Reading Articles Online

12/08/2020
by   Andreas Karrenbauer, et al.
0

We study the online problem of reading articles that are listed in an aggregated form in a dynamic stream, e.g., in news feeds, as abbreviated social media posts, or in the daily update of new articles on arXiv. In such a context, the brief information on an article in the listing only hints at its content. We consider readers who want to maximize their information gain within a limited time budget, hence either discarding an article right away based on the hint or accessing it for reading. The reader can decide at any point whether to continue with the current article or skip the remaining part irrevocably. In this regard, Reading Articles Online, RAO, does differ substantially from the Online Knapsack Problem, but also has its similarities. Under mild assumptions, we show that any α-competitive algorithm for the Online Knapsack Problem in the random order model can be used as a black box to obtain an (e + α)C-competitive algorithm for RAO, where C measures the accuracy of the hints with respect to the information profiles of the articles. Specifically, with the current best algorithm for Online Knapsack, which is 6.65<2.45e-competitive, we obtain an upper bound of 3.45e C on the competitive ratio of RAO. Furthermore, we study a natural algorithm that decides whether or not to read an article based on a single threshold value, which can serve as a model of human readers. We show that this algorithmic technique is O(C)-competitive. Hence, our algorithms are constant-competitive whenever the accuracy C is a constant.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
06/01/2021

Is it a click bait? Let's predict using Machine Learning

In this era of digitisation, news reader tend to read news online. This ...
research
01/08/2018

Social Media Attention Increases Article Visits: An Investigation on Article-Level Referral Data of PeerJ

In order to better understand the effect of social media in the dissemin...
research
09/26/2021

A Study of Fake News Reading and Annotating in Social Media Context

The online spreading of fake news is a major issue threatening entire so...
research
02/11/2020

An Optimal Algorithm for Online Multiple Knapsack

In the online multiple knapsack problem, an algorithm faces a stream of ...
research
04/21/2020

Beyond Optimizing for Clicks: Incorporating Editorial Values in News Recommendation

With the uptake of algorithmic personalization in the news domain, news ...
research
08/19/2019

Thumbnails for Data Stories: A Survey of Current Practices

When people browse online news, small thumbnail images accompanying link...
research
11/28/2022

Robot Kinematics: Motion, Kinematics and Dynamics

This is a follow-up tutorial article of our previous article entitled "R...

Please sign up or login with your details

Forgot password? Click here to reset