TY - JOUR
T1 - Emergence of scaling in human-interest dynamics
AU - Zhao, Zhi Dan
AU - Yang, Zimo
AU - Zhang, Zike
AU - Zhou, Tao
AU - Huang, Zi Gang
AU - Lai, Ying-Cheng
N1 - Funding Information:
We thank Dr Junming Huang for the Douban data. This work was supported by the NSF of China (Grants No.11275003, 11222543), and by the Fundamental Research Funds for the Central Universities (Grant No. ZYGX2011YB024). YCL was supported by AFOSR under Grant No. FA9550-10-1-0083 and by NSF under Grant No. CDI-1026710.
PY - 2013/12/11
Y1 - 2013/12/11
N2 - Human behaviors are often driven by human interests. Despite intense recent efforts in exploring the dynamics of human behaviors, little is known about human-interest dynamics, partly due to the extreme difficulty in accessing the human mind from observations. However, the availability of large-scale data, such as those from e-commerce and smart-phone communications, makes it possible to probe into and quantify the dynamics of human interest. Using three prototypical "Big Data" sets, we investigate the scaling behaviors associated with human-interest dynamics. In particular, from the data sets we uncover fat-tailed (possibly power-law) distributions associated with the three basic quantities: (1) the length of continuous interest, (2) the return time of visiting certain interest, and (3) interest ranking and transition. We argue that there are three basic ingredients underlying human-interest dynamics: preferential return to previously visited interests, inertial effect, and exploration of new interests. We develop a biased random-walk model, incorporating the three ingredients, to account for the observed fat-tailed distributions. Our study represents the first attempt to understand the dynamical processes underlying human interest, which has significant applications in science and engineering, commerce, as well as defense, in terms of specific tasks such as recommendation and human-behavior prediction.
AB - Human behaviors are often driven by human interests. Despite intense recent efforts in exploring the dynamics of human behaviors, little is known about human-interest dynamics, partly due to the extreme difficulty in accessing the human mind from observations. However, the availability of large-scale data, such as those from e-commerce and smart-phone communications, makes it possible to probe into and quantify the dynamics of human interest. Using three prototypical "Big Data" sets, we investigate the scaling behaviors associated with human-interest dynamics. In particular, from the data sets we uncover fat-tailed (possibly power-law) distributions associated with the three basic quantities: (1) the length of continuous interest, (2) the return time of visiting certain interest, and (3) interest ranking and transition. We argue that there are three basic ingredients underlying human-interest dynamics: preferential return to previously visited interests, inertial effect, and exploration of new interests. We develop a biased random-walk model, incorporating the three ingredients, to account for the observed fat-tailed distributions. Our study represents the first attempt to understand the dynamical processes underlying human interest, which has significant applications in science and engineering, commerce, as well as defense, in terms of specific tasks such as recommendation and human-behavior prediction.
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U2 - 10.1038/srep03472
DO - 10.1038/srep03472
M3 - Article
C2 - 24326949
AN - SCOPUS:84890675107
SN - 2045-2322
VL - 3
JO - Scientific Reports
JF - Scientific Reports
M1 - 3472
ER -