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546.179139
average_word_embeddings_glove.6B.300d
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ArXiv ML Papers
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545.88194
average_word_embeddings_glove.6B.300d
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ArXiv ML Papers
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[ [ "time", "coming", "play", "came", "come", "team", "going", "players", "chance", "win" ], [ "year", "winning", "came", "second", "time", "world", "win", "coming", "final", "took" ], [ "win", "tournament", "play", "round", "second", "coming", "final", "match", "time", "fourth" ], [ "come", "government", "time", "year", "week", "likely", "month", "expected", "saying", "make" ], [ "time", "best", "come", "came", "year", "years", "way", "movie", "coming", "later" ], [ "way", "come", "example", "time", "make", "need", "use", "internet", "instance", "making" ] ]
4.640697
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BBC News
10
[ [ "athletics", "sued", "formally", "consortium", "broadcasting", "doping", "uefa", "olympic", "denies", "denied" ], [ "movie", "world", "country", "american", "russian", "television", "people", "media", "chinese", "want" ], [ "doubles", "spaniard", "roddick", "slam", "wimbledon", "federer", "seed", "henman", "singles", "upset" ], [ "risks", "stability", "fundamental", "sustainable", "implications", "processes", "innovation", "efficiency", "efficient", "enhance" ], [ "midfielder", "mourinho", "arsenal", "striker", "chelsea", "coach", "liverpool", "everton", "football", "league" ], [ "film", "scorsese", "actress", "starring", "actor", "bafta", "movie", "films", "comedy", "oscar" ], [ "adults", "unemployment", "children", "population", "poverty", "disease", "child", "infected", "living", "age" ], [ "wireless", "pc", "desktop", "xbox", "playstation", "pcs", "handsets", "handheld", "digital", "ipod" ], [ "viruses", "drug", "plant", "doping", "athletes", "facilities", "water", "virus", "drugs", "infected" ], [ "championship", "championships", "athletics", "indoor", "rugby", "olympic", "medal", "olympics", "cup", "prix" ] ]
1.044015
average_word_embeddings_glove.6B.300d
0.95
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BBC News
20
[ [ "pension", "tax", "pensions", "taxes", "taxpayers", "savings", "budget", "legislation", "benefits", "income" ], [ "roddick", "spaniard", "federer", "henman", "seed", "ranked", "doubles", "wimbledon", "bt", "tennis" ], [ "barcelona", "women", "madrid", "milan", "italian", "spanish", "brazilian", "people", "woman", "city" ], [ "band", "song", "songs", "singer", "albums", "album", "chart", "pop", "rock", "rap" ], [ "nations", "countries", "european", "eu", "summit", "france", "ministers", "imf", "monetary", "euro" ], [ "olivier", "french", "dvd", "nicolas", "yen", "prop", "playing", "plays", "argentina", "roddick" ], [ "university", "education", "economist", "health", "studies", "professor", "correspondent", "services", "foundation", "research" ], [ "operate", "seats", "tickets", "pay", "airlines", "fly", "stake", "owners", "passengers", "shareholders" ], [ "guilty", "judge", "doping", "prosecutors", "convicted", "lawsuit", "charges", "pleaded", "filed", "criminal" ], [ "pence", "shareholder", "stock", "deutsche", "shares", "vodafone", "shareholders", "takeover", "investors", "merger" ], [ "strategic", "russia", "oil", "yukos", "producer", "energy", "gas", "khodorkovsky", "natural", "gazprom" ], [ "striker", "midfielder", "liverpool", "chelsea", "mourinho", "arsenal", "goalkeeper", "everton", "defender", "barcelona" ], [ "sequel", "complex", "shadow", "chapter", "tale", "novel", "spider", "historic", "historical", "book" ], [ "letwin", "10bn", "1bn", "3bn", "000m", "9m", "gara", "2bn", "dems", "2m" ], [ "blair", "minister", "democrat", "prime", "leader", "election", "secretary", "mp", "deputy", "cabinet" ], [ "film", "starring", "bafta", "award", "actress", "actor", "awards", "oscar", "films", "directed" ], [ "sport", "households", "premium", "seats", "luxury", "tv", "broadcasters", "television", "broadcaster", "cent" ], [ "wealth", "genre", "culture", "values", "racist", "influence", "opinions", "belief", "moral", "passion" ], [ "everybody", "guys", "really", "bit", "somebody", "pretty", "wrong", "absolutely", "feel", "thing" ], [ "penalty", "penalties", "terror", "broadcast", "viewers", "violence", "fraud", "opponents", "illegal", "copyright" ] ]
1.05877
average_word_embeddings_glove.6B.300d
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BBC News
30
[ [ "traffic", "mail", "sites", "landscape", "royal", "studies", "cultural", "correspondent", "service", "airline" ], [ "pence", "shareholders", "shares", "deutsche", "frankfurt", "stock", "takeover", "merger", "exchange", "index" ], [ "son", "friend", "maker", "convicted", "father", "ibm", "daughter", "wife", "born", "died" ], [ "realise", "3bn", "gamers", "9m", "attitude", "sensible", "ambition", "enjoy", "genre", "enjoying" ], [ "schools", "college", "mac", "students", "attend", "teachers", "screening", "education", "association", "commissioner" ], [ "engines", "brands", "plant", "cars", "manufacturing", "engine", "factory", "vehicles", "sales", "car" ], [ "nominations", "awards", "rankings", "categories", "winners", "chart", "award", "outstanding", "000", "prizes" ], [ "diaries", "rafael", "jose", "madrid", "milan", "barcelona", "brazilian", "maria", "spanish", "manifesto" ], [ "poverty", "disease", "aids", "developing", "africa", "poorest", "drugs", "virus", "infected", "drug" ], [ "collection", "loan", "loans", "banks", "items", "departments", "department", "securities", "books", "housing" ], [ "taxpayers", "savings", "tax", "pensions", "taxes", "pension", "retirement", "payments", "budget", "bills" ], [ "spam", "google", "web", "mail", "malicious", "viruses", "virus", "spammers", "websites", "software" ], [ "jean", "gara", "nicolas", "french", "olivier", "france", "italian", "spain", "german", "italy" ], [ "metres", "squad", "athletes", "bomb", "relay", "football", "scrum", "honours", "olympics", "rugby" ], [ "findings", "gmt", "department", "contained", "assess", "committee", "environmental", "carefully", "complex", "departments" ], [ "mortgage", "property", "homes", "buildings", "bank", "secure", "land", "chase", "housing", "units" ], [ "keyboard", "engineering", "systems", "laboratory", "signals", "device", "capability", "processes", "computing", "technology" ], [ "society", "research", "art", "artists", "wealth", "auction", "institute", "children", "foundation", "collection" ], [ "song", "album", "songs", "albums", "band", "singer", "chart", "rap", "pop", "charts" ], [ "eu", "trade", "copyright", "legislation", "ban", "restrictions", "commerce", "laws", "regulations", "promote" ], [ "zealand", "trading", "index", "000m", "assembly", "mixed", "capt", "pence", "bell", "commons" ], [ "century", "underground", "revolution", "lessons", "abandoned", "church", "square", "theme", "gazprom", "radical" ], [ "rugby", "tour", "tournament", "tennis", "championships", "wimbledon", "sport", "championship", "club", "football" ], [ "slowing", "economists", "gdp", "slowdown", "growth", "inflation", "outlook", "rate", "recession", "decline" ], [ "editor", "writer", "sir", "appointed", "published", "author", "lord", "novel", "secretary", "minister" ], [ "minutes", "france", "seconds", "really", "minute", "score", "ball", "right", "french", "got" ], [ "spokeswoman", "blunkett", "spokesman", "said", "told", "jeremy", "jamie", "clothes", "kate", "letwin" ], [ "brussels", "imports", "engines", "parliament", "fuel", "eu", "britain", "items", "text", "straw" ], [ "playing", "plays", "fat", "players", "played", "play", "indian", "yen", "referee", "board" ], [ "forum", "hosted", "jim", "breakfast", "bob", "sports", "marketing", "advertising", "host", "agriculture" ] ]
1.185691
average_word_embeddings_glove.6B.300d
0.946667
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0.230971
0.923831
42
BBC News
40
[ [ "doping", "drugs", "drug", "tests", "suspension", "sprinter", "tested", "banned", "positive", "athletes" ], [ "lewsey", "andrew", "davies", "bafta", "stephen", "bell", "edinburgh", "australia", "silk", "wales" ], [ "signing", "contract", "contracts", "lewsey", "scrum", "relay", "honours", "woodward", "football", "replacements" ], [ "score", "goal", "pass", "penalty", "kick", "seconds", "minutes", "minute", "scored", "shot" ], [ "billions", "dollars", "worth", "million", "billion", "bought", "buy", "millions", "invest", "distribute" ], [ "criminals", "suspected", "police", "arrested", "killing", "killed", "assault", "convicted", "detained", "suspects" ], [ "retail", "operations", "consultancy", "planning", "unit", "management", "chain", "independent", "gartner", "assessment" ], [ "university", "director", "spokesman", "david", "van", "spokeswoman", "said", "robert", "born", "institute" ], [ "church", "1960s", "1970s", "records", "contains", "warner", "abandoned", "century", "label", "revolution" ], [ "festive", "consultancy", "gartner", "holiday", "dvds", "piracy", "oil", "christmas", "games", "retailers" ], [ "storage", "records", "lord", "stolen", "ticket", "tickets", "collection", "chambers", "stored", "keeper" ], [ "engineering", "indian", "industries", "sectors", "sector", "telecommunications", "india", "telecoms", "stocks", "gained" ], [ "festival", "theatre", "opera", "italy", "concert", "france", "frankfurt", "paris", "germany", "rome" ], [ "scrum", "corry", "damien", "olivier", "flanker", "replacements", "capt", "nicolas", "france", "jean" ], [ "movies", "film", "films", "starring", "movie", "sequel", "hollywood", "starred", "blockbuster", "directed" ], [ "technical", "direction", "data", "depth", "keyboard", "speeds", "engine", "pilot", "recorder", "miles" ], [ "bank", "sessions", "sec", "straw", "session", "agriculture", "forum", "meeting", "liam", "rubbish" ], [ "ankle", "knee", "hamstring", "surgery", "injuries", "injury", "hip", "foot", "injured", "suffered" ], [ "voters", "unions", "convention", "california", "democratic", "union", "voting", "votes", "candidates", "legislation" ], [ "dem", "khodorkovsky", "nokia", "exports", "producing", "contract", "production", "output", "workforce", "eu" ], [ "frankfurt", "deutsche", "pence", "shareholders", "takeover", "exchange", "merger", "euros", "london", "swap" ], [ "area", "water", "gas", "underground", "shopping", "shops", "popular", "land", "areas", "fuel" ], [ "scotland", "scrum", "wales", "rugby", "zealand", "ireland", "australia", "england", "irish", "squad" ], [ "consoles", "nintendo", "console", "playstation", "xbox", "psp", "gamers", "gaming", "handheld", "pc" ], [ "streets", "night", "concert", "rally", "morning", "afternoon", "evening", "festival", "scheduled", "saturday" ], [ "antonio", "manuel", "president", "wife", "san", "born", "son", "lived", "friend", "daughter" ], [ "liberal", "voters", "election", "candidate", "conservatives", "democratic", "party", "polls", "votes", "elections" ], [ "total", "votes", "parliamentary", "trophy", "euros", "000", "trillion", "list", "lists", "collected" ], [ "lords", "judge", "constitutional", "supreme", "court", "courts", "appeals", "laws", "granted", "law" ], [ "health", "screening", "kong", "college", "hong", "sex", "blunkett", "mac", "sessions", "schools" ], [ "equipment", "battery", "manufacturing", "eu", "manufacturers", "chip", "producers", "netherlands", "machine", "tommy" ], [ "400m", "800m", "200m", "500m", "100m", "1500m", "hurdles", "60m", "medallist", "sprint" ], [ "director", "watching", "outdoor", "arts", "institute", "cameras", "sports", "attended", "university", "forum" ], [ "subscribers", "handsets", "wireless", "mobile", "3g", "broadband", "vodafone", "phones", "phone", "handset" ], [ "aid", "poverty", "nations", "aids", "africa", "poorest", "imf", "tsunami", "summit", "countries" ], [ "commerce", "unveiled", "remarks", "unveil", "summit", "conference", "meeting", "forum", "unveils", "secretary" ], [ "deficit", "budget", "funding", "tax", "taxes", "budgets", "deficits", "spending", "cuts", "subsidies" ], [ "software", "malicious", "virus", "viruses", "linux", "windows", "servers", "microsoft", "desktop", "mac" ], [ "newcastle", "leeds", "norwich", "everton", "bristol", "manchester", "sheffield", "cardiff", "leicester", "liverpool" ], [ "drug", "research", "cell", "trials", "drugs", "analysis", "laboratory", "terrorism", "technologies", "studies" ] ]
1.201045
average_word_embeddings_glove.6B.300d
0.92
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0.255469
0.93409
42
BBC News
50
[ [ "theatre", "opera", "festival", "concert", "exhibition", "performances", "auction", "conducted", "art", "venue" ], [ "oscars", "award", "bafta", "awards", "nominations", "oscar", "prize", "nomination", "nominees", "nominated" ], [ "session", "street", "rally", "church", "trust", "rubbish", "bank", "forum", "councils", "community" ], [ "centre", "departments", "programmes", "programme", "centres", "bafta", "chart", "labour", "production", "agriculture" ], [ "oil", "fuel", "gas", "prices", "price", "water", "natural", "supply", "energy", "reserves" ], [ "praise", "bosses", "beat", "score", "deserved", "scorsese", "record", "proud", "fans", "margin" ], [ "board", "arts", "programs", "science", "environmental", "committee", "carefully", "findings", "program", "index" ], [ "engine", "vehicles", "car", "engines", "auto", "cars", "models", "motorcycle", "driving", "model" ], [ "bbc", "broadcasting", "tv", "radio", "broadcaster", "channel", "channels", "broadcast", "television", "presenter" ], [ "jobs", "correspondent", "hunt", "workforce", "chase", "toshiba", "trophy", "freedom", "apple", "pace" ], [ "laboratory", "technology", "engineering", "electronics", "research", "technologies", "toshiba", "equipment", "devices", "energy" ], [ "holiday", "retailers", "sales", "stores", "retail", "store", "shopping", "christmas", "clothing", "shops" ], [ "india", "session", "capt", "sessions", "asian", "telecoms", "indian", "skipper", "muslim", "ministers" ], [ "pass", "goal", "minute", "scored", "penalty", "kick", "seconds", "minutes", "goalkeeper", "ball" ], [ "seed", "bt", "roddick", "henman", "federer", "spaniard", "wimbledon", "ranked", "nicolas", "sets" ], [ "shot", "jean", "brazilian", "right", "ball", "french", "guy", "veteran", "manuel", "injured" ], [ "inflation", "economists", "rate", "slowdown", "slowing", "rates", "economist", "forecast", "unemployment", "recession" ], [ "console", "consoles", "psp", "xbox", "playstation", "nintendo", "handheld", "game", "gamers", "gaming" ], [ "hunting", "gaming", "underground", "police", "illegal", "suspected", "arrested", "bands", "hunt", "betting" ], [ "chicago", "mexico", "american", "los", "latin", "america", "states", "california", "brazil", "angeles" ], [ "cards", "bank", "security", "currency", "units", "battery", "card", "roles", "prison", "regime" ], [ "madrid", "mourinho", "jose", "barcelona", "milan", "spanish", "rafael", "manuel", "arsenal", "chelsea" ], [ "france", "pictures", "dvds", "studios", "dvd", "french", "format", "images", "disc", "formats" ], [ "party", "democratic", "election", "seats", "elections", "votes", "constituency", "electoral", "liberal", "democrat" ], [ "recognised", "manufacturing", "settled", "confirm", "relations", "registered", "asylum", "trade", "exports", "interviewed" ], [ "barcelona", "lopez", "milan", "rafael", "spokeswoman", "madrid", "antonio", "maria", "10bn", "el" ], [ "asset", "analysis", "analyst", "strategist", "stability", "securities", "flow", "bank", "trophy", "alcohol" ], [ "aged", "adults", "age", "47", "households", "65", "39", "44", "52", "34" ], [ "tsunami", "poverty", "relief", "aid", "disaster", "aids", "poorest", "africa", "estimated", "victims" ], [ "festival", "violence", "activists", "muslim", "racist", "poll", "jewish", "motivated", "mainstream", "documentary" ], [ "blunkett", "oaten", "pensioners", "henman", "gareth", "australian", "ferguson", "corry", "clive", "nigel" ], [ "exports", "manufacturers", "consumer", "imports", "export", "minister", "goods", "household", "loans", "manufacturing" ], [ "ireland", "dublin", "scottish", "edinburgh", "irish", "glasgow", "developers", "theatre", "windows", "scotland" ], [ "sports", "watching", "attended", "outdoor", "watched", "attend", "park", "watch", "exhibition", "stadium" ], [ "fat", "yen", "prop", "french", "players", "plays", "friendly", "play", "alcohol", "player" ], [ "school", "male", "german", "students", "russian", "boys", "alcohol", "language", "children", "female" ], [ "agency", "approved", "national", "legislation", "territory", "proposal", "approval", "survey", "ban", "regulations" ], [ "contract", "signed", "contracts", "agreement", "signing", "deal", "commitment", "ambitious", "2003", "professional" ], [ "award", "prizes", "awards", "awarded", "prize", "ces", "outstanding", "medal", "winners", "achievement" ], [ "queen", "shot", "british", "gold", "american", "fa", "shareholders", "united", "ball", "red" ], [ "court", "legal", "laws", "courts", "supreme", "rights", "appeals", "constitutional", "copyright", "law" ], [ "european", "countries", "eu", "nations", "trade", "summit", "ministers", "brussels", "imf", "forum" ], [ "hopefully", "nominations", "going", "wait", "nomination", "happen", "sure", "lot", "everybody", "oscars" ], [ "tennis", "bodies", "outdoor", "lewsey", "association", "historical", "body", "motion", "inquiry", "experiences" ], [ "mac", "commissioner", "index", "screening", "breakfast", "intel", "hong", "kong", "van", "keane" ], [ "told", "said", "chairman", "spokesman", "director", "institute", "robert", "van", "steve", "spokeswoman" ], [ "blair", "prime", "minister", "scandal", "allegations", "blunkett", "tony", "downing", "bush", "talks" ], [ "military", "command", "security", "officers", "police", "senior", "vladimir", "officer", "service", "intelligence" ], [ "china", "japan", "yuan", "beijing", "yen", "kong", "hong", "chinese", "japanese", "korea" ], [ "ofcom", "executive", "workforce", "annual", "gara", "chairman", "broadband", "waste", "statistics", "review" ] ]
1.397449
average_word_embeddings_glove.6B.300d
0.898
-0.248271
0.244541
0.917434
42
BBC News
CombinedTM
10
[ [ "of", "the", "to", "and", "is", "that", "it", "in", "for", "be" ], [ "economy", "year", "china", "us", "yukos", "its", "bank", "oil", "growth", "prices" ], [ "agency", "low", "once", "executive", "itself", "sell", "car", "virus", "mail", "compensation" ], [ "comedy", "band", "awards", "film", "album", "director", "nominated", "prize", "actress", "award" ], [ "was", "his", "half", "after", "ireland", "second", "final", "in", "wales", "victory" ], [ "steve", "jump", "soul", "taking", "named", "argument", "men", "holder", "else", "indoor" ], [ "chancellor", "mr", "said", "would", "he", "brown", "party", "leader", "election", "prime" ], [ "executive", "spam", "board", "shares", "poor", "stock", "major", "profits", "potential", "mail" ], [ "to", "technology", "and", "mobile", "of", "are", "digital", "is", "more", "people" ], [ "injury", "arsenal", "madrid", "situation", "barcelona", "league", "game", "united", "chelsea", "face" ] ]
480.499243
average_word_embeddings_glove.6B.300d
0.93
-0.06176
0.163826
0.817069
42
BBC News
CombinedTM
20
[ [ "bid", "exchange", "gazprom", "oil", "deal", "deutsche", "russian", "london", "company", "talks" ], [ "north", "office", "release", "place", "starring", "box", "films", "7m", "1m", "weekend" ], [ "in", "her", "was", "title", "world", "indoor", "record", "for", "olympic", "he" ], [ "and", "it", "is", "definition", "that", "dvd", "the", "mini", "you", "mac" ], [ "mr", "silk", "eu", "was", "his", "the", "lord", "advice", "he", "said" ], [ "police", "court", "would", "said", "plans", "hunting", "local", "workers", "id", "murder" ], [ "million", "mobile", "mobiles", "3g", "uk", "broadband", "will", "tv", "operators", "phone" ], [ "johnson", "appointed", "wonderful", "matter", "seats", "age", "longer", "charged", "poverty", "heard" ], [ "programs", "software", "spam", "users", "security", "virus", "windows", "microsoft", "viruses", "websites" ], [ "indian", "shares", "profits", "products", "low", "euros", "poor", "latin", "banks", "profit" ], [ "half", "minutes", "wales", "robinson", "nations", "ireland", "after", "try", "england", "ball" ], [ "interest", "prices", "dollar", "rates", "growth", "rate", "fall", "2004", "rise", "december" ], [ "of", "the", "to", "and", "that", "song", "robbie", "25", "in", "it" ], [ "gives", "required", "energy", "winter", "reason", "employers", "tsunami", "remember", "proposed", "regulation" ], [ "team", "injury", "cup", "playing", "play", "round", "against", "match", "start", "league" ], [ "mr", "campaign", "labour", "brown", "howard", "he", "prime", "chancellor", "election", "blair" ], [ "assault", "committed", "talking", "women", "west", "tried", "manager", "comes", "manage", "white" ], [ "to", "hip", "of", "it", "that", "is", "and", "the", "hop", "you" ], [ "film", "rock", "award", "comedy", "night", "director", "awards", "star", "actor", "prize" ], [ "tax", "of", "budget", "for", "yukos", "said", "to", "by", "aids", "russian" ] ]
363.609921
average_word_embeddings_glove.6B.300d
0.88
-0.040945
0.160117
0.837652
42
BBC News
CombinedTM
30
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396.802948
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40
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383.932157
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BBC News
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50
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419.089207
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313.231972
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6.43562
all-mpnet-base-v2
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ArXiv ML Papers
LDA
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12.017465
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ArXiv ML Papers
LDA
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15.441612
all-mpnet-base-v2
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ArXiv ML Papers
LDA
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17.380404
all-mpnet-base-v2
0.426667
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0.188912
0.653999
42
ArXiv ML Papers
LDA
40
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17.695049
all-mpnet-base-v2
0.405
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0.182069
0.636761
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