{"id":"https://openalex.org/W3172874292","doi":"https://doi.org/10.1145/3447548.3467079","title":"Learning Reliable User Representations from Volatile and Sparse Data to Accurately Predict Customer Lifetime Value","display_name":"Learning Reliable User Representations from Volatile and Sparse Data to Accurately Predict Customer Lifetime Value","publication_year":2021,"publication_date":"2021-08-12","ids":{"openalex":"https://openalex.org/W3172874292","doi":"https://doi.org/10.1145/3447548.3467079","mag":"3172874292"},"language":"en","primary_location":{"id":"doi:10.1145/3447548.3467079","is_oa":false,"landing_page_url":"https://doi.org/10.1145/3447548.3467079","pdf_url":null,"source":null,"license":null,"license_id":null,"version":"publishedVersion","is_accepted":true,"is_published":true,"raw_source_name":"Proceedings of the 27th ACM SIGKDD Conference on Knowledge Discovery &amp; Data Mining","raw_type":"proceedings-article"},"type":"article","indexed_in":["crossref"],"open_access":{"is_oa":false,"oa_status":"closed","oa_url":null,"any_repository_has_fulltext":false},"authorships":[{"author_position":"first","author":{"id":"https://openalex.org/A5060626806","display_name":"Mingzhe Xing","orcid":"https://orcid.org/0000-0002-2065-9852"},"institutions":[{"id":"https://openalex.org/I20231570","display_name":"Peking University","ror":"https://ror.org/02v51f717","country_code":"CN","type":"education","lineage":["https://openalex.org/I20231570"]}],"countries":["CN"],"is_corresponding":true,"raw_author_name":"Mingzhe Xing","raw_affiliation_strings":["Peking University, Beijing, China"],"affiliations":[{"raw_affiliation_string":"Peking University, Beijing, China","institution_ids":["https://openalex.org/I20231570"]}]},{"author_position":"middle","author":{"id":"https://openalex.org/A5035429903","display_name":"Shuqing Bian","orcid":"https://orcid.org/0000-0003-4040-0538"},"institutions":[{"id":"https://openalex.org/I78988378","display_name":"Renmin University of China","ror":"https://ror.org/041pakw92","country_code":"CN","type":"education","lineage":["https://openalex.org/I78988378"]}],"countries":["CN"],"is_corresponding":false,"raw_author_name":"Shuqing Bian","raw_affiliation_strings":["Renmin University of China, Beijing, China"],"affiliations":[{"raw_affiliation_string":"Renmin University of China, Beijing, China","institution_ids":["https://openalex.org/I78988378"]}]},{"author_position":"middle","author":{"id":"https://openalex.org/A5037145565","display_name":"Wayne Xin Zhao","orcid":"https://orcid.org/0000-0002-8333-6196"},"institutions":[{"id":"https://openalex.org/I78988378","display_name":"Renmin University of China","ror":"https://ror.org/041pakw92","country_code":"CN","type":"education","lineage":["https://openalex.org/I78988378"]}],"countries":["CN"],"is_corresponding":false,"raw_author_name":"Wayne Xin Zhao","raw_affiliation_strings":["Renmin University of China, Beijing, China"],"affiliations":[{"raw_affiliation_string":"Renmin University of China, Beijing, China","institution_ids":["https://openalex.org/I78988378"]}]},{"author_position":"middle","author":{"id":"https://openalex.org/A5102979232","display_name":"Zhen Xiao","orcid":"https://orcid.org/0000-0002-6784-9709"},"institutions":[{"id":"https://openalex.org/I20231570","display_name":"Peking University","ror":"https://ror.org/02v51f717","country_code":"CN","type":"education","lineage":["https://openalex.org/I20231570"]}],"countries":["CN"],"is_corresponding":false,"raw_author_name":"Zhen Xiao","raw_affiliation_strings":["Peking University, Beijing, China"],"affiliations":[{"raw_affiliation_string":"Peking University, Beijing, China","institution_ids":["https://openalex.org/I20231570"]}]},{"author_position":"middle","author":{"id":"https://openalex.org/A5088295802","display_name":"Xinji Luo","orcid":null},"institutions":[{"id":"https://openalex.org/I2250653659","display_name":"Tencent (China)","ror":"https://ror.org/00hhjss72","country_code":"CN","type":"company","lineage":["https://openalex.org/I2250653659"]}],"countries":["CN"],"is_corresponding":false,"raw_author_name":"Xinji Luo","raw_affiliation_strings":["Tencent, Shenzhen, China"],"affiliations":[{"raw_affiliation_string":"Tencent, Shenzhen, China","institution_ids":["https://openalex.org/I2250653659"]}]},{"author_position":"middle","author":{"id":"https://openalex.org/A5090362569","display_name":"Cunxiang Yin","orcid":"https://orcid.org/0009-0002-5116-0023"},"institutions":[{"id":"https://openalex.org/I2250653659","display_name":"Tencent (China)","ror":"https://ror.org/00hhjss72","country_code":"CN","type":"company","lineage":["https://openalex.org/I2250653659"]}],"countries":["CN"],"is_corresponding":false,"raw_author_name":"Cunxiang Yin","raw_affiliation_strings":["Tencent, Shenzhen, China"],"affiliations":[{"raw_affiliation_string":"Tencent, Shenzhen, China","institution_ids":["https://openalex.org/I2250653659"]}]},{"author_position":"middle","author":{"id":"https://openalex.org/A5061166773","display_name":"Jing Cai","orcid":"https://orcid.org/0000-0001-5747-9399"},"institutions":[{"id":"https://openalex.org/I2250653659","display_name":"Tencent (China)","ror":"https://ror.org/00hhjss72","country_code":"CN","type":"company","lineage":["https://openalex.org/I2250653659"]}],"countries":["CN"],"is_corresponding":false,"raw_author_name":"Jing Cai","raw_affiliation_strings":["Tencent, Shenzhen, China"],"affiliations":[{"raw_affiliation_string":"Tencent, Shenzhen, China","institution_ids":["https://openalex.org/I2250653659"]}]},{"author_position":"last","author":{"id":"https://openalex.org/A5103325403","display_name":"Yancheng He","orcid":"https://orcid.org/0009-0003-5078-0447"},"institutions":[{"id":"https://openalex.org/I2250653659","display_name":"Tencent (China)","ror":"https://ror.org/00hhjss72","country_code":"CN","type":"company","lineage":["https://openalex.org/I2250653659"]}],"countries":["CN"],"is_corresponding":false,"raw_author_name":"Yancheng He","raw_affiliation_strings":["Tencent, Shenzhen, China"],"affiliations":[{"raw_affiliation_string":"Tencent, Shenzhen, China","institution_ids":["https://openalex.org/I2250653659"]}]}],"institutions":[],"countries_distinct_count":1,"institutions_distinct_count":8,"corresponding_author_ids":["https://openalex.org/A5060626806"],"corresponding_institution_ids":["https://openalex.org/I20231570"],"apc_list":null,"apc_paid":null,"fwci":2.9501,"has_fulltext":false,"cited_by_count":27,"citation_normalized_percentile":{"value":0.90987771,"is_in_top_1_percent":false,"is_in_top_10_percent":true},"cited_by_percentile_year":{"min":89,"max":99},"biblio":{"volume":null,"issue":null,"first_page":"3806","last_page":"3816"},"is_retracted":false,"is_paratext":false,"is_xpac":false,"primary_topic":{"id":"https://openalex.org/T12384","display_name":"Customer churn and segmentation","score":0.9990000128746033,"subfield":{"id":"https://openalex.org/subfields/1406","display_name":"Marketing"},"field":{"id":"https://openalex.org/fields/14","display_name":"Business, Management and Accounting"},"domain":{"id":"https://openalex.org/domains/2","display_name":"Social Sciences"}},"topics":[{"id":"https://openalex.org/T12384","display_name":"Customer churn and segmentation","score":0.9990000128746033,"subfield":{"id":"https://openalex.org/subfields/1406","display_name":"Marketing"},"field":{"id":"https://openalex.org/fields/14","display_name":"Business, Management and Accounting"},"domain":{"id":"https://openalex.org/domains/2","display_name":"Social Sciences"}},{"id":"https://openalex.org/T10538","display_name":"Data Mining Algorithms and Applications","score":0.9921000003814697,"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/T11396","display_name":"Artificial Intelligence in Healthcare","score":0.9757999777793884,"subfield":{"id":"https://openalex.org/subfields/3605","display_name":"Health Information Management"},"field":{"id":"https://openalex.org/fields/36","display_name":"Health Professions"},"domain":{"id":"https://openalex.org/domains/4","display_name":"Health Sciences"}}],"keywords":[{"id":"https://openalex.org/keywords/computer-science","display_name":"Computer science","score":0.7777604460716248},{"id":"https://openalex.org/keywords/data-mining","display_name":"Data mining","score":0.568577229976654},{"id":"https://openalex.org/keywords/graph","display_name":"Graph","score":0.5464034676551819},{"id":"https://openalex.org/keywords/representation","display_name":"Representation (politics)","score":0.5016872882843018},{"id":"https://openalex.org/keywords/artificial-intelligence","display_name":"Artificial intelligence","score":0.44731271266937256},{"id":"https://openalex.org/keywords/external-data-representation","display_name":"External Data Representation","score":0.4371710419654846},{"id":"https://openalex.org/keywords/machine-learning","display_name":"Machine learning","score":0.4258957505226135},{"id":"https://openalex.org/keywords/pattern-recognition","display_name":"Pattern recognition (psychology)","score":0.34576255083084106},{"id":"https://openalex.org/keywords/theoretical-computer-science","display_name":"Theoretical computer science","score":0.24934837222099304}],"concepts":[{"id":"https://openalex.org/C41008148","wikidata":"https://www.wikidata.org/wiki/Q21198","display_name":"Computer science","level":0,"score":0.7777604460716248},{"id":"https://openalex.org/C124101348","wikidata":"https://www.wikidata.org/wiki/Q172491","display_name":"Data mining","level":1,"score":0.568577229976654},{"id":"https://openalex.org/C132525143","wikidata":"https://www.wikidata.org/wiki/Q141488","display_name":"Graph","level":2,"score":0.5464034676551819},{"id":"https://openalex.org/C2776359362","wikidata":"https://www.wikidata.org/wiki/Q2145286","display_name":"Representation (politics)","level":3,"score":0.5016872882843018},{"id":"https://openalex.org/C154945302","wikidata":"https://www.wikidata.org/wiki/Q11660","display_name":"Artificial intelligence","level":1,"score":0.44731271266937256},{"id":"https://openalex.org/C116409475","wikidata":"https://www.wikidata.org/wiki/Q1385056","display_name":"External Data Representation","level":2,"score":0.4371710419654846},{"id":"https://openalex.org/C119857082","wikidata":"https://www.wikidata.org/wiki/Q2539","display_name":"Machine learning","level":1,"score":0.4258957505226135},{"id":"https://openalex.org/C153180895","wikidata":"https://www.wikidata.org/wiki/Q7148389","display_name":"Pattern recognition (psychology)","level":2,"score":0.34576255083084106},{"id":"https://openalex.org/C80444323","wikidata":"https://www.wikidata.org/wiki/Q2878974","display_name":"Theoretical computer science","level":1,"score":0.24934837222099304},{"id":"https://openalex.org/C199539241","wikidata":"https://www.wikidata.org/wiki/Q7748","display_name":"Law","level":1,"score":0.0},{"id":"https://openalex.org/C17744445","wikidata":"https://www.wikidata.org/wiki/Q36442","display_name":"Political science","level":0,"score":0.0},{"id":"https://openalex.org/C94625758","wikidata":"https://www.wikidata.org/wiki/Q7163","display_name":"Politics","level":2,"score":0.0}],"mesh":[],"locations_count":1,"locations":[{"id":"doi:10.1145/3447548.3467079","is_oa":false,"landing_page_url":"https://doi.org/10.1145/3447548.3467079","pdf_url":null,"source":null,"license":null,"license_id":null,"version":"publishedVersion","is_accepted":true,"is_published":true,"raw_source_name":"Proceedings of the 27th ACM SIGKDD Conference on Knowledge Discovery &amp; Data Mining","raw_type":"proceedings-article"}],"best_oa_location":null,"sustainable_development_goals":[{"score":0.6299999952316284,"display_name":"Industry, innovation and infrastructure","id":"https://metadata.un.org/sdg/9"}],"awards":[{"id":"https://openalex.org/G2736025880","display_name":null,"funder_award_id":"61872397 and 61872369","funder_id":"https://openalex.org/F4320321001","funder_display_name":"National Natural Science Foundation of China"},{"id":"https://openalex.org/G8361467185","display_name":null,"funder_award_id":"2020AAA0105200","funder_id":"https://openalex.org/F4320335777","funder_display_name":"National Key Research and Development Program of China"}],"funders":[{"id":"https://openalex.org/F4320321001","display_name":"National Natural Science Foundation of China","ror":"https://ror.org/01h0zpd94"},{"id":"https://openalex.org/F4320335777","display_name":"National Key Research and Development Program of China","ror":null}],"has_content":{"grobid_xml":false,"pdf":false},"content_urls":null,"referenced_works_count":45,"referenced_works":["https://openalex.org/W1491300635","https://openalex.org/W1502922572","https://openalex.org/W1536447791","https://openalex.org/W1544107150","https://openalex.org/W1552145309","https://openalex.org/W1991670434","https://openalex.org/W2014918628","https://openalex.org/W2025348367","https://openalex.org/W2056716515","https://openalex.org/W2090836891","https://openalex.org/W2101562895","https://openalex.org/W2114079787","https://openalex.org/W2126523478","https://openalex.org/W2132984323","https://openalex.org/W2141088152","https://openalex.org/W2156957852","https://openalex.org/W2162244340","https://openalex.org/W2187089797","https://openalex.org/W2461826015","https://openalex.org/W2510174253","https://openalex.org/W2604847698","https://openalex.org/W2624431344","https://openalex.org/W2794065766","https://openalex.org/W2801999749","https://openalex.org/W2808465901","https://openalex.org/W2808955427","https://openalex.org/W2891692146","https://openalex.org/W2902121735","https://openalex.org/W2914271732","https://openalex.org/W2914612723","https://openalex.org/W2914721378","https://openalex.org/W2916106175","https://openalex.org/W2930650313","https://openalex.org/W2963858333","https://openalex.org/W2964121744","https://openalex.org/W2964744810","https://openalex.org/W2965341826","https://openalex.org/W2965858015","https://openalex.org/W2988226917","https://openalex.org/W2996552856","https://openalex.org/W3027097765","https://openalex.org/W3031917049","https://openalex.org/W3102840236","https://openalex.org/W3104581290","https://openalex.org/W6718973943"],"related_works":["https://openalex.org/W2062195135","https://openalex.org/W2917844847","https://openalex.org/W2036757537","https://openalex.org/W2759085743","https://openalex.org/W4282930045","https://openalex.org/W4238546310","https://openalex.org/W4241634354","https://openalex.org/W2021866862","https://openalex.org/W2376367779","https://openalex.org/W3209527236"],"abstract_inverted_index":{"In":[0,110],"industry,":[1],"customer":[2],"lifetime":[3],"value":[4],"(LTV)":[5],"prediction":[6],"is":[7,15,61,81,99,133,151],"a":[8,28,64,70,94,113,187],"challenging":[9],"task,":[10],"since":[11],"user":[12,46,54,159],"consumption":[13],"data":[14,139],"usually":[16],"volatile,":[17],"noisy,":[18],"or":[19],"sparse.":[20],"To":[21,147],"address":[22],"these":[23,105],"issues,":[24],"this":[25],"paper":[26],"presents":[27],"novel":[29,71,95],"Temporal-Structural":[30],"User":[31],"Representation":[32],"(named":[33],"TSUR)":[34],"network":[35],"to":[36,48,101,136],"predict":[37],"LTV.":[38],"We":[39],"utilize":[40],"historical":[41],"revenue":[42],"time":[43,154],"series":[44],"and":[45,52,103,124,157,175],"attributes":[47],"learn":[49],"both":[50],"temporal":[51,59,65,123,156],"structural":[53,79,125,158],"representations,":[55],"respectively.":[56],"Specifically,":[57],"the":[58,78,120,128,138,152,181],"representation":[60,80,130],"learned":[62,163],"with":[63,83],"trend":[66],"encoder":[67],"based":[68],"on":[69,88,170],"multi-channel":[72],"Discrete":[73],"Wavelet":[74],"Transform~(DWT)":[75],"module,":[76],"while":[77],"derived":[82],"Graph":[84],"Attention":[85],"Network":[86],"(GAT)":[87],"an":[89],"attribute":[90],"similarity":[91],"graph.":[92],"Furthermore,":[93],"cluster-alignment":[96],"regularization":[97],"method":[98],"employed":[100],"align":[102],"enhance":[104],"two":[106,171],"kinds":[107],"of":[108,122,183,189],"representations.":[109],"essence,":[111],"such":[112],"fusion":[114],"way":[115],"can":[116],"be":[117],"considered":[118],"as":[119],"association":[121],"representations":[126,160],"in":[127],"low-pass":[129],"space,":[131],"which":[132],"also":[134],"useful":[135],"prevent":[137],"noise":[140],"from":[141],"being":[142],"transferred":[143],"across":[144],"different":[145],"views.":[146],"our":[148,184],"knowledge,":[149],"it":[150],"first":[153],"that":[155],"are":[161],"jointly":[162],"for":[164],"LTV":[165],"prediction.":[166],"Extensive":[167],"offline":[168],"experiments":[169],"large-scale":[172],"real-world":[173],"datasets":[174],"online":[176],"A/B":[177],"tests":[178],"have":[179],"shown":[180],"superiority":[182],"approach":[185],"over":[186],"number":[188],"competitive":[190],"baselines.":[191]},"counts_by_year":[{"year":2026,"cited_by_count":1},{"year":2025,"cited_by_count":7},{"year":2024,"cited_by_count":12},{"year":2023,"cited_by_count":6},{"year":2022,"cited_by_count":1}],"updated_date":"2025-11-06T03:46:38.306776","created_date":"2025-10-10T00:00:00"}
