Get quick answers to your questions about the article from our AI researcher chatbot
{'id': 'https://openalex.org/W4393608463', 'doi': 'https://doi.org/10.5281/zenodo.10037861', 'title': 'Navigating News Narratives: A Media Bias Analysis Dataset', 'display_name': 'Navigating News Narratives: A Media Bias Analysis Dataset', 'publication_year': 2023, 'publication_date': '2023-10-24', 'ids': {'openalex': 'https://openalex.org/W4393608463', 'doi': 'https://doi.org/10.5281/zenodo.10037861'}, 'language': 'en', 'primary_location': {'is_oa': False, 'landing_page_url': 'https://zenodo.org/doi/10.5281/zenodo.10037861', 'pdf_url': None, 'source': {'id': 'https://openalex.org/S4306400562', 'display_name': 'Zenodo (CERN European Organization for Nuclear Research)', 'issn_l': None, 'issn': None, 'is_oa': True, 'is_in_doaj': False, 'is_core': False, 'host_organization': 'https://openalex.org/I67311998', 'host_organization_name': 'European Organization for Nuclear Research', 'host_organization_lineage': ['https://openalex.org/I67311998'], 'host_organization_lineage_names': ['European Organization for Nuclear Research'], 'type': 'repository'}, 'license': 'cc-by-nc', 'license_id': 'https://openalex.org/licenses/cc-by-nc', 'version': None, 'is_accepted': False, 'is_published': False}, 'type': 'dataset', 'type_crossref': 'dataset', 'indexed_in': ['datacite'], 'open_access': {'is_oa': False, 'oa_status': 'closed', 'oa_url': None, 'any_repository_has_fulltext': False}, 'authorships': [{'author_position': 'first', 'author': {'id': 'https://openalex.org/A5053939840', 'display_name': 'Shaina Raza', 'orcid': 'https://orcid.org/0000-0003-1061-5845'}, 'institutions': [{'id': 'https://openalex.org/I4210127509', 'display_name': 'Vector Institute', 'ror': 'https://ror.org/03kqdja62', 'country_code': 'CA', 'type': 'facility', 'lineage': ['https://openalex.org/I4210127509']}], 'countries': ['CA'], 'is_corresponding': True, 'raw_author_name': 'Shaina Raza', 'raw_affiliation_strings': ['Vector Institute'], 'affiliations': [{'raw_affiliation_string': 'Vector Institute', 'institution_ids': ['https://openalex.org/I4210127509']}]}], 'institution_assertions': [], 'countries_distinct_count': 1, 'institutions_distinct_count': 1, 'corresponding_author_ids': ['https://openalex.org/A5053939840'], 'corresponding_institution_ids': ['https://openalex.org/I4210127509'], 'apc_list': None, 'apc_paid': None, 'fwci': None, 'has_fulltext': False, 'cited_by_count': 0, 'citation_normalized_percentile': None, 'cited_by_percentile_year': {'min': 0, 'max': 71}, 'biblio': {'volume': None, 'issue': None, 'first_page': None, 'last_page': None}, 'is_retracted': False, 'is_paratext': False, 'primary_topic': {'id': 'https://openalex.org/T13910', 'display_name': 'Computational Text Analysis in Social Sciences', 'score': 0.9708, 'subfield': {'id': 'https://openalex.org/subfields/3300', 'display_name': 'General Social Sciences'}, 'field': {'id': 'https://openalex.org/fields/33', 'display_name': 'Social Sciences'}, 'domain': {'id': 'https://openalex.org/domains/2', 'display_name': 'Social Sciences'}}, 'topics': [{'id': 'https://openalex.org/T13910', 'display_name': 'Computational Text Analysis in Social Sciences', 'score': 0.9708, 'subfield': {'id': 'https://openalex.org/subfields/3300', 'display_name': 'General Social Sciences'}, 'field': {'id': 'https://openalex.org/fields/33', 'display_name': 'Social Sciences'}, 'domain': {'id': 'https://openalex.org/domains/2', 'display_name': 'Social Sciences'}}], 'keywords': [{'id': 'https://openalex.org/keywords/media-bias', 'display_name': 'Media bias', 'score': 0.44573876}], 'concepts': [{'id': 'https://openalex.org/C199033989', 'wikidata': 'https://www.wikidata.org/wiki/Q1318295', 'display_name': 'Narrative', 'level': 2, 'score': 0.76042473}, {'id': 'https://openalex.org/C538316197', 'wikidata': 'https://www.wikidata.org/wiki/Q11118951', 'display_name': 'Media bias', 'level': 3, 'score': 0.44573876}, {'id': 'https://openalex.org/C41008148', 'wikidata': 'https://www.wikidata.org/wiki/Q21198', 'display_name': 'Computer science', 'level': 0, 'score': 0.3648958}, {'id': 'https://openalex.org/C95457728', 'wikidata': 'https://www.wikidata.org/wiki/Q309', 'display_name': 'History', 'level': 0, 'score': 0.35342908}, {'id': 'https://openalex.org/C23123220', 'wikidata': 'https://www.wikidata.org/wiki/Q816826', 'display_name': 'Information retrieval', 'level': 1, 'score': 0.3269989}, {'id': 'https://openalex.org/C142362112', 'wikidata': 'https://www.wikidata.org/wiki/Q735', 'display_name': 'Art', 'level': 0, 'score': 0.28093994}, {'id': 'https://openalex.org/C17744445', 'wikidata': 'https://www.wikidata.org/wiki/Q36442', 'display_name': 'Political science', 'level': 0, 'score': 0.26013225}, {'id': 'https://openalex.org/C124952713', 'wikidata': 'https://www.wikidata.org/wiki/Q8242', 'display_name': 'Literature', 'level': 1, 'score': 0.14288455}, {'id': 'https://openalex.org/C199539241', 'wikidata': 'https://www.wikidata.org/wiki/Q7748', 'display_name': 'Law', 'level': 1, 'score': 0.05779046}, {'id': 'https://openalex.org/C94625758', 'wikidata': 'https://www.wikidata.org/wiki/Q7163', 'display_name': 'Politics', 'level': 2, 'score': 0.0}], 'mesh': [], 'locations_count': 2, 'locations': [{'is_oa': False, 'landing_page_url': 'https://zenodo.org/doi/10.5281/zenodo.10037861', 'pdf_url': None, 'source': {'id': 'https://openalex.org/S4306400562', 'display_name': 'Zenodo (CERN European Organization for Nuclear Research)', 'issn_l': None, 'issn': None, 'is_oa': True, 'is_in_doaj': False, 'is_core': False, 'host_organization': 'https://openalex.org/I67311998', 'host_organization_name': 'European Organization for Nuclear Research', 'host_organization_lineage': ['https://openalex.org/I67311998'], 'host_organization_lineage_names': ['European Organization for Nuclear Research'], 'type': 'repository'}, 'license': 'cc-by-nc', 'license_id': 'https://openalex.org/licenses/cc-by-nc', 'version': None, 'is_accepted': False, 'is_published': False}, {'is_oa': False, 'landing_page_url': 'https://api.datacite.org/dois/10.5281/zenodo.10037861', 'pdf_url': None, 'source': {'id': 'https://openalex.org/S4393179698', 'display_name': 'DataCite API', 'issn_l': None, 'issn': None, 'is_oa': True, 'is_in_doaj': False, 'is_core': False, 'host_organization': 'https://openalex.org/I4210145204', 'host_organization_name': 'DataCite', 'host_organization_lineage': ['https://openalex.org/I4210145204'], 'host_organization_lineage_names': ['DataCite'], 'type': 'metadata'}, 'license': None, 'license_id': None, 'version': None}], 'best_oa_location': None, 'sustainable_development_goals': [], 'grants': [], 'datasets': [], 'versions': [], 'referenced_works_count': 0, 'referenced_works': [], 'related_works': ['https://openalex.org/W2965396777', 'https://openalex.org/W2748952813', 'https://openalex.org/W2390279801', 'https://openalex.org/W2389168924', 'https://openalex.org/W2388067091', 'https://openalex.org/W2367656648', 'https://openalex.org/W2362132076', 'https://openalex.org/W2358668433', 'https://openalex.org/W2350200549', 'https://openalex.org/W2348886128'], 'abstract_inverted_index': {'The': [0, 38, 127, 143, 186, 264, 570], 'prevalence': [1], 'of': [2, 19, 77, 102, 145, 158, 163, 211, 235, 259, 359, 443, 497, 537, 545], 'bias': [3, 98, 212, 437, 529], 'in': [4, 86, 415, 438, 451], 'the': [5, 57, 65, 75, 87, 103, 159, 171, 209, 260, 273, 287, 296, 360, 444, 498, 568], 'news': [6, 96, 242, 247, 261, 355, 472, 493], 'media': [7, 39, 97, 262], 'has': [8, 40], 'become': [9], 'a': [10, 17, 41, 68, 93, 124, 559], 'critical': [11], 'issue,': [12], 'affecting': [13], 'public': [14, 84], 'perception': [15], 'on': [16, 191, 364, 448, 487, 503], 'range': [18], 'important': [20, 54], 'topics': [21], 'such': [22], 'as': [23], 'political': [24], 'views,': [25], 'health,': [26], 'insurance,': [27], 'resource': [28], 'distributions,': [29], 'religion,': [30], 'race,': [31], 'age,': [32], 'gender,': [33], 'occupation,': [34, 119], 'and': [35, 49, 56, 82, 281, 316, 348, 385, 409, 432, 460, 466, 480, 491, 525, 534, 553, 564, 577, 579], 'climate': [36, 117], 'change.': [37], 'moral': [42], 'responsibility': [43], 'to': [44, 50, 231, 255, 271, 282, 301, 550, 556, 562, 575, 585], 'ensure': [45], 'accurate': [46], 'information': [47, 81, 139], 'dissemination': [48], 'increase': [51], 'awareness': [52], 'about': [53, 532], 'issues': [55], 'potential': [58], 'risks': [59], 'associated': [60], 'with': [61], 'them.': [62], 'This': [63, 91], 'highlights': [64], 'need': [66], 'for': [67, 95, 130, 489], 'solution': [69], 'that': [70], 'can': [71], 'help': [72], 'mitigate': [73], 'against': [74], 'spread': [76], 'false': [78], 'or': [79], 'misleading': [80], 'restore': [83], 'trust': [85], 'media.': [88], 'Data': [89, 141, 462], 'description:': [90], 'is': [92, 189, 195, 266, 611], 'dataset': [94, 128, 485, 547, 571], 'covering': [99], 'different': [100, 241, 257], 'dimensions': [101, 258], 'biases:': [104, 513], 'political,': [105, 108], 'hate': [106], 'speech,': [107], 'toxicity,': [109], 'sexism,': [110], 'ageism,': [111], 'gender': [112, 114], 'identity,': [113], 'discrimination,': [115], 'race/ethnicity,': [116], 'change,': [118], 'spirituality,': [120], 'which': [121, 194], 'makes': [122], 'it': [123], 'unique': [125, 150], 'contribution.': [126], 'used': [129, 237], 'this': [131, 546, 591], 'project': [132], 'does': [133], 'not': [134], 'contain': [135], 'any': [136], 'personally': [137], 'identifiable': [138], '(PII).': [140], 'Format:': [142], 'format': [144], 'data': [146, 294, 581], 'is:': [147], 'ID:': [148], 'Numeric': [149], 'identifier.': [151], 'Text:': [152], 'Main': [153], 'content.': [154], 'Dimension:': [155], 'Categorical': [156], 'descriptor': [157], 'text.': [160, 172], 'Biased_Words:': [161], 'List': [162, 234], 'words': [164, 285], 'considered': [165], 'biased.': [166], 'Aspect:': [167], 'Specific': [168], 'topic': [169], 'within': [170], 'Label:': [173, 178, 207], 'Bias': [174, 206, 226, 321, 414, 421, 458, 465, 601], 'True/False': [175], 'value': [176], 'Aggregate': [177], 'Calculated': [179], 'through': [180], 'multiple': [181], 'weighted': [182], 'formulae': [183], 'Annotation': [184, 322], 'Scheme:': [185], 'annotation': [187, 265], 'scheme': [188], 'based': [190, 486], 'Active': [192], 'learning,': [193], 'Manual': [196], 'Labeling': [197], '-->': [198, 201], 'Semi-Supervised': [199], 'Learning': [200], 'Human': [202], 'Verifications': [203], '(iterative': [204], 'process)': [205], 'Indicate': [208], 'presence/absence': [210], '(e.g.,': [213], 'no': [214], 'bias,': [215], 'mild,': [216], 'strong).': [217], 'Words/Phrases': [218], 'Level': [219], 'Biases:': [220], 'Identify': [221], 'specific': [222], 'biased': [223, 284], 'words/phrases.': [224], 'Subjective': [225], '(Aspect):': [227], 'Capture': [228], 'biases': [229], 'related': [230], 'content': [232], 'aspects.': [233], 'datasets': [236], ':': [238, 422], 'We': [239, 289], 'curated': [240], 'categories': [243], 'like': [244], 'Climate': [245], 'crisis': [246], 'summaries': [248], ',': [249], 'occupational,': [250], 'spiritual/faith/': [251], 'general': [252], 'using': [253, 268], 'RSS': [254], 'capture': [256], 'biases.': [263], 'performed': [267], 'active': [269], 'learning': [270], 'label': [272], 'sentence': [274], '(either': [275], 'neural/': [276], 'slightly': [277], 'biased/': [278], 'highly': [279], 'biased)': [280], 'pick': [283], 'from': [286, 295], 'news.': [288], 'also': [290], 'utilize': [291], 'publicly': [292], 'available': [293], 'following': [297], 'links.': [298], 'Our': [299], 'Attribution': [300], 'others.': [302], 'MBIC': [303], '(media': [304], 'bias):': [305], 'Spinde,': [306], 'Timo,': [307], 'Lada': [308], 'Rudnitckaia,': [309], 'Kanishka': [310], 'Sinha,': [311], 'Felix': [312], 'Hamborg,': [313], 'Bela': [314], 'Gipp,': [315], 'Karsten': [317], 'Donnay.': [318], '"MBIC--A': [319], 'Media': [320, 600], 'Dataset': [323, 603], 'Including': [324], 'Annotator': [325], 'Characteristics."': [326], 'arXiv': [327, 539], 'preprint': [328, 540], 'arXiv:2105.11910': [329], '(2021).': [330], 'https://zenodo.org/records/4474336': [331], 'Hyperpartisan': [332, 354], 'news:': [333], 'Kiesel,': [334], 'Johannes,': [335], 'Maria': [336], 'Mestre,': [337], 'Rishabh': [338], 'Shukla,': [339], 'Emmanuel': [340], 'Vincent,': [341], 'Payam': [342], 'Adineh,': [343], 'David': [344], 'Corney,': [345], 'Benno': [346], 'Stein,': [347], 'Martin': [349], 'Potthast.': [350], '"Semeval-2019': [351], 'task': [352], '4:': [353], 'detection."': [356], 'In': [357, 441, 495], 'Proceedings': [358, 442, 496], '13th': [361], 'International': [362, 501], 'Workshop': [363], 'Semantic': [365], 'Evaluation,': [366], 'pp.': [367, 454, 508], '829-839.': [368], '2019.': [369, 411], 'https://huggingface.co/datasets/hyperpartisan_news_detection': [370], 'Toxic': [371], 'comment': [372], 'classification:': [373], 'Adams,': [374, 398], 'C.J.,': [375, 399], 'Jeffrey': [376, 403], 'Sorensen,': [377, 404], 'Julia': [378], 'Elliott,': [379], 'Lucas': [380, 405], 'Dixon,': [381, 406], 'Mark': [382], 'McDonald,': [383], 'Nithum,': [384], 'Will': [386], 'Cukierski.': [387], '2017.': [388], '"Toxic': [389], 'Comment': [390], 'Classification': [391], 'Challenge."': [392], 'Kaggle.': [393, 418], 'https://kaggle.com/competitions/jigsaw-toxic-comment-classification-challenge.': [394], 'Jigsaw': [395], 'Unintended': [396, 413], 'Bias:': [397], 'Daniel': [400], 'Borkan,': [401], 'Inversion,': [402], 'Lucy': [407], 'Vasserman,': [408], 'Nithum.': [410], '"Jigsaw': [412], 'Toxicity': [416], 'Classification."': [417], 'https://kaggle.com/competitions/jigsaw-unintended-bias-in-toxicity-classification.': [419], 'Age': [420, 457, 464], 'Díaz,': [423], 'Mark,': [424], 'Isaac': [425], 'Johnson,': [426], 'Amanda': [427], 'Lazar,': [428], 'Anne': [429], 'Marie': [430], 'Piper,': [431], 'Darren': [433], 'Gergle.': [434], '"Addressing': [435], 'age-related': [436], 'sentiment': [439], 'analysis."': [440], '2018': [445], 'chi': [446], 'conference': [447], 'human': [449], 'factors': [450], 'computing': [452], 'systems,': [453], '1-14.': [455], '2018.': [456], 'Training': [459], 'Testing': [461], '-': [463], 'Sentiment': [467], 'Analysis': [468, 602], 'Dataverse': [469], '(harvard.edu)': [470], 'Multi-dimensional': [471], 'Ukraine:': [473], 'Färber,': [474], 'Michael,': [475], 'Victoria': [476], 'Burkard,': [477], 'Adam': [478], 'Jatowt,': [479], 'Sora': [481], 'Lim.': [482], '"A': [483], 'multidimensional': [484], 'crowdsourcing': [488], 'analyzing': [490], 'detecting': [492], 'bias."': [494], '29th': [499], 'ACM': [500], 'Conference': [502], 'Information': [504], '&': [505], 'Knowledge': [506], 'Management,': [507], '3007-3014.': [509], '2020.': [510], 'https://zenodo.org/records/3885351#.ZF0KoxHMLtV': [511], 'Social': [512], 'Sap,': [514], 'Maarten,': [515], 'Saadia': [516], 'Gabriel,': [517], 'Lianhui': [518], 'Qin,': [519], 'Dan': [520], 'Jurafsky,': [521], 'Noah': [522], 'A.': [523], 'Smith,': [524], 'Yejin': [526], 'Choi.': [527], '"Social': [528], 'frames:': [530], 'Reasoning': [531], 'social': [533], 'power': [535], 'implications': [536], 'language."': [538], 'arXiv:1911.03891': [541], '(2019).': [542], 'https://maartensap.com/social-bias-frames/': [543], 'Goal': [544], ':We': [548], 'want': [549], 'offer': [551], 'open': [552], 'free': [554], 'access': [555], 'dataset,': [557, 592], 'ensuring': [558], 'wide': [560], 'reach': [561], 'researchers': [563], 'AI': [565], 'practitioners': [566], 'across': [567], 'world.': [569], 'should': [572, 582], 'be': [573, 583], 'user-friendly': [574], 'use': [576, 590], 'uploading': [578], 'accessing': [580], 'straightforward,': [584], 'facilitate': [586], 'usage.': [587], 'If': [588], 'you': [589], 'please': [593], 'cite': [594], 'us.': [595], 'Navigating': [596], 'News': [597], 'Narratives:': [598], 'A': [599], '©': [604], '2023': [605], 'by': [606], 'Shaina': [607], 'Raza,': [608], 'Vector': [609], 'Institute': [610], 'licensed': [612], 'under': [613], 'CC': [614], 'BY-NC': [615], '4.0': [616]}, 'cited_by_api_url': 'https://api.openalex.org/works?filter=cites:W4393608463', 'counts_by_year': [], 'updated_date': '2024-09-18T07:08:49.907924', 'created_date': '2024-04-03'}