Dataset | Named Entities | Language | Jurisdiction | Availability |
---|---|---|---|---|
Ahmed et al. | Per, Loc, Org, CaseNo, Resp, Date, Refcourt, Refcase, Ref, Appealcourt, Appealcaseno, Money, FIRno, Approved | English | Pakistan | No |
Duarte et al. | LREF, TREF, NE_ADM_TIME_DURATION, TIME_DATE_REL_TEXT | Portuguese | Portugal | No |
Luz de Araujo et al. | ORGANIZACAO, PESSOA, LOCAL, TEMPO, LEGISLACAO, JURISPRUDENCIA | Brazilian Portuguese | Brazil | No |
Leitner et al. | PER, LOC, ORG, NRM, REG, RS, LIT (19 Fine grained classes) | German | German | Yes |
Cardellino et al. | PERSON, ORGANISATION, DOCUMENT, ABSTRACTION, ACT | English | Europe | No |
Au et al. | LOCATION, PERSON, BUSINESS, GOVERNMENT, COURT, LEGISLATION/ACT, MISCELLANEOUS | English | United States | Yes |
C¸ etinda˘g et al. | PER, LOC, ORG, DAT, LEG, COU, REF, OFF, O | Turkish | Turkey | Yes |
Orasmaa et al. | PER, LOC-ORG, LOC, ORG, MISC | Estonian | Estonia | Yes |
Brugman | CASE, LOC, LEG, ID, DATE, SECTION, NJ, ECLI, PRISON_SENTENCE, FINANCIAL_SENTENCE, DURATION, CURRENCY, PROBATION, CONVERSION | Dutch | Netherland | No |
Kamat et al. | CRT, PT, CD, DOC, JURD, LOC, CTYP, AUTH, CRTOF, DOJUD (more finegrained classes) | English | India | Yes |
Kalamkar et al. | COURT, PETITIONER, RESPONDENT, JUDGE, LAWYER, DATE, ORG, GPE, STATUTE, PROVISION, PRECEDENT, CASE_NUMBER, WITNESS, OTHER_PERSON | English | India | Yes |
Naik et al. | PERSON, LOC, DATE, ORG, COURT, LEGAL, ACT, CASE_NO | English | India | No |
Nuranti and Yulianti | ADVOKAT, AMAR, HAKIM, JAKSA, ORGANISASI, PANITERA, PERATURAN, PUTUSAN, TANGGAL, TERLIBAT | Indonesian | Indonesia | No |
Pais et al. | Person, LOCATION, ORGANISATION, TIME, LEGAL REF | Romanian | Romania | Yes |
Andrew | PERSONNE, NOM, ADDRESS, SOCIETE_PRINCIPALE, SOCIETE_SECONDAIRE, ROLE, FONCTION, TYPE_SOCIETE | French | Luxembourg | No |
Glaser et al. | PER, ORG, LOC, DA, MV, REF, OTH | German | Germany | No |
Krasadakis et al. | LAW, CASE LAW, EURO LAW, EURO CASE LAW, ADMIN DOC, DOCTRINE, BOOK, FOREIGN LAW | Greek | Greece | No |
Jayasooriya et al. | case titles, acts, legal citations, counsel, judges, argued dates, verdict dates, judgments | English | Sri Lanka | No |
Shi et al. | N, Np, M, Nm, S, D, P, A, O | Chinese | China | No |
de Almeida et al. | P, O | English | United States | No |
Samarawickrama et al | P, O | English | United States | No |
Solihin and Budi | Nomor Putusan, Nama terdakwa, Tindak pidana, Melanggar KUHP, Tuntutan hukuman, Putusan hukuman, Tanggal putusan, Hakim Ketua, Hakim anggota, Panitera, Penuntut umum | Indonesian | Indonesia | No |
Chen et al | Person, Location, Organisation | Chinese | China | No |
Sharafat et al | CaseNo, Date, Loc, Money, Org, Per, Ref, RefCase, RefCourt, Resp | English | Pakistan | No |
Chalkidis et al | Contract Title, Contracting Parties, Start Date, Effective Date, Termination Date, Contract Period, Contract Value, Governing Law, Jurisdiction, Legislation Refs, Clause Headings | English | N/A | Yes |
Schraagen et al | location, person, organisation, event, product, miscellaneous | Dutch | Netherlands | No |
U lyssesNER-Br | DATA, EVENTO, FUNDlei, FUNDapelido, FUNDprojetodelei, FUNDsolicitacaotrabalho, LOCALconcreto, LOCALvirtual, ORGpartido, ORGgovernamental, ORGnaogovernamental, PESSOAindividual, PESSOAgrupoind, PESSOAcargo, PESSOAgrupocargo, PRODUTOsistema, PRODUTOprograma, PRODUTOoutros | Brazilian Portuguese | Brazil | Yes |
Kwak et al | Testator, Trigger, Condition, Beneficiary, Will, Asset, Executor, Witness, Time, Duty, State, Date, County, Right, Expense, Debt, Bond, Codicil, Trustee, Non-beneficiary, Tax, Affidavit, Notary public, Trust, Guardian, Conservator | English | United States | Yes |
Oliveira et al | contract_number, GDF_process, contractual_parties, contract_object, contract_date, contract_value, contract_duration, budget_unit, work_program, nature_of_expenditure, commitment_note | Brazilian Portuguese | Brazil | No |
Aejas et al | Title, Parties, EffectiveDate, TermLength, NotificationPeriod, GoverningLaw | English | United States | Yes |
Dataset | Relationships | Language | Jurisdiction | Availability |
---|---|---|---|---|
Chen et al. | traffic_in, sell_drug_to, possess, provide_shelter_for | Chinese | China | No |
Andrew | PERSONNE_FONCTION, PERSONNE_ROLE, SOCIETE_ROLE, SOCIETE_TYPE | French | France | No |
Zhong et al. | Pattern A1, Pattern A2, Pattern A3, Pattern A4, Pattern B | Chinese | China | No |
Kurant | cause-effect-relation | Polish | Poland | No |
Schraagen and Bex | residency | Dutch | Netherland | No |
Kwak et al | Coreference resolution, Beneficiary-Asset, Testator-Asset, Testator-Beneficiary, Testator-Will, Testator-Executor, Inclusion, Competence, Parent-Child, Witness-Testator, Witness-Will, Spouse-Spouse, Beneficiary-Executor, Beneficiary-Will, Testator-Codicil, Testator-Trustee, Testator-Guardian, Testator-Conservator | English | United States | Yes |
Dataset | No of Event Types | No of Event Arguments | No of Argument Roles | Language | Jurisdiction | Availability |
---|---|---|---|---|---|---|
Yao et al | 108 | - | - | Chinese | China | Yes |
Li et al | 5 | 6 | 5 | Chinese | China | No |
Shen et al | 11 | 26 | 17 | Chinese | China | No |
Li et al | 13 | - | - | Chinese | China | No |
Filtz et al | 2 | - | - | English | Europe | Yes |
Paulino-Passos et al | 7 | - | - | English | United States | Yes |
Araujo et al | 4 | - | - | Portuguese | Brazil | No |
Kwak et al | 20 | - | - | English | United States | Yes |
Xian et al | 7 | 9.9 (on average) | 378 | Chinese | China | No |
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