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Rustam Tagiew, Kai Heinrich, Dmitry I. Ignatov, Andreas Hilbert, Radhakrishnan Delhibabu (Eds.)

EEML 2017 – The 4th International Workshop on Experimental Economics and Machine Learning

September 17-18, 2017, Dresden, Germany

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Volume Editors

Rustam Tagiew,

ONTONOVATION, Dresden, Germany

Kai Heinrich,

Business Intelligence Research, Faculty of Business and Economics Technische Universit¨at Dresden, Germany

Dmitry I. Ignatov,

Department of Data Analysis and AI, Faculty of Computer Science

National Research University Higher School of Economics, Moscow, Russia

Andreas Hilbert,

Business Intelligence Research, Faculty of Business and Economics Technische Universit¨at Dresden, Germany

Radhakrishnan Delhibabu,

Institute of Information Technology and Information Systems Kazan Federal University, Russia

The proceedings are published online on the CEUR Workshop Proceedings web site, Vol. 1968, in a series with ISSN 1613-0073.

Copyright c 2017 for the individual papers by papers’ authors, for the Volume by the editors. All rights reserved. No part of this publication may be reproduced, stored in a retrieval system, or transmitted, in any form or by any means without the prior permission of the copyright owners.

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Preface

This volume contains the papers presented at the Fourth International Workshop on Experimental Economics and Machine Learning held during September 17-18, 2017 at Technische Universit¨at Dresden, Germany.

This proceedings concentrates on an interdisciplinary approach to modelling human behavior incorporating data mining and expert knowledge from behav- ioral sciences. Data analysis results extracted from clean data of laboratory ex- periments are of advantage if compared with noisy industrial datasets from the web and other sources. In their turn, insights from behavioral sciences help data scientists. Behavior scientists see new inspirations to research from industrial data science. Market leaders in Big Data, as Microsoft, Facebook, and Google, have already realized the importance of Experimental Economics know-how for their business.

Due to the problem importance, it is not surprising that the Royal Swedish Academy of Sciences has decided to award the Sveriges Riksbank Prize in Eco- nomic Sciences in Memory of Alfred Nobel 2017 to Richard H. Thaler (University of Chicago, IL, USA) ”for his contributions to behavioural economics”. Thus, he has incorporated psychologically-based assumptions such as limited rationality, social preferences, and lack of self-control into analyses of economic decision- making. By exploring their consequences, he has shown how these human fea- tures systematically affect individual decisions and even market outcomes.

In Experimental Economics, although financial rewards restrict subjects pref- erences in experiments, the exclusive application of analytical game theory is not enough to explain the data. It calls for the development and evaluation of ancillary models. The more data is used for evaluation, the more statistical significance can be achieved. Proven regularities from one dataset can help to un- derstand another datasets. Since large amounts of behavioral data are required to scan for regularities, Machine Learning is the tool of choice for research in Ex- perimental Economics. In some works, automated agents are needed to simulate and intervene in human interactions. This proceeding aims to create a forum, where researchers from both Data Analysis and Economics are brought together in order to achieve mutually-beneficial results.

This year the workshop has hosted six regular papers out of 11 and one research proposal on a variety of topics related to different aspects of human behavior in games, demography, social and monetary interactions, recommender systems for job markets, stock markets, scientific publication activity, etc. Each paper has been reviewed by three PC members at least; all these papers rely on different data analysis techniques and the presented results are supported by data.

Dr. Kai Heinrich from TU-Dresden has presented a keynote talk on Data Science and Economics.

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We would like to thank all the authors of submitted papers and the Program Committee members for their commitment. We are grateful to local organis- ers and our sponsor: Technische Universit¨at Dresden. Finally, we would like to acknowledge the EasyChair system which helped us to manage the reviewing process.

September 17-18, 2017 Dresden

Rustam Tagiew Kai Heinrich Dmitry I. Ignatov Andreas Hilbert Delhibabu Radhakrishnan

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Organisation

Program Committee

Fadi Amroush University of Granada, Spain

Danil Fedorovykh National Research University Higher School of Eco- nomics, Moscow, Russia

Jaume Baixeries Universitat Polit`ecnica de Catalunya, Catalunya, Spain

Kai Heinrich Technische Universit¨at Dresden, Germany Andreas Hilbert Technische Universit¨at Dresden, Germany

Dmitry I. Ignatov National Research University Higher School of Eco- nomics, Russia

Heinrich Jasper Technische Universit¨at Bergakademie Freiberg, Ger- many

Alexander Karpov National Research University Higher School of Eco- nomics, Russia

Mehdi Kaytoue LIRIS - INSA de Lyon, France

Mikhail Khachay Krasovsky Institute of Mathematics and Mechanics of RAS, Russia

Natalia Konstantinova University of Wolverhampton, UK Yevgeniya Kovalchuk Birmingham City University, UK Xenia Naidenova Military Medical Academy, Russia

Amedeo Napoli LORIA Nancy (CNRS - Inria - Universit´e de Lor- raine), France

Alexey Neznanov National Research University Higher School of Eco- nomics, Russia

Sergey Nikolenko Steklov Mathematical Institute, Russia Heather Pfeiffer Akamai Physics, Inc., US

Jonas Poelmans Clarida Technologies Ltd., UK

Delhibabu Radhakrishnan Kazan Federal University, Kazan, Russia Artem Revenko Semantic Web Company GmbH, Austria

Rustam Tagiew ONTONOVATION, Germany

Elena Treshcheva Saratov Federal University, Russia Elena Tutubalina Kazan Federal University, Russia

Dmitry Ustalov Krasovsky Institute of Mathematics and Mechanics of RAS and Ural Federal University, Russia

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Table of Contents

Keynote Talk

Deep Learning and Economical Applications. . . 1 Kai Heinrich

Regular Papers

Predicting Psychology Attributes of a Social Network User. . . 2 Rustem M. Khayrullin, Ilya Makarov and Leonid E. Zhukov

Combination of Content-Based User Profiling and Local Collective

Embeddings for Job Recommendation . . . 9 Vasily Leksin, Andrey Ostapets, Mikhail Kamenshikov, Dmitry Kho- dakov and Vasily Rubtsov

Sociality is Not Lost with Monetary Transactions within Social Groups . . 18 Evgeniya Lukinova, Tatiana Babkina, Anna Sedush, Ivan Menshikov, Olga Menshikova and Mikhail Myagkov

Black-Box Classification Techniques for Demographic Sequences: from

Customised SVM to RNN. . . 31 Anna Muratova, Pavel Sushko and Thomas Espy

Do Women Socialize Better? Evidence from a Study on Sociality Effects

on Gender Differences in Cooperative Behavior . . . 41 Anastasia Peshkovskaya, Mikhail Myagkov, Tatiana Babkina and Ev- geniya Lukinova

Behavior Mining in h-index Ranking Game. . . 52 Rustam Tagiew and Dmitry I. Ignatov

Abstracts

Empirical Evaluation of Neural Networks on Stocks of Pakistan Stock

Exchange . . . 64 Ali Abdullah, Ambreen Hanif and Noman Javed

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