TY - JOUR
T1 - A group testing algorithm with online informational learning
AU - Kagan, Eugene
AU - Ben-Gal, Irad
N1 - Funding Information:
Irad Ben-Gal is the Head of the Department of Industrial Engineering & Management at Tel Aviv University. His research interests include statistical methods for control and analysis of complex processes, machine learning applications to industrial and service systems, and big data analytics. He holds a B.Sc. (1992) degree from Tel-Aviv University and M.Sc. (1996) and Ph.D. (1998) degrees from Boston University. He has written and edited five books, has published more than 80 scientific papers and patents, received numerous best papers awards, and supervised dozens of graduate students. He serves on the Editorial Boards of several international journals. He is the Chair-Elect of the Quality Statistics and Reliability Society of the Institute for Operations Research and Management Sciences, the European Network for Business and Industrial Statistics, and the International Statistical Institute. He has received several research grants and awards from General Motors, IEEE, Israel Ministry of Science, Israel Scientific Foundation, Israeli Prime Minister Ministry, and the European Community. He has led many R&D projects and worked with companies such as IBM, Proctor and Gamble, Kimberly-Clark, Applied Materials, SAP, and more. He was a co-founder of Context-Based 4casting (C-B4), a software company that develops novel predictive analytics tools for retail and service organizations.
PY - 2014
Y1 - 2014
N2 - An online group testing method to search for a hidden object in a discrete search space is proposed. A relevant example is a search after a nonconforming unit in a batch, while many other applications can be related. A probability mass function is defined over the search space to represent the probability of an object (e.g., a nonconforming unit) to be located at some point or subspace. The suggested method follows a stochastic local search procedure and can be viewed as a generalization of the Learning Real-Time A* (LRTA*) search algorithm, while using informational distance measures over the searched space. It is proved that the proposed Informational LRTA* (ILRTA*) algorithm converges and always terminates. Moreover, it is shown that under relevant assumptions, the proposed algorithm generalizes known optimal information-theoretic search procedures, such as the offline Huffman search or the generalized optimum testing algorithm. However, the ILRTA* can be applied to new situations, such as a search with side information or an online search where the probability distribution changes. The obtained results can help to bridge the gap between different search procedures that are related to quality control, artificial intelligence, and information theory.
AB - An online group testing method to search for a hidden object in a discrete search space is proposed. A relevant example is a search after a nonconforming unit in a batch, while many other applications can be related. A probability mass function is defined over the search space to represent the probability of an object (e.g., a nonconforming unit) to be located at some point or subspace. The suggested method follows a stochastic local search procedure and can be viewed as a generalization of the Learning Real-Time A* (LRTA*) search algorithm, while using informational distance measures over the searched space. It is proved that the proposed Informational LRTA* (ILRTA*) algorithm converges and always terminates. Moreover, it is shown that under relevant assumptions, the proposed algorithm generalizes known optimal information-theoretic search procedures, such as the offline Huffman search or the generalized optimum testing algorithm. However, the ILRTA* can be applied to new situations, such as a search with side information or an online search where the probability distribution changes. The obtained results can help to bridge the gap between different search procedures that are related to quality control, artificial intelligence, and information theory.
KW - Group testing
KW - Information search
KW - Real-time heuristic search
KW - Search and screening
UR - http://www.scopus.com/inward/record.url?scp=84887945657&partnerID=8YFLogxK
U2 - 10.1080/0740817X.2013.803639
DO - 10.1080/0740817X.2013.803639
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AN - SCOPUS:84887945657
SN - 0740-817X
VL - 46
SP - 164
EP - 184
JO - IIE Transactions (Institute of Industrial Engineers)
JF - IIE Transactions (Institute of Industrial Engineers)
IS - 2
ER -