virus - infected - blood | 16 | 103_hiv_aids_virus_infected | | 104 | thanked - poem - poetry - she - were | 15 | 104_thanked_poem_poetry_she | | 105 | force - motion - mass - momentum - rocket | 15 | 105_force_motion_mass_momentum | | 106 | minister - president - kagame - prime - natchaba | 15 | 106_minister_president_kagame_prime | | 107 | kiss - kissing - lips - gently - tongue | 15 | 107_kiss_kissing_lips_gently | | 108 | pictures - photos - google - site - find | 15 | 108_pictures_photos_google_site | | 109 | dating - age - old - young - 19 | 14 | 109_dating_age_old_young | | 110 | ebay - sell - smc - selling - products | 14 | 110_ebay_sell_smc_selling | | 111 | planets - sun - stars - star - earth | 14 | 111_planets_sun_stars_star | | 112 | imports - trade - importing - oil - mobil | 14 | 112_imports_trade_importing_oil | | 113 | questions - question - politics - reported - answers | 14 | 113_questions_question_politics_reported | | 114 | gay - crackle - snap - girlfriend - marry | 14 | 114_gay_crackle_snap_girlfriend | | 115 | gravity - sun - earth - rotating - force | 13 | 115_gravity_sun_earth_rotating | | 116 | weaknesses - abt - strengths - interview - job | 13 | 116_weaknesses_abt_strengths_interview | | 117 | love - eachother - fall - forget - deeply | 13 | 117_love_eachother_fall_forget | | 118 | animals - pets - tv - cage - communicate | 13 | 118_animals_pets_tv_cage | | 119 | flax - yogurt - nonfat - health - healthy | 13 | 119_flax_yogurt_nonfat_health | | 120 | grants - grant - business - federal - entrepreneurs | 13 | 120_grants_grant_business_federal | | 121 | idol - american - chris - win - favorite | 12 | 121_idol_american_chris_win | | 122 | clubs - golf - hit - irons - iron | 12 | 122_clubs_golf_hit_irons | | 123 | lottery - scam - scammer - money - international | 12 | 123_lottery_scam_scammer_money | | 124 | address - email - presale - bart - michaels | 12 | 124_address_email_presale_bart | | 125 | jones - her - she - stargate - reynolds | 11 | 125_jones_her_she_stargate | | 126 | data - product - analysis - regression - marketing | 11 | 126_data_product_analysis_regression | | 127 | cancer - cure - tumor - parasite - cancers | 11 | 127_cancer_cure_tumor_parasite | | 128 | nba - paul - team - redick - kobe | 11 | 128_nba_paul_team_redick | | 129 | autism - autistic - homeschooling - child - she | 10 | 129_autism_autistic_homeschooling_child | | 130 | seller - nike - soccer - jersey - dynamo | 10 | 130_seller_nike_soccer_jersey |
## Training hyperparameters * calculate_probabilities: False * language: english * low_memory: False * min_topic_size: 10 * n_gram_range: (1, 1) * nr_topics: None * seed_topic_list: None * top_n_words: 10 * verbose: False * zeroshot_min_similarity: 0.7 * zeroshot_topic_list: None ## Framework versions * Numpy: 1.23.5 * HDBSCAN: 0.8.33 * UMAP: 0.5.5 * Pandas: 1.5.3 * Scikit-Learn: 1.2.2 * Sentence-transformers: 2.2.2 * Transformers: 4.35.2 * Numba: 0.58.1 * Plotly: 5.15.0 * Python: 3.10.12