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Preface: Selected Papers from the Workshop Bioinformatics and Artificial Intelligence Joined with the International Joint Conference on Artificial Intelligence

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Preface

Preface:

Selected Papers from the Workshop Bioinformatics

and Artificial Intelligence Joined with the International

Joint Conference on Artificial Intelligence

ABDOULAYE BANIRE´ DIALLO,1ENGELBERT MEPHU NGUIFO,2and MOHAMMED J. ZAKI3

T

his volume containsa selected subset of the articles presented at the two first editions of the workshop Bioinformatics and Artificial Intelligence (BAI) joined with the International Joint Conference on Ar-tificial Intelligence. The format of the workshops was one-day format with one keynote speaker, two invited speakers, and seven oral presentations. The goal of BAI is to bring together active scholars and practitioners at the frontiers of artificial intelligence (AI) and bioinformatics. AI holds a tremendous repertoire of algorithms and methods that constitute the core of different topics of bioinformatics and computational biology research. BAI goals are twofold: (1) How can AI techniques contribute to bioinformatics research? and (2) How can bioinformatics research raise new fundamental questions in AI? Contributions clearly point out answers to one of these goals focusing on AI techniques as well as focusing on biological problems.

The first edition was held in Buenos Aires, Argentina on July 27th, 2015. The second edition was held in New York, United States, on July 11th, 2016. The two workshops were chaired by Abdoulaye Banire´ Diallo, Engelbert Mephu Nguifo, and Mohammed J. Zaki. During the two editions, the articles submitted to the workshops were carefully peer reviewed by at least three members of the program committee and 14 articles with the highest scores were selected (7 articles each edition). Accepted articles were then invited for submission to a special issue of the Journal of Computational Biology. The submissions to the special issue went through an additional round of reviewing before publication. We would like to thank all the PC members and the reviewers for their reviews, as well as all the authors for their contributions, Angel Murakami, for the smooth cooperation regarding various organization details, and Sorin Istrail and the editorial staff at Journal of Computational Biology for numerous discussions, helpful tips, and technical support.

Address correspondence to: Abdoulaye Banire´ Diallo Department of Computer Science Universite´ du Que´bec a` Montre´al PO BOX 8888 Downtown station Montreal, Quebec, H3C 3P8 Canada E-mail: diallo.abdoulaye@uqam.ca

1

Department of Computer Science, Universite´ du Que´bec a` Montre´al, Montreal, Canada. 2

Universite´ Clermont Auvergne, Clermont-Ferrand, Laboratoire d’Information de Mode´lisation, et Optimisation des Syste`mes (LIMOS), Aubie`re cedex, France.

3

Department of Computer Science, Rensselaer Polytechnic Institute, Troy, New York. JOURNAL OF COMPUTATIONAL BIOLOGY

Volume 24, Number 8, 2017 # Mary Ann Liebert, Inc. P. 733

DOI: 10.1089/cmb.2017.29008.abd

733

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