Corpus of conversational Persian transcripts / Linguistic Data Consortium.

Title Corpus of conversational Persian transcripts / Linguistic Data Consortium.
Publication Date: 2019
Subject Persian language > Dialects > Data processing. Persian language > Dialects > Discourse analysis. Persian language > Dialects > Transcription. Persian language > Dialects > Iran > Data processing. Text data mining. Computational linguistics. Corpora (Linguistics)
Type Book
Language Persian
Digital Yes
Manuscript No
Physical Dimensions 1 online resource
Library: Yale University
Library Asset ID 1585638978
Record ID 99155827543408651
Date 2019
Notes Applications: discourse analysis, sociolinguistics, pragmatics. Authors: Ariana Negar Mohammadi. Data source: telephone conversations, microphone conversation. Data type: text. LDC number: LDC2019T11. In Persian. Title from resource home page (LDC website, viewed October 5, 2020).
Sample Text "Corpus of Conversational Persian Transcripts consists of transcripts from approximately 20 hours of naturally occurring informal conversations in the Tehrani dialect of Iranian Persian. The corresponding speech is not included in this release. This corpus is extracted from 1,201 minutes of conversations among 22 participants, 12 male and 10 female. The participants recorded their daily phone calls and face-to-face interactions in a variety of informal settings. The conversations represent various interaction types, settings, types of relationship, and communicative goals. The transcripts were annotated for gender, age, and recording method and setting. See the included documentation for more information about the annotations and transcription methodology. Each conversation is presented as a UTF-8 encoded XML file." --LDC online catalog.
Kataloğa Eklendi October 05, 2020
Diğer Sorumlular Mohammadi, Ariana Negar, creator Linguistic Data Consortium, issuing body
Baskı Version 2.
Yerel Notlar Access is available to the Yale community.
View in source Yale University Yale University - Ottoman library catalog search
Yale University - Ottoman library catalog search Yale University

Corpus of conversational Persian transcripts / Linguistic Data Consortium.

Publication Date 2019
Subject Persian language > Dialects > Data processing. Persian language > Dialects > Discourse analysis. Persian language > Dialects > Transcription. Persian language > Dialects > Iran > Data processing. Text data mining. Computational linguistics. Corpora (Linguistics)
Type Book
Language Persian
Digital Yes
Manuscript No
Physical Dimensions 1 online resource
Library Yale University
Library Asset ID 1585638978
Record ID 99155827543408651
Date 2019
Notes Applications: discourse analysis, sociolinguistics, pragmatics. Authors: Ariana Negar Mohammadi. Data source: telephone conversations, microphone conversation. Data type: text. LDC number: LDC2019T11. In Persian. Title from resource home page (LDC website, viewed October 5, 2020).
Sample Text "Corpus of Conversational Persian Transcripts consists of transcripts from approximately 20 hours of naturally occurring informal conversations in the Tehrani dialect of Iranian Persian. The corresponding speech is not included in this release. This corpus is extracted from 1,201 minutes of conversations among 22 participants, 12 male and 10 female. The participants recorded their daily phone calls and face-to-face interactions in a variety of informal settings. The conversations represent various interaction types, settings, types of relationship, and communicative goals. The transcripts were annotated for gender, age, and recording method and setting. See the included documentation for more information about the annotations and transcription methodology. Each conversation is presented as a UTF-8 encoded XML file." --LDC online catalog.
Kataloğa Eklendi October 05, 2020
Diğer Sorumlular Mohammadi, Ariana Negar, creator Linguistic Data Consortium, issuing body
Baskı Version 2.
Yerel Notlar Access is available to the Yale community.
Yale University - Ottoman library catalog search
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