Abstract

Formation of a hierarchy within an organization is a natural way of assigning the duties, delegating responsibilities and optimizing the flow of information. Only for the smallest companies the lack of the hierarchy, that is, a flat one, is possible. Yet, if they grow, the introduction of a hierarchy is inevitable. Most often, its existence results in different nature of the tasks and duties of its members located at various organizational levels or in distant parts of it. On the other hand, employees often send dozens of emails each day, and by doing so, and also by being engaged in other activities, they naturally form an informal social network where nodes are individuals and edges are the actions linking them. At first, such a social network seems distinct from the organizational one. However, the analysis of this network may lead to reproducing the organizational hierarchy of companies. This is due to the fact that that people holding a similar position in the hierarchy possibly share also a similar way of behaving and communicating attributed to their role. The key concept of this work is to evaluate how well social network measures when combined with other features gained from the feature engineering align with the classification of the members of organizational social network. As a technique for answering this research question, machine learning apparatus was employed. Here, for the classification task, Decision Trees, Random Forest, Neural Networks and Support Vector Machines have been evaluated, as well as a collective classification algorithm, which is also proposed in this paper. The used approach allowed to compare how traditional methods of machine learning classification, while supported by social network analysis, performed in comparison to a typical graph algorithm. The results demonstrate that the social network built using the metadata on communication highly exposes the organizational structure.

Highlights

  • IntroductionAs an implicit result of that, each of these interactions forms a link in a social network

  • People around the world send hundreds of emails to exchange information within organizations.As an implicit result of that, each of these interactions forms a link in a social network

  • The results demonstrate that the social network built using the metadata on communication highly exposes the organizational structure

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Summary

Introduction

As an implicit result of that, each of these interactions forms a link in a social network. This network can be a valuable source of knowledge about human behaviors and what is more, conducting the analysis can reveal groups of employees with similar communication patterns. These groups usually coincide with different levels of the organization’s hierarchy and employees who work in the same position generally have a comparable scope of duties. The analysis of the network created from a set of emails could retrieve valuable data about inner corporation processes and recreate an organizational structure.

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