research-backup/relbert-roberta-large-nce-b-nell
Feature Extraction • Updated
• 4
relation_type stringlengths 13 50 | positives sequence | negatives sequence |
|---|---|---|
concept:airportincity | [
[
"Arlanda",
"Stockholm"
],
[
"Spokane International",
"Spokane"
],
[
"Faro Airport",
"Faro"
],
[
"Faleolo",
"Samoa"
],
[
"Lester B Pearson International Airport",
"Toronto"
],
[
"Dulles",
"Washington D C"
],
[
"Bristol International",
... | [] |
concept:athleteledsportsteam | [
[
"Al Kaline",
"Brewers"
],
[
"Tony Romo",
"Cowboys 19 13"
],
[
"Akinori Iwamura",
"Tampa"
],
[
"Matt Barkley",
"Usc"
],
[
"Mike Carp",
"Seattle Mariners"
],
[
"Carlos Villanueva",
"Astros"
],
[
"Tony Stewart",
"Trevor Bayne"
],
[
... | [] |
concept:automobilemakercardealersinstateorprovince | [
[
"Lexus",
"New Jersey"
],
[
"Lexus",
"Texas"
],
[
"Lexus",
"Virginia"
],
[
"Gmc",
"Michigan"
],
[
"Kia",
"Texas"
],
[
"Kia",
"Florida"
],
[
"Kia",
"Ohio"
],
[
"Kia",
"Massachusetts"
],
[
"Kia",
"South Dakota"
... | [] |
concept:bankboughtbank | [
[
"Wells Fargo",
"Wachovia"
],
[
"Citigroup",
"Banamex"
],
[
"Citigroup",
"Wachovia"
],
[
"Credit Suisse",
"Dlj"
],
[
"Chase",
"Wamu"
],
[
"Chase",
"Bank One"
],
[
"Chase",
"Bear Stearns"
],
[
"Chase",
"Citigroup"
],
[
... | [] |
concept:ceoof | [
[
"Norbert Reithofer",
"Bmw"
],
[
"Gregg Steinhafel",
"Target Corp"
],
[
"Alain Belda",
"Alcoa"
],
[
"Michael O Leary",
"Ryanair"
],
[
"Brian Moynihan",
"Bank Of America"
],
[
"Carlos Ghosn",
"Renault"
],
[
"Indra K Nooyi",
"Pepsico"
... | [] |
concept:cityradiostation | [
[
"Tucson",
"Kxci"
],
[
"Boston",
"Weei"
],
[
"Baltimore",
"WJHU"
],
[
"Baltimore",
"Wbal"
],
[
"Juneau",
"Ktoo"
],
[
"Santa Cruz",
"Kusp"
],
[
"Fresno",
"Kvpr"
],
[
"New York",
"Wqxr"
],
[
"New York",
"Wcbs Tv"
... | [] |
concept:citytelevisionstation | [
[
"Rohnert Park",
"Krcb"
],
[
"Lancaster",
"Wgal Tv"
],
[
"Tucson",
"Kvoa"
],
[
"Tucson",
"Kold Tv"
],
[
"Springfield",
"Wics"
],
[
"Augusta",
"Wrdw"
],
[
"Boston",
"Wcvb"
],
[
"Boston",
"Wgbh"
],
[
"Boston",
"Wh... | [] |
concept:countriessuchascountries | [
[
"Non European Countries",
"Japan"
],
[
"Gulf Countries",
"Arabia Saudita"
],
[
"Austria",
"Eastern European Countries"
],
[
"Nato Members",
"UK"
],
[
"Nato Members",
"France France"
],
[
"Nato Members",
"Netherlands"
],
[
"Nato Members",
... | [] |
concept:countrycapital | [
[
"Marshall Islands",
"Majuro"
],
[
"Dominican Republic",
"Santo Domingo"
],
[
"Botswana",
"Gaborone"
],
[
"Bosnia Herzegovina",
"Sarajevo"
],
[
"Slovakia",
"Bratislava"
],
[
"Somalia",
"Mogadishu"
],
[
"Senegal",
"Dakar"
],
[
"... | [] |
concept:countryhascitizen | [
[
"Macedonia",
"Alexander"
],
[
"Macedonia",
"Philip"
],
[
"Orleans",
"Princess"
],
[
"France France",
"Princess"
],
[
"France France",
"Louise"
],
[
"France France",
"Queen"
],
[
"France France",
"John"
],
[
"France France",
... | [] |
concept:countryoforganizationheadquarters | [
[
"Colombia",
"Millonarios"
],
[
"France France",
"Lancome"
],
[
"China",
"Hong Kong Disneyland"
],
[
"Malaysia",
"Malaysian"
],
[
"Kenya",
"Kenya Airways"
],
[
"U S",
"U S Department"
],
[
"U S",
"Army"
],
[
"U S",
"Hud"
... | [] |
concept:countrystates | [
[
"Northern India",
"Uttar"
],
[
"Northern India",
"Bihar"
],
[
"Argentina",
"Tierra Del Fuego"
],
[
"China",
"Qinghai"
],
[
"China",
"Jiangsu"
],
[
"China",
"Shangdong"
],
[
"China",
"Fujian"
],
[
"Indonesia",
"Maluku"
],... | [] |
concept:drugpossiblytreatsphysiologicalcondition | [
[
"Topamax",
"Epilepsy"
],
[
"Topamax",
"Seizures"
],
[
"Adderall",
"Adhd"
],
[
"Adderall",
"Add"
],
[
"Zyprexa",
"Schizophrenia"
],
[
"Gabapentin",
"Seizures"
],
[
"Taxol",
"Breast Cancer"
],
[
"Taxol",
"Cancer"
],
[
... | [] |
concept:fatherofperson | [
[
"Noah",
"Shem"
],
[
"Enosh",
"Cainan"
],
[
"Heavenly Father",
"Jesus Christ"
],
[
"Heavenly Father",
"Lord"
],
[
"Heavenly Father",
"Jesus"
],
[
"Heavenly Father",
"Son"
],
[
"Esau",
"Ishmael"
],
[
"Esau",
"Moses"
],
[... | [] |
concept:hasofficeincountry | [
[
"Yamaha",
"Japan"
],
[
"Lotus",
"UK"
],
[
"Hong Kong Disneyland",
"China"
],
[
"Lg Electronics",
"Korea"
],
[
"Lg Electronics",
"Skorea"
],
[
"Lg Electronics",
"South Korea"
],
[
"Deutsche Bank",
"India"
],
[
"Wells Fargo",
... | [] |
concept:leaguecoaches | [
[
"MLB",
"Joe Torre"
],
[
"MLB",
"Curtis Granderson"
],
[
"MLB",
"Seth Smith"
],
[
"MLB",
"John Mcgraw"
],
[
"MLB",
"Jack Morris"
],
[
"NHL",
"John Fox"
],
[
"NHL",
"Bruce Boudreau"
],
[
"NHL",
"Kenny Natt"
],
[
"NHL... | [] |
concept:leaguestadiums | [
[
"NCAA",
"Kyle Field"
],
[
"NCAA",
"Ryan Center"
],
[
"NCAA",
"Legion Field"
],
[
"NCAA",
"Malone Stadium"
],
[
"NCAA",
"Dix Stadium"
],
[
"NCAA",
"Infocision Stadium"
],
[
"NCAA",
"Waldo Stadium"
],
[
"NCAA",
"Memorial Fie... | [] |
concept:musicartistmusician | [
[
"Former Beatles",
"Ringo Starr"
],
[
"Rem",
"Peter Buck"
],
[
"Ufo",
"Michael Schenker"
],
[
"Y T",
"Dave Meniketti"
],
[
"Yes",
"Steve Howe"
],
[
"Nirvana",
"Dave Grohl"
],
[
"The White Stripes",
"Meg White"
],
[
"Bee Gees",
... | [] |
concept:musicgenressuchasmusicgenres | [
[
"Power Metal",
"Metal"
],
[
"Grunge",
"Rock"
],
[
"Emo",
"Rock"
],
[
"Pop",
"Rock"
],
[
"Power Pop",
"Rock"
],
[
"Britpop",
"Pop"
],
[
"Britpop",
"Rock"
],
[
"Glam Metal",
"Metal"
],
[
"Glam Metal",
"Hair"
],... | [] |
concept:organizationnamehasacronym | [
[
"Federal Emergency Management Agency",
"Fema"
],
[
"Fair Isaac",
"Fico"
],
[
"Department",
"Administration"
],
[
"Department",
"Hud"
],
[
"Department",
"Agency"
],
[
"US Department",
"Agency"
],
[
"Cw Network",
"CNN"
],
[
"Nat... | [] |
concept:personalsoknownas | [
[
"Brad",
"Aaron Brooks"
],
[
"Brad",
"Adam Dunn"
],
[
"Brad",
"Raymond Felton"
],
[
"Brad",
"Frank"
],
[
"Brad",
"Miller"
],
[
"J R Smith",
"Cal Ripken Jr"
],
[
"Eric Piatkowski",
"Eric Snow"
],
[
"Pujols",
"Albert Pujols"
... | [] |
concept:personleadsgeopoliticalorganization | [
[
"David Dinkins",
"New York"
],
[
"Thomas Smith",
"Blawnox"
],
[
"Mahmoud Ahmadinejad",
"Tehran"
],
[
"Harold Washington",
"Chicago South"
],
[
"Shirley Franklin",
"Atlanta"
],
[
"Hazel Mccallion",
"Mississauga"
],
[
"Karzai",
"Kabul G... | [] |
concept:personmovedtostateorprovince | [
[
"Natalie",
"California"
],
[
"Melissa",
"California"
],
[
"Catherine",
"California"
],
[
"Pat",
"California"
],
[
"Bill",
"Illinois"
],
[
"Bill",
"Arizona"
],
[
"Bill",
"California"
],
[
"Daniel",
"California"
],
[
... | [] |
concept:politicianrepresentslocation | [
[
"William Mckinley",
"States"
],
[
"William Mckinley",
"United States"
],
[
"Mr Clinton",
"States"
],
[
"Gordon Smith",
"U S"
],
[
"Kennedy",
"States"
],
[
"Kennedy",
"United States"
],
[
"Kennedy",
"U S"
],
[
"Kennedy",
"U... | [] |
concept:politicianusholdsoffice | [
[
"Andrew Jackson",
"President"
],
[
"Kennedy",
"President"
],
[
"Kennedy",
"Senator"
],
[
"Kennedy",
"Secretary"
],
[
"Jonathan",
"President"
],
[
"Grover Cleveland",
"Secretary"
],
[
"Joe Biden",
"President"
],
[
"Joe Biden",
... | [] |
concept:statehascapital | [
[
"West Bengal",
"Calcutta"
],
[
"Arkansas",
"Little Rock"
],
[
"Montana",
"Helena"
],
[
"New York State",
"Albany"
],
[
"Tamil Nadu",
"Madurai"
],
[
"Sikkim",
"Gangtok"
],
[
"New Brunswick",
"St Leonard"
],
[
"Palestinian State... | [] |
concept:stateorprovinceoforganizationheadquarters | [
[
"Arkansas",
"Wal Mart Stores"
],
[
"New York State",
"Carolina"
],
[
"Texas",
"Eds"
],
[
"Washington",
"Peter D Hart Research Associates"
],
[
"Washington",
"Microsoft"
],
[
"Washington",
"Microsoft"
],
[
"Alberta",
"Pembina Institute... | [] |
concept:teamhomestadium | [
[
"Auburn Tigers",
"Jordan Hare Stadium"
],
[
"Titans",
"Lp Field"
],
[
"Lsu",
"Tiger Stadium"
],
[
"Golden State Warriors",
"Oracle Arena"
],
[
"Diamondbacks",
"Chase Field"
],
[
"Nashville Predators",
"Bridgestone Arena"
],
[
"Hawks Los A... | [] |
concept:teamplaysincity | [
[
"Cavaliers",
"Cleveland"
],
[
"Emory University",
"Atlanta"
],
[
"Villanova University",
"Philadelphia"
],
[
"Nyu",
"New York"
],
[
"Niu",
"Dekalb"
],
[
"Lsu",
"New Orleans"
],
[
"Vanderbilt University",
"Nashville"
],
[
"Diam... | [] |
concept:topmemberoforganization | [
[
"Norbert Reithofer",
"Bmw"
],
[
"Gregg Steinhafel",
"Target Corp"
],
[
"Alain Belda",
"Alcoa"
],
[
"Indra Nooyi",
"Pepsico"
],
[
"Margaret Carriere",
"Halliburton"
],
[
"Mr Yang",
"Lenovo Group"
],
[
"Michael O Leary",
"Ryanair"
],
... | [] |
concept:wifeof | [
[
"Reese Witherspoon",
"Ryan Phillippe"
],
[
"Diane Kruger",
"Joshua Jackson"
],
[
"Kate Middleton",
"William"
],
[
"Hagar",
"Abram"
],
[
"Hagar",
"Ishmael"
],
[
"Hagar",
"Abraham"
],
[
"Halle Berry",
"Oliver Martinez"
],
[
"Hal... | [] |
NELL-one cleaned dataset compiled for relational similarity.
An example of test looks as follows.
{
"relation_type": "concept:automobilemakerdealersincity",
"positives": [["Lexus", "Dallas"], ["Buick", "Columbus"], ...,
"negatives": []}
}
| train | validation | test |
|---|---|---|
| 30 | 3 | 5 |
@inproceedings{xiong-etal-2018-one,
title = "One-Shot Relational Learning for Knowledge Graphs",
author = "Xiong, Wenhan and
Yu, Mo and
Chang, Shiyu and
Guo, Xiaoxiao and
Wang, William Yang",
booktitle = "Proceedings of the 2018 Conference on Empirical Methods in Natural Language Processing",
month = oct # "-" # nov,
year = "2018",
address = "Brussels, Belgium",
publisher = "Association for Computational Linguistics",
url = "https://aclanthology.org/D18-1223",
doi = "10.18653/v1/D18-1223",
pages = "1980--1990",
abstract = "Knowledge graphs (KG) are the key components of various natural language processing applications. To further expand KGs{'} coverage, previous studies on knowledge graph completion usually require a large number of positive examples for each relation. However, we observe long-tail relations are actually more common in KGs and those newly added relations often do not have many known triples for training. In this work, we aim at predicting new facts under a challenging setting where only one training instance is available. We propose a one-shot relational learning framework, which utilizes the knowledge distilled by embedding models and learns a matching metric by considering both the learned embeddings and one-hop graph structures. Empirically, our model yields considerable performance improvements over existing embedding models, and also eliminates the need of re-training the embedding models when dealing with newly added relations.",
}