Data-Driven Engineering of Social Dynamics: Pattern Matching and Profit Maximization.

In this paper, we define a new problem related to social media, namely, the data-driven engineering of social dynamics. More precisely, given a set of observations from the past, we aim at finding the best short-term intervention that can lead to predefined long-term outcomes. Toward this end, we pr...

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Main Authors: Huan-Kai Peng, Hao-Chih Lee, Jia-Yu Pan, Radu Marculescu
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2016-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC4714878?pdf=render
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spelling doaj-0705c3271ffd4dd49f5daeabb6895ff52020-11-25T01:25:28ZengPublic Library of Science (PLoS)PLoS ONE1932-62032016-01-01111e014649010.1371/journal.pone.0146490Data-Driven Engineering of Social Dynamics: Pattern Matching and Profit Maximization.Huan-Kai PengHao-Chih LeeJia-Yu PanRadu MarculescuIn this paper, we define a new problem related to social media, namely, the data-driven engineering of social dynamics. More precisely, given a set of observations from the past, we aim at finding the best short-term intervention that can lead to predefined long-term outcomes. Toward this end, we propose a general formulation that covers two useful engineering tasks as special cases, namely, pattern matching and profit maximization. By incorporating a deep learning model, we derive a solution using convex relaxation and quadratic-programming transformation. Moreover, we propose a data-driven evaluation method in place of the expensive field experiments. Using a Twitter dataset, we demonstrate the effectiveness of our dynamics engineering approach for both pattern matching and profit maximization, and study the multifaceted interplay among several important factors of dynamics engineering, such as solution validity, pattern-matching accuracy, and intervention cost. Finally, the method we propose is general enough to work with multi-dimensional time series, so it can potentially be used in many other applications.http://europepmc.org/articles/PMC4714878?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Huan-Kai Peng
Hao-Chih Lee
Jia-Yu Pan
Radu Marculescu
spellingShingle Huan-Kai Peng
Hao-Chih Lee
Jia-Yu Pan
Radu Marculescu
Data-Driven Engineering of Social Dynamics: Pattern Matching and Profit Maximization.
PLoS ONE
author_facet Huan-Kai Peng
Hao-Chih Lee
Jia-Yu Pan
Radu Marculescu
author_sort Huan-Kai Peng
title Data-Driven Engineering of Social Dynamics: Pattern Matching and Profit Maximization.
title_short Data-Driven Engineering of Social Dynamics: Pattern Matching and Profit Maximization.
title_full Data-Driven Engineering of Social Dynamics: Pattern Matching and Profit Maximization.
title_fullStr Data-Driven Engineering of Social Dynamics: Pattern Matching and Profit Maximization.
title_full_unstemmed Data-Driven Engineering of Social Dynamics: Pattern Matching and Profit Maximization.
title_sort data-driven engineering of social dynamics: pattern matching and profit maximization.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2016-01-01
description In this paper, we define a new problem related to social media, namely, the data-driven engineering of social dynamics. More precisely, given a set of observations from the past, we aim at finding the best short-term intervention that can lead to predefined long-term outcomes. Toward this end, we propose a general formulation that covers two useful engineering tasks as special cases, namely, pattern matching and profit maximization. By incorporating a deep learning model, we derive a solution using convex relaxation and quadratic-programming transformation. Moreover, we propose a data-driven evaluation method in place of the expensive field experiments. Using a Twitter dataset, we demonstrate the effectiveness of our dynamics engineering approach for both pattern matching and profit maximization, and study the multifaceted interplay among several important factors of dynamics engineering, such as solution validity, pattern-matching accuracy, and intervention cost. Finally, the method we propose is general enough to work with multi-dimensional time series, so it can potentially be used in many other applications.
url http://europepmc.org/articles/PMC4714878?pdf=render
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AT jiayupan datadrivenengineeringofsocialdynamicspatternmatchingandprofitmaximization
AT radumarculescu datadrivenengineeringofsocialdynamicspatternmatchingandprofitmaximization
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