We made three progresses in the field through mass estimation: First, we propose the first adaptive version of mass estimation using a new nearest neighbor procedure which runs significantly faster than existing nearest neighbor procedures, and it needs no indexing schemes. Second, we propose the first mass-based Bayesian classifier which estimates the likelihood directly in multi-dimensional space; unlike existing Bayesian classifiers which estimate simplified surrogates of likelihood (e.g., one-dimensional likelihood). Third, we have created the first mass-based similarity measure and show that it is an effective alternative to distance-based similarity measure in content-based information retrieval problems.
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REPORT DATE
SEP 20132. REPORT TYPE
PERFORMING ORGANIZATION NAME(S) AND ADDRESS(ES)Gippsland School of Information Technology, ,Monash University,Victoria,Australia,AU,3842
PERFORMING ORGANIZATION REPORT NUMBER
N/A
SPONSORING/MONITORING AGENCY NAME(S) AND ADDRESS(ES)
AOARD, UNIT 45002, APO, AP, 96338-5002
SPONSOR/MONITOR'S ACRONYM(S)
AOARD
SPONSOR/MONITOR'S REPORT NUMBER(S)
AOARD-114112
DISTRIBUTION/AVAILABILITY STATEMENT
Approved for public release; distribution unlimited
SUPPLEMENTARY NOTES
ABSTRACTThree progresses were made in the field through mass estimation: 1) the first adaptive version of mass estimation using a new nearest neighbor procedure which runs significantly faster than existing nearest neighbor procedures and needs no indexing schemes, 2) the first mass-based Bayesian classifier which estimates the likelihood directly in multi-dimensional space; unlike existing Bayesian classifiers which estimate simplified surrogates of likelihood (e.g., one-dimensional likelihood), and 3) the first mass-based similarity measure which can be an effective alternative to distance-based similarity measure.
SUBJECT TERMS
Information diffusion, Opinion formation, Social network, Burst detection, Influential nodes, Network dynamics, Knowledge discovery from network
SECURITY CLASSIFICATION OF:17. LIMITATION OF ABSTRACT Prescribed by ANSI Std Z39-18 In addition, we have extended the two previous works on mass estimation and published them in Machine Learning Jo...