{"id":"https://openalex.org/W4409149660","doi":"https://doi.org/10.1145/3690624.3709267","title":"Learning Attribute as Explicit Relation for Sequential Recommendation","display_name":"Learning Attribute as Explicit Relation for Sequential Recommendation","publication_year":2025,"publication_date":"2025-04-04","ids":{"openalex":"https://openalex.org/W4409149660","doi":"https://doi.org/10.1145/3690624.3709267"},"language":"en","primary_location":{"id":"doi:10.1145/3690624.3709267","is_oa":true,"landing_page_url":"https://doi.org/10.1145/3690624.3709267","pdf_url":null,"source":null,"license":"cc-by-nc-nd","license_id":"https://openalex.org/licenses/cc-by-nc-nd","version":"publishedVersion","is_accepted":true,"is_published":true,"raw_source_name":"Proceedings of the 31st ACM SIGKDD Conference on Knowledge Discovery and Data Mining V.1","raw_type":"proceedings-article"},"type":"article","indexed_in":["crossref"],"open_access":{"is_oa":true,"oa_status":"gold","oa_url":"https://doi.org/10.1145/3690624.3709267","any_repository_has_fulltext":null},"authorships":[{"author_position":"first","author":{"id":"https://openalex.org/A5100739873","display_name":"Gang Liu","orcid":"https://orcid.org/0000-0003-4204-731X"},"institutions":[{"id":"https://openalex.org/I107639228","display_name":"University of Notre Dame","ror":"https://ror.org/00mkhxb43","country_code":"US","type":"education","lineage":["https://openalex.org/I107639228"]}],"countries":["US"],"is_corresponding":true,"raw_author_name":"Gang Liu","raw_affiliation_strings":["University of Notre Dame, Notre Dame, IN, USA"],"affiliations":[{"raw_affiliation_string":"University of Notre Dame, Notre Dame, IN, USA","institution_ids":["https://openalex.org/I107639228"]}]},{"author_position":"middle","author":{"id":"https://openalex.org/A5102014086","display_name":"Fan Yang","orcid":"https://orcid.org/0000-0002-0940-4218"},"institutions":[{"id":"https://openalex.org/I1311688040","display_name":"Amazon (United States)","ror":"https://ror.org/04mv4n011","country_code":"US","type":"company","lineage":["https://openalex.org/I1311688040"]}],"countries":["US"],"is_corresponding":false,"raw_author_name":"Fan Yang","raw_affiliation_strings":["Amazon, Seattle, WA, USA"],"affiliations":[{"raw_affiliation_string":"Amazon, Seattle, WA, USA","institution_ids":["https://openalex.org/I1311688040"]}]},{"author_position":"middle","author":{"id":"https://openalex.org/A5010965630","display_name":"Yang Jiao","orcid":"https://orcid.org/0000-0002-6390-2517"},"institutions":[{"id":"https://openalex.org/I1311688040","display_name":"Amazon (United States)","ror":"https://ror.org/04mv4n011","country_code":"US","type":"company","lineage":["https://openalex.org/I1311688040"]}],"countries":["US"],"is_corresponding":false,"raw_author_name":"Yang Jiao","raw_affiliation_strings":["Amazon, Seattle, WA, USA"],"affiliations":[{"raw_affiliation_string":"Amazon, Seattle, WA, USA","institution_ids":["https://openalex.org/I1311688040"]}]},{"author_position":"middle","author":{"id":"https://openalex.org/A5012371482","display_name":"Alireza Bagheri Garakani","orcid":null},"institutions":[{"id":"https://openalex.org/I1311688040","display_name":"Amazon (United States)","ror":"https://ror.org/04mv4n011","country_code":"US","type":"company","lineage":["https://openalex.org/I1311688040"]}],"countries":["US"],"is_corresponding":false,"raw_author_name":"Alireza Bagheri Garakani","raw_affiliation_strings":["Amazon, Seattle, WA, USA"],"affiliations":[{"raw_affiliation_string":"Amazon, Seattle, WA, USA","institution_ids":["https://openalex.org/I1311688040"]}]},{"author_position":"middle","author":{"id":"https://openalex.org/A5025923567","display_name":"Tong Tian","orcid":null},"institutions":[{"id":"https://openalex.org/I1311688040","display_name":"Amazon (United States)","ror":"https://ror.org/04mv4n011","country_code":"US","type":"company","lineage":["https://openalex.org/I1311688040"]}],"countries":["US"],"is_corresponding":false,"raw_author_name":"Tian Tong","raw_affiliation_strings":["Amazon, Seattle, WA, USA"],"affiliations":[{"raw_affiliation_string":"Amazon, Seattle, WA, USA","institution_ids":["https://openalex.org/I1311688040"]}]},{"author_position":"middle","author":{"id":"https://openalex.org/A5021319176","display_name":"Yan Gao","orcid":"https://orcid.org/0000-0002-8012-1392"},"institutions":[{"id":"https://openalex.org/I1311688040","display_name":"Amazon (United States)","ror":"https://ror.org/04mv4n011","country_code":"US","type":"company","lineage":["https://openalex.org/I1311688040"]}],"countries":["US"],"is_corresponding":false,"raw_author_name":"Yan Gao","raw_affiliation_strings":["Amazon, Seattle, WA, USA"],"affiliations":[{"raw_affiliation_string":"Amazon, Seattle, WA, USA","institution_ids":["https://openalex.org/I1311688040"]}]},{"author_position":"last","author":{"id":"https://openalex.org/A5074821819","display_name":"Meng Jiang","orcid":"https://orcid.org/0000-0002-3009-519X"},"institutions":[{"id":"https://openalex.org/I107639228","display_name":"University of Notre Dame","ror":"https://ror.org/00mkhxb43","country_code":"US","type":"education","lineage":["https://openalex.org/I107639228"]}],"countries":["US"],"is_corresponding":false,"raw_author_name":"Meng Jiang","raw_affiliation_strings":["University of Notre Dame, Notre Dame, IN, USA"],"affiliations":[{"raw_affiliation_string":"University of Notre Dame, Notre Dame, IN, USA","institution_ids":["https://openalex.org/I107639228"]}]}],"institutions":[],"countries_distinct_count":1,"institutions_distinct_count":7,"corresponding_author_ids":["https://openalex.org/A5100739873"],"corresponding_institution_ids":["https://openalex.org/I107639228"],"apc_list":null,"apc_paid":null,"fwci":3.2508,"has_fulltext":false,"cited_by_count":1,"citation_normalized_percentile":{"value":0.90017315,"is_in_top_1_percent":false,"is_in_top_10_percent":true},"cited_by_percentile_year":{"min":91,"max":95},"biblio":{"volume":null,"issue":null,"first_page":"800","last_page":"811"},"is_retracted":false,"is_paratext":false,"is_xpac":false,"primary_topic":{"id":"https://openalex.org/T10203","display_name":"Recommender Systems and Techniques","score":0.9998999834060669,"subfield":{"id":"https://openalex.org/subfields/1710","display_name":"Information Systems"},"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/T10203","display_name":"Recommender Systems and Techniques","score":0.9998999834060669,"subfield":{"id":"https://openalex.org/subfields/1710","display_name":"Information Systems"},"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/T12101","display_name":"Advanced Bandit Algorithms Research","score":0.9907000064849854,"subfield":{"id":"https://openalex.org/subfields/1803","display_name":"Management Science and Operations Research"},"field":{"id":"https://openalex.org/fields/18","display_name":"Decision Sciences"},"domain":{"id":"https://openalex.org/domains/2","display_name":"Social Sciences"}},{"id":"https://openalex.org/T11902","display_name":"Intelligent Tutoring Systems and Adaptive Learning","score":0.9851999878883362,"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/relation","display_name":"Relation (database)","score":0.7928431034088135},{"id":"https://openalex.org/keywords/computer-science","display_name":"Computer science","score":0.6678237318992615},{"id":"https://openalex.org/keywords/information-retrieval","display_name":"Information retrieval","score":0.4334202706813812},{"id":"https://openalex.org/keywords/natural-language-processing","display_name":"Natural language processing","score":0.40238797664642334},{"id":"https://openalex.org/keywords/artificial-intelligence","display_name":"Artificial intelligence","score":0.38143306970596313},{"id":"https://openalex.org/keywords/data-mining","display_name":"Data mining","score":0.3202013373374939}],"concepts":[{"id":"https://openalex.org/C25343380","wikidata":"https://www.wikidata.org/wiki/Q277521","display_name":"Relation (database)","level":2,"score":0.7928431034088135},{"id":"https://openalex.org/C41008148","wikidata":"https://www.wikidata.org/wiki/Q21198","display_name":"Computer science","level":0,"score":0.6678237318992615},{"id":"https://openalex.org/C23123220","wikidata":"https://www.wikidata.org/wiki/Q816826","display_name":"Information retrieval","level":1,"score":0.4334202706813812},{"id":"https://openalex.org/C204321447","wikidata":"https://www.wikidata.org/wiki/Q30642","display_name":"Natural language processing","level":1,"score":0.40238797664642334},{"id":"https://openalex.org/C154945302","wikidata":"https://www.wikidata.org/wiki/Q11660","display_name":"Artificial intelligence","level":1,"score":0.38143306970596313},{"id":"https://openalex.org/C124101348","wikidata":"https://www.wikidata.org/wiki/Q172491","display_name":"Data mining","level":1,"score":0.3202013373374939}],"mesh":[],"locations_count":1,"locations":[{"id":"doi:10.1145/3690624.3709267","is_oa":true,"landing_page_url":"https://doi.org/10.1145/3690624.3709267","pdf_url":null,"source":null,"license":"cc-by-nc-nd","license_id":"https://openalex.org/licenses/cc-by-nc-nd","version":"publishedVersion","is_accepted":true,"is_published":true,"raw_source_name":"Proceedings of the 31st ACM SIGKDD Conference on Knowledge Discovery and Data Mining V.1","raw_type":"proceedings-article"}],"best_oa_location":{"id":"doi:10.1145/3690624.3709267","is_oa":true,"landing_page_url":"https://doi.org/10.1145/3690624.3709267","pdf_url":null,"source":null,"license":"cc-by-nc-nd","license_id":"https://openalex.org/licenses/cc-by-nc-nd","version":"publishedVersion","is_accepted":true,"is_published":true,"raw_source_name":"Proceedings of the 31st ACM SIGKDD Conference on Knowledge Discovery and Data Mining V.1","raw_type":"proceedings-article"},"sustainable_development_goals":[],"awards":[],"funders":[],"has_content":{"grobid_xml":false,"pdf":false},"content_urls":null,"referenced_works_count":41,"referenced_works":["https://openalex.org/W2054141820","https://openalex.org/W2171279286","https://openalex.org/W2194775991","https://openalex.org/W2512965516","https://openalex.org/W2783272285","https://openalex.org/W2902040508","https://openalex.org/W2963367478","https://openalex.org/W2964296635","https://openalex.org/W2966483207","https://openalex.org/W2984100107","https://openalex.org/W2996931760","https://openalex.org/W3005071803","https://openalex.org/W3081170586","https://openalex.org/W3082341085","https://openalex.org/W3102281445","https://openalex.org/W3105472188","https://openalex.org/W3133849783","https://openalex.org/W3135396887","https://openalex.org/W3156844209","https://openalex.org/W3185773347","https://openalex.org/W3194671304","https://openalex.org/W3200664681","https://openalex.org/W3201149665","https://openalex.org/W3204210724","https://openalex.org/W3206127589","https://openalex.org/W3208227120","https://openalex.org/W3210646981","https://openalex.org/W4224952158","https://openalex.org/W4281555548","https://openalex.org/W4285428788","https://openalex.org/W4297971002","https://openalex.org/W4320024250","https://openalex.org/W4321109316","https://openalex.org/W4367311140","https://openalex.org/W4384644461","https://openalex.org/W4384655737","https://openalex.org/W4396843989","https://openalex.org/W4400530533","https://openalex.org/W4400531270","https://openalex.org/W6601658864","https://openalex.org/W6803508786"],"related_works":["https://openalex.org/W4234874385","https://openalex.org/W2323648130","https://openalex.org/W2157140558","https://openalex.org/W2378782423","https://openalex.org/W2388988621","https://openalex.org/W2357797405","https://openalex.org/W2366623913","https://openalex.org/W2374905595","https://openalex.org/W2516693588","https://openalex.org/W3204019825"],"abstract_inverted_index":{"The":[0],"data":[1],"on":[2,79,210],"user":[3,89,188,198],"behaviors":[4,24,199],"is":[5,62,191],"sparse":[6],"given":[7],"the":[8,46,56,96,119,149,156,160,179,184,246],"vast":[9],"array":[10],"of":[11,35,58,111,187,248],"user-item":[12],"combinations.":[13],"Attributes":[14],"related":[15],"to":[16,52,71,100,144,169],"users":[17,174],"(e.g.,":[18,21,25],"age),":[19],"items":[20],"brand),":[22],"and":[23,88,122,136,151,219,221,224,255],"co-purchase)":[26],"serve":[27],"as":[28,103],"crucial":[29],"input":[30,68,130],"sources":[31],"for":[32,49,82,173],"item-item":[33],"transitions":[34],"user's":[36],"behavior":[37,171,253],"prediction.":[38],"While":[39],"recent":[40],"Transformer-based":[41],"sequential":[42],"recommender":[43],"systems":[44],"learn":[45,101],"attention":[47,57,81,162],"matrix":[48],"each":[50,109],"attribute":[51,61,112],"update":[53],"item":[54,83,150],"representations,":[55],"a":[59,201,205],"specific":[60],"optimized":[63],"by":[64],"gradients":[65],"from":[66],"all":[67],"sources,":[69],"leading":[70,231],"potential":[72],"information":[73,126],"mixture.":[74],"Besides,":[75],"Transformers":[76],"mainly":[77],"focus":[78],"intra-sequence":[80,137],"attributes,":[84],"neglecting":[85],"cross-sequence":[86,135],"relations":[87,133],"attributes.":[90],"Addressing":[91],"these":[92],"challenges,":[93],"we":[94,165],"propose":[95],"Attribute":[97],"Transformer":[98,232],"(AttrFormer)":[99],"attributes":[102],"explicit":[104,115],"relations.":[105,138,257],"This":[106],"model":[107],"transforms":[108],"type":[110],"into":[113,159],"an":[114],"relation":[116],"defined":[117],"in":[118,238,250],"feature":[120],"space,":[121],"it":[123],"ensures":[124],"no":[125],"mixing":[127],"among":[128],"different":[129],"sources.":[131],"Explicit":[132],"introduce":[134],"AttrFormer":[139,190,229,249],"has":[140],"novel":[141],"relation-augmented":[142],"heads":[143,158],"handle":[145],"them":[146],"at":[147,178],"both":[148],"behavioral":[152],"levels,":[153],"seamlessly":[154],"integrating":[155],"augmented":[157],"multi-head":[161],"mechanism.":[163],"Furthermore,":[164],"employ":[166],"position-to-position":[167],"aggregation":[168],"refine":[170],"representation":[172],"with":[175,204],"similar":[176],"patterns":[177],"sequence":[180],"level.":[181],"To":[182],"capture":[183],"subjective":[185],"nature":[186],"preferences,":[189],"trained":[192],"using":[193],"posterior":[194],"targets":[195],"where":[196],"upcoming":[197],"follow":[200],"multinomial":[202],"distribution":[203],"Dirichlet":[206],"prior.":[207],"Our":[208],"evaluations":[209],"four":[211],"popular":[212],"datasets,":[213],"including":[214],"Amazon":[215],"(Toys":[216],"&":[217],"Games":[218],"Beauty)":[220],"MovieLens":[222],"(1M":[223],"25M":[225],"versions),":[226],"reveal":[227],"that":[228],"outperforms":[230],"baselines,":[233],"achieving":[234],"around":[235],"20%":[236],"improvement":[237],"NDCG@20":[239],"scores.":[240],"Extensive":[241],"ablation":[242],"studies":[243],"also":[244],"demonstrate":[245],"efficiency":[247],"managing":[251],"long":[252],"sequences":[254],"inter-sequence":[256]},"counts_by_year":[{"year":2025,"cited_by_count":1}],"updated_date":"2026-03-27T05:58:40.876381","created_date":"2025-10-10T00:00:00"}
