{"id":"https://openalex.org/W7138939465","doi":"https://doi.org/10.48550/arxiv.2603.15713","title":"Embedding-Aware Feature Discovery: Bridging Latent Representations and Interpretable Features in Event Sequences","display_name":"Embedding-Aware Feature Discovery: Bridging Latent Representations and Interpretable Features in Event Sequences","publication_year":2026,"publication_date":"2026-03-16","ids":{"openalex":"https://openalex.org/W7138939465","doi":"https://doi.org/10.48550/arxiv.2603.15713"},"language":null,"primary_location":{"id":"doi:10.48550/arxiv.2603.15713","is_oa":true,"landing_page_url":"https://doi.org/10.48550/arxiv.2603.15713","pdf_url":null,"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":"cc-by","license_id":"https://openalex.org/licenses/cc-by","version":null,"is_accepted":false,"is_published":false,"raw_source_name":null,"raw_type":"Preprint"},"type":"preprint","indexed_in":["datacite"],"open_access":{"is_oa":true,"oa_status":"green","oa_url":"https://doi.org/10.48550/arxiv.2603.15713","any_repository_has_fulltext":true},"authorships":[{"author_position":"first","author":{"id":"https://openalex.org/A5079582950","display_name":"Artem D. Sakhno","orcid":null},"institutions":[],"countries":[],"is_corresponding":false,"raw_author_name":"Sakhno, Artem","raw_affiliation_strings":[],"raw_orcid":null,"affiliations":[]},{"author_position":"middle","author":{"id":"https://openalex.org/A5129958851","display_name":"Ivan Sergeev","orcid":null},"institutions":[],"countries":[],"is_corresponding":false,"raw_author_name":"Sergeev, Ivan","raw_affiliation_strings":[],"raw_orcid":null,"affiliations":[]},{"author_position":"middle","author":{"id":"https://openalex.org/A5090756983","display_name":"Alexey Shestov","orcid":null},"institutions":[],"countries":[],"is_corresponding":false,"raw_author_name":"Shestov, Alexey","raw_affiliation_strings":[],"raw_orcid":null,"affiliations":[]},{"author_position":"middle","author":{"id":"https://openalex.org/A5120002942","display_name":"Omar Zoloev","orcid":"https://orcid.org/0009-0004-9447-5599"},"institutions":[],"countries":[],"is_corresponding":false,"raw_author_name":"Zoloev, Omar","raw_affiliation_strings":[],"raw_orcid":null,"affiliations":[]},{"author_position":"middle","author":{"id":"https://openalex.org/A5064929077","display_name":"Elizaveta Kovtun","orcid":"https://orcid.org/0000-0001-7296-7606"},"institutions":[],"countries":[],"is_corresponding":false,"raw_author_name":"Kovtun, Elizaveta","raw_affiliation_strings":[],"raw_orcid":null,"affiliations":[]},{"author_position":"middle","author":{"id":"https://openalex.org/A5052767879","display_name":"Gleb Gusev","orcid":"https://orcid.org/0009-0003-7298-1848"},"institutions":[],"countries":[],"is_corresponding":false,"raw_author_name":"Gusev, Gleb","raw_affiliation_strings":[],"raw_orcid":null,"affiliations":[]},{"author_position":"middle","author":{"id":"https://openalex.org/A5129846487","display_name":"Andrey Savchenko","orcid":null},"institutions":[],"countries":[],"is_corresponding":false,"raw_author_name":"Savchenko, Andrey","raw_affiliation_strings":[],"raw_orcid":null,"affiliations":[]},{"author_position":"last","author":{"id":"https://openalex.org/A5044048316","display_name":"Maksim Makarenko","orcid":"https://orcid.org/0000-0002-6761-8695"},"institutions":[],"countries":[],"is_corresponding":false,"raw_author_name":"Makarenko, Maksim","raw_affiliation_strings":[],"raw_orcid":null,"affiliations":[]}],"institutions":[],"countries_distinct_count":0,"institutions_distinct_count":0,"corresponding_author_ids":[],"corresponding_institution_ids":[],"apc_list":null,"apc_paid":null,"fwci":null,"has_fulltext":false,"cited_by_count":0,"citation_normalized_percentile":null,"cited_by_percentile_year":null,"biblio":{"volume":null,"issue":null,"first_page":null,"last_page":null},"is_retracted":false,"is_paratext":false,"is_xpac":false,"primary_topic":{"id":"https://openalex.org/T13702","display_name":"Machine Learning in Healthcare","score":0.21279999613761902,"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/T13702","display_name":"Machine Learning in Healthcare","score":0.21279999613761902,"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/T11719","display_name":"Data Quality and Management","score":0.11670000106096268,"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/T12205","display_name":"Time Series Analysis and Forecasting","score":0.1136000007390976,"subfield":{"id":"https://openalex.org/subfields/1711","display_name":"Signal Processing"},"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/bridging","display_name":"Bridging (networking)","score":0.753600001335144},{"id":"https://openalex.org/keywords/robustness","display_name":"Robustness (evolution)","score":0.644599974155426},{"id":"https://openalex.org/keywords/event","display_name":"Event (particle physics)","score":0.5163999795913696},{"id":"https://openalex.org/keywords/feature","display_name":"Feature (linguistics)","score":0.48969998955726624},{"id":"https://openalex.org/keywords/feature-learning","display_name":"Feature learning","score":0.48829999566078186},{"id":"https://openalex.org/keywords/feature-engineering","display_name":"Feature engineering","score":0.45100000500679016},{"id":"https://openalex.org/keywords/representation","display_name":"Representation (politics)","score":0.42890000343322754}],"concepts":[{"id":"https://openalex.org/C174348530","wikidata":"https://www.wikidata.org/wiki/Q188635","display_name":"Bridging (networking)","level":2,"score":0.753600001335144},{"id":"https://openalex.org/C41008148","wikidata":"https://www.wikidata.org/wiki/Q21198","display_name":"Computer science","level":0,"score":0.7264999747276306},{"id":"https://openalex.org/C154945302","wikidata":"https://www.wikidata.org/wiki/Q11660","display_name":"Artificial intelligence","level":1,"score":0.6500999927520752},{"id":"https://openalex.org/C63479239","wikidata":"https://www.wikidata.org/wiki/Q7353546","display_name":"Robustness (evolution)","level":3,"score":0.644599974155426},{"id":"https://openalex.org/C2779662365","wikidata":"https://www.wikidata.org/wiki/Q5416694","display_name":"Event (particle physics)","level":2,"score":0.5163999795913696},{"id":"https://openalex.org/C2776401178","wikidata":"https://www.wikidata.org/wiki/Q12050496","display_name":"Feature (linguistics)","level":2,"score":0.48969998955726624},{"id":"https://openalex.org/C59404180","wikidata":"https://www.wikidata.org/wiki/Q17013334","display_name":"Feature learning","level":2,"score":0.48829999566078186},{"id":"https://openalex.org/C2778827112","wikidata":"https://www.wikidata.org/wiki/Q22245680","display_name":"Feature engineering","level":3,"score":0.45100000500679016},{"id":"https://openalex.org/C119857082","wikidata":"https://www.wikidata.org/wiki/Q2539","display_name":"Machine learning","level":1,"score":0.43320000171661377},{"id":"https://openalex.org/C2776359362","wikidata":"https://www.wikidata.org/wiki/Q2145286","display_name":"Representation (politics)","level":3,"score":0.42890000343322754},{"id":"https://openalex.org/C153180895","wikidata":"https://www.wikidata.org/wiki/Q7148389","display_name":"Pattern recognition (psychology)","level":2,"score":0.33169999718666077},{"id":"https://openalex.org/C2982736386","wikidata":"https://www.wikidata.org/wiki/Q2539","display_name":"Statistical learning","level":2,"score":0.3264999985694885},{"id":"https://openalex.org/C204321447","wikidata":"https://www.wikidata.org/wiki/Q30642","display_name":"Natural language processing","level":1,"score":0.32350000739097595},{"id":"https://openalex.org/C52622490","wikidata":"https://www.wikidata.org/wiki/Q1026626","display_name":"Feature extraction","level":2,"score":0.3151000142097473},{"id":"https://openalex.org/C114289077","wikidata":"https://www.wikidata.org/wiki/Q3284399","display_name":"Statistical model","level":2,"score":0.3005000054836273},{"id":"https://openalex.org/C132964779","wikidata":"https://www.wikidata.org/wiki/Q2110223","display_name":"Raw data","level":2,"score":0.2883000075817108},{"id":"https://openalex.org/C75949130","wikidata":"https://www.wikidata.org/wiki/Q848010","display_name":"Database transaction","level":2,"score":0.28700000047683716},{"id":"https://openalex.org/C124101348","wikidata":"https://www.wikidata.org/wiki/Q172491","display_name":"Data mining","level":1,"score":0.27239999175071716},{"id":"https://openalex.org/C2776544517","wikidata":"https://www.wikidata.org/wiki/Q189447","display_name":"Unexpected events","level":2,"score":0.2669999897480011},{"id":"https://openalex.org/C108583219","wikidata":"https://www.wikidata.org/wiki/Q197536","display_name":"Deep learning","level":2,"score":0.2581000030040741}],"mesh":[],"locations_count":1,"locations":[{"id":"doi:10.48550/arxiv.2603.15713","is_oa":true,"landing_page_url":"https://doi.org/10.48550/arxiv.2603.15713","pdf_url":null,"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":"cc-by","license_id":"https://openalex.org/licenses/cc-by","version":null,"is_accepted":false,"is_published":null,"raw_source_name":null,"raw_type":"Preprint"}],"best_oa_location":{"id":"doi:10.48550/arxiv.2603.15713","is_oa":true,"landing_page_url":"https://doi.org/10.48550/arxiv.2603.15713","pdf_url":null,"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":"cc-by","license_id":"https://openalex.org/licenses/cc-by","version":null,"is_accepted":false,"is_published":false,"raw_source_name":null,"raw_type":"Preprint"},"sustainable_development_goals":[{"id":"https://metadata.un.org/sdg/9","score":0.4545101225376129,"display_name":"Industry, innovation and infrastructure"}],"awards":[],"funders":[],"has_content":{"pdf":false,"grobid_xml":false},"content_urls":null,"referenced_works_count":0,"referenced_works":[],"related_works":[],"abstract_inverted_index":{"Industrial":[0],"financial":[1],"systems":[2,27],"operate":[3],"on":[4,32],"temporal":[5],"event":[6,94],"sequences":[7,95],"such":[8],"as":[9],"transactions,":[10],"user":[11],"actions,":[12],"and":[13,22,44,56,88,108,120,128],"system":[14],"logs.":[15],"While":[16],"recent":[17],"research":[18],"emphasizes":[19],"representation":[20],"learning":[21],"large":[23],"language":[24],"models,":[25],"production":[26],"continue":[28],"to":[29,37,136],"rely":[30],"heavily":[31],"handcrafted":[33],"statistical":[34],"features":[35,90],"due":[36],"their":[38],"interpretability,":[39],"robustness":[40],"under":[41],"limited":[42],"supervision,":[43],"strict":[45],"latency":[46],"constraints.":[47],"This":[48],"creates":[49],"a":[50,65,78],"persistent":[51],"disconnect":[52],"between":[53],"learned":[54],"embeddings":[55,76],"feature-based":[57,129],"pipelines.":[58],"We":[59],"introduce":[60],"Embedding-Aware":[61],"Feature":[62],"Discovery":[63],"(EAFD),":[64],"unified":[66],"framework":[67],"that":[68],"bridges":[69],"this":[70],"gap":[71],"by":[72],"coupling":[73],"pretrained":[74,140],"event-sequence":[75,148],"with":[77],"self-reflective":[79],"LLM-driven":[80],"feature":[81],"generation":[82],"agent.":[83],"EAFD":[84,124],"iteratively":[85],"discovers,":[86],"evaluates,":[87],"refines":[89],"directly":[91],"from":[92,115],"raw":[93],"using":[96],"two":[97],"complementary":[98],"criteria:":[99],"\\emph{alignment},":[100],"which":[101,110],"explains":[102],"information":[103],"already":[104],"encoded":[105],"in":[106,143],"embeddings,":[107,141],"\\emph{complementarity},":[109],"identifies":[111],"predictive":[112],"signals":[113],"missing":[114],"them.":[116],"Across":[117],"both":[118],"open-source":[119],"industrial":[121],"transaction":[122],"benchmarks,":[123],"consistently":[125],"outperforms":[126],"embedding-only":[127],"baselines,":[130],"achieving":[131],"relative":[132],"gains":[133],"of":[134],"up":[135],"$+5.8\\%$":[137],"over":[138],"state-of-the-art":[139,145],"resulting":[142],"new":[144],"performance":[146],"across":[147],"datasets.":[149]},"counts_by_year":[],"updated_date":"2026-07-01T06:00:48.157686","created_date":"2026-03-20T00:00:00"}
