Third Call for Papers - ACM Transactions on Information Systems
Special Section on Efficiency in Neural Information Retrieval

Full Call of Papers: 
https://nam04.safelinks.protection.outlook.com/?url=https%3A%2F%2Fdl.acm.org%2Fjournal%2Ftois%2Fcalls-for-papers&data=05%7C01%7Cuai%40engr.orst.edu%7C17f8c52ccd0c484fd13208db0a76964c%7Cce6d05e13c5e4d6287a84c4a2713c113%7C0%7C0%7C638115276669791707%7CUnknown%7CTWFpbGZsb3d8eyJWIjoiMC4wLjAwMDAiLCJQIjoiV2luMzIiLCJBTiI6Ik1haWwiLCJXVCI6Mn0%3D%7C3000%7C%7C%7C&sdata=kbYAZejfP9Cp4SDB7bTjdAZz%2B8Q%2BbLwQf2ihM2K%2BfhQ%3D&reserved=0

Overview 🧐
--------------------------
The aim of this Special Section is to engage with researchers in Information 
Retrieval, Natural Language Processing, and related areas and gather insight 
into the core challenges in measuring, reporting, and optimizing all facets of 
efficiency in Neural Information Retrieval (NIR) systems, including time-, 
space-, resource-, sample- and energy- efficiency, among other factors.
This special section solicits perspectives from active researchers to advance 
our understanding of and to overcome efficiency challenges in NIR.
In particular, researchers are encouraged to examine the ever-growing model 
complexity through appropriate empirical analysis, to propose models that 
require less data, computational resources, and energy for training and 
fine-tuning with similarly efficient inference, to ask if there are meaningful 
simplifications of the existing training processes or model architectures that 
lead to comparable quality, and explore a multi-faceted evaluation of NIR 
models from quality to all dimensions of efficiency with standardized metrics.

Topics 🔍
--------------------------
We welcome submissions on the following topics, including but not limited to:
* Novel NIR models that reach competitive quality but are designed to provide 
efficient training or
inference;
* Efficient NIR models for decentralized IR tasks such as conversational search;
* Efficient NIR models for IR-related tasks such as question answering and 
recommender systems;
* Efficient NIR for resource-constrained devices;
* Scalability of NIR systems;
* Efficient NIR for text and cross-modal search;
* Strategies to optimize training or inference of existing NIR models;
* Sample-efficient training of NIR models;
* Efficiency-driven distillation, pruning, quantization, retraining, and 
transfer learning;
* Empirical investigation of the complexity of existing NIR models through an 
analysis of quality, interpretability, robustness, and environmental impact;
* Evaluation protocols for efficiency in NIR.

Important Dates 🔥
--------------------------
* Open for Submissions: Aug 1, 2022
* Submissions deadline: Feb 28, 2023
* First-round review decisions: May 31, 2023
* Deadline for minor revision submissions: Jun 30, 2023
* Deadline for major revision submissions: Aug 31, 2023
* Notification of final decisions: Sept 30, 2023
* Tentative publication: 2024

Guest Editors 📚
--------------------------
* Dr. Sebastian Bruch, Pinecone, United States of America
* Prof. Claudio Lucchese, Ca' Foscari University of Venice, Italy
* Dr. Maria Maistro, University of Copenhagen, Denmark
* Dr. Franco Maria Nardini, ISTI-CNR, Italy

———

Maria Maistro, PhD
Tenure-track Assistant Professor
Department of Computer Science
University of Copenhagen
Universitetsparken 5, 2100 Copenhagen, Denmark

_______________________________________________
uai mailing list
uai@engr.orst.edu
https://it.engineering.oregonstate.edu/mailman/listinfo/uai

Reply via email to