{"id":"https://openalex.org/W4283723760","doi":"https://doi.org/10.1145/3534678.3539208","title":"Adaptive Multi-view Rule Discovery for Weakly-Supervised Compatible Products Prediction","display_name":"Adaptive Multi-view Rule Discovery for Weakly-Supervised Compatible Products Prediction","publication_year":2022,"publication_date":"2022-08-12","ids":{"openalex":"https://openalex.org/W4283723760","doi":"https://doi.org/10.1145/3534678.3539208"},"language":"en","primary_location":{"id":"doi:10.1145/3534678.3539208","is_oa":true,"landing_page_url":"https://doi.org/10.1145/3534678.3539208","pdf_url":"https://dl.acm.org/doi/pdf/10.1145/3534678.3539208","source":{"id":"https://openalex.org/S4363608767","display_name":"Proceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining","issn_l":null,"issn":null,"is_oa":false,"is_in_doaj":false,"is_core":false,"host_organization":null,"host_organization_name":null,"host_organization_lineage":[],"host_organization_lineage_names":[],"type":"conference"},"license":"cc-by","license_id":"https://openalex.org/licenses/cc-by","version":"publishedVersion","is_accepted":true,"is_published":true,"raw_source_name":"Proceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining","raw_type":"proceedings-article"},"type":"article","indexed_in":["arxiv","crossref"],"open_access":{"is_oa":true,"oa_status":"hybrid","oa_url":"https://dl.acm.org/doi/pdf/10.1145/3534678.3539208","any_repository_has_fulltext":true},"authorships":[{"author_position":"first","author":{"id":"https://openalex.org/A5089455757","display_name":"Rongzhi Zhang","orcid":"https://orcid.org/0000-0002-7136-7913"},"institutions":[{"id":"https://openalex.org/I130701444","display_name":"Georgia Institute of Technology","ror":"https://ror.org/01zkghx44","country_code":"US","type":"education","lineage":["https://openalex.org/I130701444"]}],"countries":["US"],"is_corresponding":true,"raw_author_name":"Rongzhi Zhang","raw_affiliation_strings":["Georgia Institution of Technology, Atlanta, GA, USA"],"affiliations":[{"raw_affiliation_string":"Georgia Institution of Technology, Atlanta, GA, USA","institution_ids":["https://openalex.org/I130701444"]}]},{"author_position":"middle","author":{"id":"https://openalex.org/A5085538616","display_name":"Rebecca West","orcid":"https://orcid.org/0000-0003-4560-1048"},"institutions":[{"id":"https://openalex.org/I2799939184","display_name":"Home Depot (United States)","ror":"https://ror.org/031603425","country_code":"US","type":"company","lineage":["https://openalex.org/I2799939184"]}],"countries":["US"],"is_corresponding":false,"raw_author_name":"Rebecca West","raw_affiliation_strings":["The Home Depot, Atlanta, GA, USA"],"affiliations":[{"raw_affiliation_string":"The Home Depot, Atlanta, GA, USA","institution_ids":["https://openalex.org/I2799939184"]}]},{"author_position":"middle","author":{"id":"https://openalex.org/A5102967365","display_name":"Xiquan Cui","orcid":"https://orcid.org/0009-0005-5306-8839"},"institutions":[{"id":"https://openalex.org/I2799939184","display_name":"Home Depot (United States)","ror":"https://ror.org/031603425","country_code":"US","type":"company","lineage":["https://openalex.org/I2799939184"]}],"countries":["US"],"is_corresponding":false,"raw_author_name":"Xiquan Cui","raw_affiliation_strings":["The Home Depot, Atlanta, GA, USA"],"affiliations":[{"raw_affiliation_string":"The Home Depot, Atlanta, GA, USA","institution_ids":["https://openalex.org/I2799939184"]}]},{"author_position":"last","author":{"id":"https://openalex.org/A5100460272","display_name":"Chao Zhang","orcid":"https://orcid.org/0000-0003-3009-598X"},"institutions":[{"id":"https://openalex.org/I130701444","display_name":"Georgia Institute of Technology","ror":"https://ror.org/01zkghx44","country_code":"US","type":"education","lineage":["https://openalex.org/I130701444"]}],"countries":["US"],"is_corresponding":false,"raw_author_name":"Chao Zhang","raw_affiliation_strings":["Georgia Institute of Technology, Atlanta, GA, USA"],"affiliations":[{"raw_affiliation_string":"Georgia Institute of Technology, Atlanta, GA, USA","institution_ids":["https://openalex.org/I130701444"]}]}],"institutions":[],"countries_distinct_count":1,"institutions_distinct_count":4,"corresponding_author_ids":["https://openalex.org/A5089455757"],"corresponding_institution_ids":["https://openalex.org/I130701444"],"apc_list":null,"apc_paid":null,"fwci":0.5218,"has_fulltext":true,"cited_by_count":5,"citation_normalized_percentile":{"value":0.62172761,"is_in_top_1_percent":false,"is_in_top_10_percent":false},"cited_by_percentile_year":{"min":90,"max":98},"biblio":{"volume":null,"issue":null,"first_page":"4521","last_page":"4529"},"is_retracted":false,"is_paratext":false,"is_xpac":false,"primary_topic":{"id":"https://openalex.org/T10664","display_name":"Sentiment Analysis and Opinion Mining","score":0.9991999864578247,"subfield":{"id":"https://openalex.org/subfields/1702","display_name":"Artificial Intelligence"},"field":{"id":"https://openalex.org/fields/17","display_name":"Computer Science"},"domain":{"id":"https://openalex.org/domains/3","display_name":"Physical Sciences"}},"topics":[{"id":"https://openalex.org/T10664","display_name":"Sentiment Analysis and Opinion Mining","score":0.9991999864578247,"subfield":{"id":"https://openalex.org/subfields/1702","display_name":"Artificial Intelligence"},"field":{"id":"https://openalex.org/fields/17","display_name":"Computer Science"},"domain":{"id":"https://openalex.org/domains/3","display_name":"Physical Sciences"}},{"id":"https://openalex.org/T13083","display_name":"Advanced Text Analysis Techniques","score":0.996999979019165,"subfield":{"id":"https://openalex.org/subfields/1702","display_name":"Artificial Intelligence"},"field":{"id":"https://openalex.org/fields/17","display_name":"Computer Science"},"domain":{"id":"https://openalex.org/domains/3","display_name":"Physical Sciences"}},{"id":"https://openalex.org/T10028","display_name":"Topic Modeling","score":0.9919999837875366,"subfield":{"id":"https://openalex.org/subfields/1702","display_name":"Artificial Intelligence"},"field":{"id":"https://openalex.org/fields/17","display_name":"Computer Science"},"domain":{"id":"https://openalex.org/domains/3","display_name":"Physical Sciences"}}],"keywords":[{"id":"https://openalex.org/keywords/computer-science","display_name":"Computer science","score":0.7957534790039062},{"id":"https://openalex.org/keywords/data-mining","display_name":"Data mining","score":0.5856478810310364},{"id":"https://openalex.org/keywords/trustworthiness","display_name":"Trustworthiness","score":0.5549286603927612},{"id":"https://openalex.org/keywords/boosting","display_name":"Boosting (machine learning)","score":0.5327909588813782},{"id":"https://openalex.org/keywords/machine-learning","display_name":"Machine learning","score":0.5048611760139465},{"id":"https://openalex.org/keywords/artificial-intelligence","display_name":"Artificial intelligence","score":0.4472466707229614},{"id":"https://openalex.org/keywords/rule-based-system","display_name":"Rule-based system","score":0.4169749319553375},{"id":"https://openalex.org/keywords/compatibility","display_name":"Compatibility (geochemistry)","score":0.41574782133102417}],"concepts":[{"id":"https://openalex.org/C41008148","wikidata":"https://www.wikidata.org/wiki/Q21198","display_name":"Computer science","level":0,"score":0.7957534790039062},{"id":"https://openalex.org/C124101348","wikidata":"https://www.wikidata.org/wiki/Q172491","display_name":"Data mining","level":1,"score":0.5856478810310364},{"id":"https://openalex.org/C153701036","wikidata":"https://www.wikidata.org/wiki/Q659974","display_name":"Trustworthiness","level":2,"score":0.5549286603927612},{"id":"https://openalex.org/C46686674","wikidata":"https://www.wikidata.org/wiki/Q466303","display_name":"Boosting (machine learning)","level":2,"score":0.5327909588813782},{"id":"https://openalex.org/C119857082","wikidata":"https://www.wikidata.org/wiki/Q2539","display_name":"Machine learning","level":1,"score":0.5048611760139465},{"id":"https://openalex.org/C154945302","wikidata":"https://www.wikidata.org/wiki/Q11660","display_name":"Artificial intelligence","level":1,"score":0.4472466707229614},{"id":"https://openalex.org/C149271511","wikidata":"https://www.wikidata.org/wiki/Q1417149","display_name":"Rule-based system","level":2,"score":0.4169749319553375},{"id":"https://openalex.org/C2778648169","wikidata":"https://www.wikidata.org/wiki/Q967768","display_name":"Compatibility (geochemistry)","level":2,"score":0.41574782133102417},{"id":"https://openalex.org/C127313418","wikidata":"https://www.wikidata.org/wiki/Q1069","display_name":"Geology","level":0,"score":0.0},{"id":"https://openalex.org/C17409809","wikidata":"https://www.wikidata.org/wiki/Q161764","display_name":"Geochemistry","level":1,"score":0.0},{"id":"https://openalex.org/C38652104","wikidata":"https://www.wikidata.org/wiki/Q3510521","display_name":"Computer security","level":1,"score":0.0}],"mesh":[],"locations_count":2,"locations":[{"id":"doi:10.1145/3534678.3539208","is_oa":true,"landing_page_url":"https://doi.org/10.1145/3534678.3539208","pdf_url":"https://dl.acm.org/doi/pdf/10.1145/3534678.3539208","source":{"id":"https://openalex.org/S4363608767","display_name":"Proceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining","issn_l":null,"issn":null,"is_oa":false,"is_in_doaj":false,"is_core":false,"host_organization":null,"host_organization_name":null,"host_organization_lineage":[],"host_organization_lineage_names":[],"type":"conference"},"license":"cc-by","license_id":"https://openalex.org/licenses/cc-by","version":"publishedVersion","is_accepted":true,"is_published":true,"raw_source_name":"Proceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining","raw_type":"proceedings-article"},{"id":"pmh:oai:arXiv.org:2206.13749","is_oa":true,"landing_page_url":"http://arxiv.org/abs/2206.13749","pdf_url":"https://arxiv.org/pdf/2206.13749","source":{"id":"https://openalex.org/S4306400194","display_name":"arXiv (Cornell University)","issn_l":null,"issn":null,"is_oa":true,"is_in_doaj":false,"is_core":false,"host_organization":"https://openalex.org/I205783295","host_organization_name":"Cornell University","host_organization_lineage":["https://openalex.org/I205783295"],"host_organization_lineage_names":[],"type":"repository"},"license":null,"license_id":null,"version":"submittedVersion","is_accepted":false,"is_published":false,"raw_source_name":null,"raw_type":"text"}],"best_oa_location":{"id":"doi:10.1145/3534678.3539208","is_oa":true,"landing_page_url":"https://doi.org/10.1145/3534678.3539208","pdf_url":"https://dl.acm.org/doi/pdf/10.1145/3534678.3539208","source":{"id":"https://openalex.org/S4363608767","display_name":"Proceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining","issn_l":null,"issn":null,"is_oa":false,"is_in_doaj":false,"is_core":false,"host_organization":null,"host_organization_name":null,"host_organization_lineage":[],"host_organization_lineage_names":[],"type":"conference"},"license":"cc-by","license_id":"https://openalex.org/licenses/cc-by","version":"publishedVersion","is_accepted":true,"is_published":true,"raw_source_name":"Proceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining","raw_type":"proceedings-article"},"sustainable_development_goals":[],"awards":[{"id":"https://openalex.org/G1726583756","display_name":"III: Small: Go Beyond Short-term Dependency and Homogeneity: A General-Purpose Transformer Recipe for Multi-Domain Heterogeneous Sequential Data Analysis","funder_award_id":"2008334","funder_id":"https://openalex.org/F4320306076","funder_display_name":"National Science Foundation"},{"id":"https://openalex.org/G4987246806","display_name":"CAREER: Accelerating Spatial Network Design: An Uncertainty-Driven Predict-and-Optimize Learning Framework","funder_award_id":"2144338","funder_id":"https://openalex.org/F4320306076","funder_display_name":"National Science Foundation"},{"id":"https://openalex.org/G6484623147","display_name":"III: Medium: Collaborative Research: Principled Uncertainty Quantification in Deep Learning Models for Time Series Analysis","funder_award_id":"2106961","funder_id":"https://openalex.org/F4320306076","funder_display_name":"National Science Foundation"},{"id":"https://openalex.org/G6671297155","display_name":null,"funder_award_id":"CAREER","funder_id":"https://openalex.org/F4320306076","funder_display_name":"National Science Foundation"},{"id":"https://openalex.org/G941917753","display_name":null,"funder_award_id":"2008334,2106961,2144338","funder_id":"https://openalex.org/F4320306076","funder_display_name":"National Science Foundation"}],"funders":[{"id":"https://openalex.org/F4320306076","display_name":"National Science Foundation","ror":"https://ror.org/021nxhr62"}],"has_content":{"pdf":true,"grobid_xml":true},"content_urls":{"pdf":"https://content.openalex.org/works/W4283723760.pdf","grobid_xml":"https://content.openalex.org/works/W4283723760.grobid-xml"},"referenced_works_count":45,"referenced_works":["https://openalex.org/W2098742124","https://openalex.org/W2117169652","https://openalex.org/W2127732301","https://openalex.org/W2154553070","https://openalex.org/W2511037166","https://openalex.org/W2908510526","https://openalex.org/W2911424454","https://openalex.org/W2911988918","https://openalex.org/W2950510531","https://openalex.org/W2963028402","https://openalex.org/W2964793879","https://openalex.org/W2965373594","https://openalex.org/W3012687255","https://openalex.org/W3036413095","https://openalex.org/W3105241646","https://openalex.org/W3106109117","https://openalex.org/W3154560120","https://openalex.org/W3166701916","https://openalex.org/W3169442836","https://openalex.org/W3169820314","https://openalex.org/W3172399575","https://openalex.org/W3173777717","https://openalex.org/W3174770825","https://openalex.org/W3176678956","https://openalex.org/W3200496214","https://openalex.org/W3202384916","https://openalex.org/W3205270560","https://openalex.org/W3205717164","https://openalex.org/W3208783258","https://openalex.org/W4205991051","https://openalex.org/W4206648492","https://openalex.org/W4226113762","https://openalex.org/W4226144573","https://openalex.org/W4235216760","https://openalex.org/W4281988409","https://openalex.org/W4287028759","https://openalex.org/W4287554606","https://openalex.org/W4287815528","https://openalex.org/W4287854750","https://openalex.org/W4292779060","https://openalex.org/W4297795751","https://openalex.org/W4297801719","https://openalex.org/W4309811444","https://openalex.org/W4317641493","https://openalex.org/W6778883912"],"related_works":["https://openalex.org/W2125652721","https://openalex.org/W1540371141","https://openalex.org/W1549363203","https://openalex.org/W2147697413","https://openalex.org/W2154063878","https://openalex.org/W4231274751","https://openalex.org/W2556012038","https://openalex.org/W1489772951","https://openalex.org/W3082059448","https://openalex.org/W4313640622"],"abstract_inverted_index":{"On":[0],"e-commerce":[1],"platforms,":[2],"predicting":[3,28],"if":[4],"two":[5],"products":[6],"are":[7],"compatible":[8],"with":[9],"each":[10],"other":[11],"is":[12,31],"an":[13],"important":[14],"functionality":[15],"to":[16,34,87],"achieve":[17],"trustworthy":[18],"product":[19,29,37,60,102,136,152],"recommendation":[20],"and":[21,39,75,100,126,146,178,182],"search":[22],"experience":[23],"for":[24,147],"consumers.":[25],"However,":[26],"accurately":[27],"compatibility":[30,61,89],"difficult":[32],"due":[33],"the":[35,40,49,83,116,121,128,172],"heterogeneous":[36],"data":[38],"lack":[41],"of":[42,51],"manually":[43],"curated":[44],"training":[45],"data.":[46],"We":[47,63],"study":[48],"problem":[50],"discovering":[52],"effective":[53],"labeling":[54,107],"rules":[55,94,108,118,142,157],"that":[56,71,80,169],"can":[57,72,81,119],"enable":[58],"weakly-supervised":[59,85],"prediction.":[62],"develop":[64],"AMRule,":[65],"a":[66,113,159],"multi-view":[67],"rule":[68,132,148,180,183],"discovery":[69,133,149],"framework":[70],"(1)":[73],"adaptively":[74,105],"iteratively":[76],"discover":[77,92],"novel":[78],"rulers":[79],"complement":[82],"current":[84,122],"model":[86,129],"improve":[88],"prediction;":[90],"(2)":[91],"interpretable":[93],"from":[95,109,134,143,150,158],"both":[96],"structured":[97,135],"attribute":[98],"tables":[99],"unstructured":[101,151],"descriptions.":[103],"AMRule":[104,170],"discovers":[106],"large-error":[110],"instances":[111],"via":[112],"boosting-style":[114],"strategy,":[115],"high-quality":[117],"remedy":[120],"model's":[123],"weak":[124],"spots":[125],"refine":[127],"iteratively.":[130],"For":[131],"attributes,":[137],"we":[138,154],"generate":[139,155],"composable":[140],"high-order":[141],"decision":[144],"trees;":[145],"descriptions,":[153],"prompt-based":[156],"pre-trained":[160],"language":[161],"model.":[162],"Experiments":[163],"on":[164,176],"4":[165],"real-world":[166],"datasets":[167],"show":[168],"outperforms":[171],"baselines":[173],"by":[174],"$5.98%$":[175],"average":[177],"improves":[179],"quality":[181],"proposal":[184],"efficiency.":[185]},"counts_by_year":[{"year":2024,"cited_by_count":1},{"year":2023,"cited_by_count":4}],"updated_date":"2026-04-10T15:06:20.359241","created_date":"2025-10-10T00:00:00"}
