Don't Look Stupid: Avoiding Pitfalls when Recommending Research Papers
S. McNee, N. Kapoor, and J. Konstan. Proceedings of the 2006 20th Anniversary Conference on Computer Supported Cooperative Work, page 171--180. New York, NY, USA, ACM, (2006)
DOI: 10.1145/1180875.1180903
Abstract
If recommenders are to help people be more productive, they need to support a wide variety of real-world information seeking tasks, such as those found when seeking research papers in a digital library. There are many potential pitfalls, including not knowing what tasks to support, generating recommendations for the wrong task, or even failing to generate any meaningful recommendations whatsoever. We posit that different recommender algorithms are better suited to certain information seeking tasks. In this work, we perform a detailed user study with over 130 users to understand these differences between recommender algorithms through an online survey of paper recommendations from the ACM Digital Library. We found that pitfalls are hard to avoid. Two of our algorithms generated 'atypical' recommendations recommendations that were unrelated to their input baskets. Users reacted accordingly, providing strong negative results for these algorithms. Results from our 'typical' algorithms show some qualitative differences, but since users were exposed to two algorithms, the results may be biased. We present a wide variety of results, teasing out differences between algorithms. Finally, we succinctly summarize our most striking results as "Don't Look Stupid" in front of users.
%0 Conference Paper
%1 mcnee2006stupid
%A McNee, Sean M.
%A Kapoor, Nishikant
%A Konstan, Joseph A.
%B Proceedings of the 2006 20th Anniversary Conference on Computer Supported Cooperative Work
%C New York, NY, USA
%D 2006
%I ACM
%K context literature pitfalls recommender scholarly usecase user
%P 171--180
%R 10.1145/1180875.1180903
%T Don't Look Stupid: Avoiding Pitfalls when Recommending Research Papers
%U http://doi.acm.org/10.1145/1180875.1180903
%X If recommenders are to help people be more productive, they need to support a wide variety of real-world information seeking tasks, such as those found when seeking research papers in a digital library. There are many potential pitfalls, including not knowing what tasks to support, generating recommendations for the wrong task, or even failing to generate any meaningful recommendations whatsoever. We posit that different recommender algorithms are better suited to certain information seeking tasks. In this work, we perform a detailed user study with over 130 users to understand these differences between recommender algorithms through an online survey of paper recommendations from the ACM Digital Library. We found that pitfalls are hard to avoid. Two of our algorithms generated 'atypical' recommendations recommendations that were unrelated to their input baskets. Users reacted accordingly, providing strong negative results for these algorithms. Results from our 'typical' algorithms show some qualitative differences, but since users were exposed to two algorithms, the results may be biased. We present a wide variety of results, teasing out differences between algorithms. Finally, we succinctly summarize our most striking results as "Don't Look Stupid" in front of users.
%@ 1-59593-249-6
@inproceedings{mcnee2006stupid,
abstract = {If recommenders are to help people be more productive, they need to support a wide variety of real-world information seeking tasks, such as those found when seeking research papers in a digital library. There are many potential pitfalls, including not knowing what tasks to support, generating recommendations for the wrong task, or even failing to generate any meaningful recommendations whatsoever. We posit that different recommender algorithms are better suited to certain information seeking tasks. In this work, we perform a detailed user study with over 130 users to understand these differences between recommender algorithms through an online survey of paper recommendations from the ACM Digital Library. We found that pitfalls are hard to avoid. Two of our algorithms generated 'atypical' recommendations recommendations that were unrelated to their input baskets. Users reacted accordingly, providing strong negative results for these algorithms. Results from our 'typical' algorithms show some qualitative differences, but since users were exposed to two algorithms, the results may be biased. We present a wide variety of results, teasing out differences between algorithms. Finally, we succinctly summarize our most striking results as "Don't Look Stupid" in front of users.},
acmid = {1180903},
added-at = {2015-07-28T15:16:39.000+0200},
address = {New York, NY, USA},
author = {McNee, Sean M. and Kapoor, Nishikant and Konstan, Joseph A.},
biburl = {https://www.bibsonomy.org/bibtex/2ccfdb7a3a52ef55a962d8429e4c5d5c5/sdo},
booktitle = {Proceedings of the 2006 20th Anniversary Conference on Computer Supported Cooperative Work},
description = {Don't look stupid},
doi = {10.1145/1180875.1180903},
interhash = {24be686d042a3a4a710d9ff22dee0f2e},
intrahash = {ccfdb7a3a52ef55a962d8429e4c5d5c5},
isbn = {1-59593-249-6},
keywords = {context literature pitfalls recommender scholarly usecase user},
location = {Banff, Alberta, Canada},
numpages = {10},
pages = {171--180},
publisher = {ACM},
series = {CSCW '06},
timestamp = {2015-07-28T15:16:39.000+0200},
title = {Don't Look Stupid: Avoiding Pitfalls when Recommending Research Papers},
url = {http://doi.acm.org/10.1145/1180875.1180903},
year = 2006
}