- From: Mayank Kejriwal <mayankkejriwal@utexas.edu>
- Date: Mon, 18 May 2020 13:28:16 -0700
- To: Mayank Kejriwal <kejriwal@isi.edu>
- Message-ID: <CAKHm4iZiR7AffNeO7sk12y0SJOKQS+Lxb87sy3yvZOP+cmuxDA@mail.gmail.com>
Dear Colleague, Apologies for cross-posting. We have extended the deadline for the workshop on Knowledge Graphs and E-Commerce <http://usc-isi-i2.github.io/KDD2020workshop/> at KDD 2020 to *June 15*. In addition to the full call for contributions (see below), we are also soliciting *1-2 page extended abstracts* for oral presentation of significant preliminary results and/or topical areas of discussion (such as implementations, lessons learned etc.) falling under knowledge graphs and e-commerce. Please consider submitting if you have such results that you would like to share or discuss in an oral presentation. We hope that you will consider submitting your research and sharing it with colleagues, students, and friends who would be interested. This year, we already have an exciting lineup of keynote speakers and panelists, and the workshop’s organizers span both academia and industry (USC, Amazon, Home Depot and LinkedIn). In light of the COVID-19 crisis, please stay safe and do contact us at kejriwal@isi.edu <Kejriwal@isi.edu> should any questions or concerns arise. Thank You, Mayank Kejriwal Research Assistant Professor/Research Lead University of Southern California Viterbi School of Engineering *--------------------------------* *Call for Contributions:* KEGC 2020 - International Workshop on Knowledge Graphs and E-Commerce at the 26th ACM KDD 2020, San Diego, California, USA *Deadline:* June 15, 2020 *Website*: http://usc-isi-i2.github.io/KDD2020workshop/ This workshop welcomes submissions from both researchers and industry practitioners in knowledge graphs (KG) and e-commerce, and KG applications, with a particular emphasis on real-world deployment and pipelines that are relevant to industrial settings. We solicit research that is broadly related to e-commerce KG research and sub-fields, including data cleaning (e.g., Entity Resolution), representation learning and embeddings, natural language processing (e.g., information extraction) and information retrieval (e.g., semantic search). *Full paper submissions* (maximum 8 pages) are solicited in the form of research papers which propose new techniques and advances with industrial potential using data mining techniques for KGs, as well as papers from industry that describe practical applications and system innovations in e-commerce application areas. *Short papers* (maximum 4 pages) describing case studies or work-in-progress are also solicited. Exceptionally well-argued position papers are also welcome. Topics motivating research and discussion in dealing with real-world challenges in e-commerce and product data, include* (but not limited to):* *Theory, Algorithms and Methods* •Knowledge graph construction e.g., constructing KGs from structured, semi-structured and natural language data • Novel definitions and theories regarding KGs , especially taking into account attributes and features commonly found in enterprise settings, including customers, products and spatiotemporal dependencies in KGs. •Querying and infrastructure of KG-centric architectures and applications •Effective use of public KGs •Foundational proposals for content models that combine statistical and symbolic representations •Novel embedding algorithms , especially for large-scale KGs •Statistical learning methods and algorithms for working with noisy KGs •Data quality assessment for large-scale enterprise KGs *Applications* • Web search • Question answering • Personalization • Data Mining • User interfaces and visualization •Semantic recommendations •E-commerce •Link prediction •Node classification •Instance matching/Entity resolution •Knowledge graph embeddings • Knowledge graph completion *Experiments, Systems and Data* •Novel datasets , especially datasets acquired through, or useful for evaluating, hybrid KG construction approaches utilizing a combination of structured, semi-structured and natural language data •Novel methodologies , concerning both evaluations and data curation/collection •Experimental results using existing methods, including negative results of interest •Systems issues in KG-centric systems , including best practices, case studies, lessons learned, and feature descriptions *Vision, Opinion and Position Papers* We will also accept a small number of *vision, opinion and position papers* that provide discussions on challenges and roadmaps (for KG-centric systems, applications and emerging models for e-commerce and product data). For any questions, please contact kejriwal@isi.edu <Kejriwal@isi.edu>. *Co-Chairs* Qi He, LinkedIn Faizan Javed, Home Depot Andrey Kan, Amazon Mayank Kejriwal, University of Southern California Anoop Kumar, Amazon *--------------------------------*
Received on Monday, 18 May 2020 20:28:43 UTC