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1 – 10 of over 2000
Article
Publication date: 19 May 2023

Weimo Li, Yaobin Lu, Peng Hu and Sumeet Gupta

Algorithms are widely used to manage various activities in the gig economy. Online car-hailing platforms, such as Uber and Lyft, are exemplary embodiments of such algorithmic

Abstract

Purpose

Algorithms are widely used to manage various activities in the gig economy. Online car-hailing platforms, such as Uber and Lyft, are exemplary embodiments of such algorithmic management, where drivers are managed by algorithms for task allocation, work monitoring and performance evaluation. Despite employing substantially, the platforms face the challenge of maintaining and fostering drivers' work engagement. Thus, this study aims to examine how the algorithmic management of online car-hailing platforms affects drivers' work engagement.

Design/methodology/approach

Drawing on the transactional theory of stress, the authors examined the effects of algorithmic monitoring and fairness on online car-hailing drivers' work engagement and revealed the mediation effects of challenge-hindrance appraisals. Based on survey data collected from 364 drivers, the authors' hypotheses were examined using partial least squares structural equation modeling (PLS-SEM). The authors also applied path comparison analyses to further compare the effects of algorithmic monitoring and fairness on the two types of appraisals.

Findings

This study finds that online car-hailing drivers' challenge-hindrance appraisals mediate the relationship between algorithmic management characteristics and work engagement. Algorithmic monitoring positively affects both challenge and hindrance appraisals in online car-hailing drivers. However, algorithmic fairness promotes challenge appraisal and reduces hindrance appraisal. Consequently, challenge and hindrance appraisals lead to higher and lower work engagement, respectively. Further, the additional path comparison analysis showed that the hindering effect of algorithmic monitoring exceeds its challenging effect, and the challenge-promoting effect of algorithmic fairness is greater than the algorithm's hindrance-reducing effect.

Originality/value

This paper reveals the underlying mechanisms concerning how algorithmic monitoring and fairness affect online car-hailing drivers' work engagement and fills the gap in the research on algorithmic management in the context of online car-hailing platforms. The authors' findings also provide practical guidance for online car-hailing platforms on how to improve the platforms' algorithmic management systems.

Article
Publication date: 25 November 2021

Robert V. Kozinets

Contemporary branding transpires in a complex technological and media environment whose key contextual characteristics remain largely unexplained. The article provides a…

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Abstract

Purpose

Contemporary branding transpires in a complex technological and media environment whose key contextual characteristics remain largely unexplained. The article provides a conceptual understanding of the elements of contemporary branding as they take place using networked platforms and explains them as an increasingly important practice that affects customer and manager experience.

Design/methodology/approach

This article draws on a variety of recent sources to synthesize a model that offers a more contextualized, comprehensive and up-to-date understanding of how branding has become and is being altered because of the use of branded service platforms and algorithms.

Findings

Core terminology about technoculture, technocultural fields, platform assemblages, affordances, algorithms and networks of desire set the foundation for a deeper conceptual understanding of the novel elements of algorithmic branding. Algorithmic branding transcended the mere attachment of specific “mythic” qualities to a product or experience and has morphed into the multidimensional process of using media to manage communication. The goal of marketers is now to use engagement practices as well as algorithmic activation, amplification, customization and connectivity to drive consumers deeper into the brand spiral, entangling them in networks of brand-related desire.

Practical implications

The model has a range of important managerial implications for brand management and managerial relations. It promotes a understanding of platform brands as service brands. It underscores and models the interconnected role that consumers, devices and algorithms, as well as technology companies and their own service brands play in corporate branding efforts. It suggests that consumers might unduly trust these service platforms. It points to the growing importance of platforms' service brands and the consequent surrender of branding power to technology companies. And it also provides a range of important ethical and pragmatic questions that curious marketers, researchers and policy-makers may examine.

Originality/value

This model provides a fresh look at the important topic of branding today, updating prior conceptions with a comprehensive and contextually grounded model of service platforms and algorithmic branding.

Article
Publication date: 12 December 2023

Shravani Guduru, Nivethitha Santhanam and Nancyprabha Pushparaj

This paper aims to quantitatively explore the trends and patterns of the existing literature in the gig economy.

Abstract

Purpose

This paper aims to quantitatively explore the trends and patterns of the existing literature in the gig economy.

Design/methodology/approach

Using a total of 1,707 documents retrieved from the Scopus and Web of Science databases, bibliometric analysis using R-Biblioshiny and VOSviewer software was performed to map the studies in the gig economy.

Findings

The paper provides information on the most productive authors, countries and journals, as well as the emerging themes in gig research. It highlights the most prolific authors, with a notable presence from the USA and the UK, which are also the countries with the most publications and citations. China has also emerged prominently, both in terms of the number of publications and its involvement in thematic clusters and trending topics. Through co-word analysis and thematic clustering, the study provides information about emerging themes in gig economy studies, such as labor, technology, management and precarity. The results provide insightful information for comprehending the effects of gig labor in the contemporary workforce.

Research limitations/implications

This study provides a comprehensive overview of the scholarly literature related to the gig economy, exploring the key insights by highlighting the evolving trends in gig research.

Originality/value

By mapping thematic clusters, tracking research evolution and identifying trending topics, it provides a unique perspective on the field's development and emerging areas of focus. It serves as a valuable means for addressing the challenges and opportunities presented by the gig economy.

Details

Global Knowledge, Memory and Communication, vol. ahead-of-print no. ahead-of-print
Type: Research Article
ISSN: 2514-9342

Keywords

Book part
Publication date: 4 July 2019

Christine Gerber and Martin Krzywdzinski

The term “crowdwork” describes a new form of digital work that is organized and regulated by internet-based platforms. This chapter examines how crowdwork platforms ensure their…

Abstract

The term “crowdwork” describes a new form of digital work that is organized and regulated by internet-based platforms. This chapter examines how crowdwork platforms ensure their virtual workforce’s commitment and control its performance despite its high mobility, anonymity, and dispersion. The findings are based on a case study analysis of 15 microtask and macrotask platforms, encompassing 32 interviews with representatives of crowdwork platforms, and crowdworkers, as well as an analysis of the platforms’ homepages and community spaces. The chapter shows that performance control on crowd platforms relies on a combination of direct control, reputation systems, and community building, which have until now been studied in isolation or entirely ignored. Moreover, the findings suggest that while all three elements can be found on both microtask and macrotask platforms, their functionality and purpose differ. Overall, the findings highlight that platforms are no neutral intermediaries but organizations that adopt an active role in structuring the digital labor process and in shaping working conditions. Their managerial structures are coded and objectified into seemingly neutral technological infrastructures, whereby the underlying power relations between capital and labor become obscured.

Details

Work and Labor in the Digital Age
Type: Book
ISBN: 978-1-78973-585-7

Keywords

Abstract

Details

The Emerald Handbook of Work, Workplaces and Disruptive Issues in HRM
Type: Book
ISBN: 978-1-80071-780-0

Article
Publication date: 27 November 2023

Olatunji David Adekoya, Chima Mordi, Hakeem Adeniyi Ajonbadi and Weifeng Chen

This paper aims to explore the implications of algorithmic management on careers and employment relationships in the Nigerian gig economy. Specifically, drawing on labour process…

Abstract

Purpose

This paper aims to explore the implications of algorithmic management on careers and employment relationships in the Nigerian gig economy. Specifically, drawing on labour process theory (LPT), this study provides an understanding of the production relations beyond the “traditional standard” to “nonstandard” forms of employment in a gig economy mediated by digital platforms or digital forms of work, especially on ride-hailing platforms (Uber and Bolt).

Design/methodology/approach

This study adopted the interpretive qualitative approach and a semi-structured interview of 49 participants, including 46 platform drivers and 3 platform managers from Uber and Bolt.

Findings

This study addresses the theoretical underpinnings of the LPT as it relates to algorithmic management and control in the digital platform economy. The study revealed that, despite the ultra-precarious working conditions and persistent uncertainty in employment relations under algorithmic management, the underlying key factors that motivate workers to engage in digital platform work include higher job flexibility and autonomy, as well as having a source of income. This study captured the human-digital interface and labour processes related to digital platform work in Nigeria. Findings of this study also revealed that algorithmic management enables a transactional exchange between platform providers and drivers, while relational exchanges occur between drivers and customers/passengers. Finally, this study highlighted the perceived impact of algorithmic management on the attitude and performance of workers.

Originality/value

The research presents an interesting case study to investigate the influence of algorithmic management and labour processes on employment relationships in the largest emerging economy in Africa.

Details

Information Technology & People, vol. ahead-of-print no. ahead-of-print
Type: Research Article
ISSN: 0959-3845

Keywords

Article
Publication date: 28 February 2024

Nastaran Hajiheydari and Mohammad Soltani Delgosha

Digital labor platforms (DLPs) are transforming the nature of the work for an increasing number of workers, especially through extensively employing automated algorithms for…

Abstract

Purpose

Digital labor platforms (DLPs) are transforming the nature of the work for an increasing number of workers, especially through extensively employing automated algorithms for performing managerial functions. In this novel working setting – characterized by algorithmic governance, and automatic matching, rewarding and punishing mechanisms – gig-workers play an essential role in providing on-demand services for final customers. Since gig-workers’ continued participation is crucial for sustainable service delivery in platform contexts, this study aims to identify and examine the antecedents of their working outcomes, including burnout and engagement.

Design/methodology/approach

We suggested a theoretical framework, grounded in the job demands-resources heuristic model to investigate how the interplay of job demands and resources, resulting from working in DLPs, explains gig-workers’ engagement and burnout. We further empirically tested the proposed model to understand how DLPs' working conditions, in particular their algorithmic management, impact gig-working outcomes.

Findings

Our findings indicate that job resources – algorithmic compensation, work autonomy and information sharing– have significant positive effects on gig-workers’ engagement. Furthermore, our results demonstrate that job insecurity, unsupportive algorithmic interaction (UAI) and algorithmic injustice significantly contribute to gig-workers’ burnout. Notably, we found that job resources substantially, but differently, moderate the relationship between job demands and gig-workers’ burnout.

Originality/value

This study contributes a theoretically accurate and empirically grounded understanding of two clusters of conditions – job demands and resources– as a result of algorithmic management practice in DLPs. We developed nuanced insights into how such conditions are evaluated by gig-workers and shape their engagement or burnout in DLP emerging work settings. We further uncovered that in gig-working context, resources do not similarly buffer against the negative effects of job demands.

Details

Information Technology & People, vol. ahead-of-print no. ahead-of-print
Type: Research Article
ISSN: 0959-3845

Keywords

Article
Publication date: 23 September 2021

Donghee Shin, Azmat Rasul and Anestis Fotiadis

As algorithms permeate nearly every aspect of digital life, artificial intelligence (AI) systems exert a growing influence on human behavior in the digital milieu. Despite its…

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Abstract

Purpose

As algorithms permeate nearly every aspect of digital life, artificial intelligence (AI) systems exert a growing influence on human behavior in the digital milieu. Despite its popularity, little is known about the roles and effects of algorithmic literacy (AL) on user acceptance. The purpose of this study is to contextualize AL in the AI environment by empirically examining the role of AL in developing users' information processing in algorithms. The authors analyze how users engage with over-the-top (OTT) platforms, what awareness the user has of the algorithmic platform and how awareness of AL may impact their interaction with these systems.

Design/methodology/approach

This study employed multiple-group equivalence methods to compare two group invariance and the hypotheses concerning differences in the effects of AL. The method examined how AL helps users to envisage, understand and work with algorithms, depending on their understanding of the control of the information flow embedded within them.

Findings

Our findings clarify what functions AL plays in the adoption of OTT platforms and how users experience algorithms, particularly in contexts where AI is used in OTT algorithms to provide personalized recommendations. The results point to the heuristic functions of AL in connection with its ties in trust and ensuing attitude and behavior. Heuristic processes using AL strongly affect the credibility of recommendations and the way users understand the accuracy and personalization of results. The authors argue that critical assessment of AL must be understood not just about how it is used to evaluate the trust of service, but also regarding how it is performatively related in the modeling of algorithmic personalization.

Research limitations/implications

The relation of AL and trust in an algorithm lends strategic direction in developing user-centered algorithms in OTT contexts. As the AI industry has faced decreasing credibility, the role of user trust will surely give insights on credibility and trust in algorithms. To better understand how to cultivate a sense of literacy regarding algorithm consumption, the AI industry could provide examples of what positive engagement with algorithm platforms looks like.

Originality/value

User cognitive processes of AL provide conceptual frameworks for algorithm services and a practical guideline for the design of OTT services. Framing the cognitive process of AL in reference to trust has made relevant contributions to the ongoing debate surrounding algorithms and literacy. While the topic of AL is widely recognized, empirical evidence on the effects of AL is relatively rare, particularly from the user's behavioral perspective. No formal theoretical model of algorithmic decision-making based on the dual processing model has been researched.

Book part
Publication date: 12 December 2023

Floris de Krijger

A growing body of research finds that gig economy platforms use gamification to enhance managerial control. Focusing on technologically mediated forms of gamification, this…

Abstract

A growing body of research finds that gig economy platforms use gamification to enhance managerial control. Focusing on technologically mediated forms of gamification, this literature reveals how platforms mobilize gig workers’ work effort by making the labour process resemble a game. This chapter contends that this tech-centric scholarship fails to fully capture the historical continuities between contemporary and much older occurrences of game-playing at work. Informed by interviews and participatory observations at two food delivery platforms in Amsterdam, I document how these platforms’ piece wage system gives rise to a workplace dynamic in which severely underpaid delivery couriers continuously employ game strategies to maximize their gig income. Reminiscent of observations from the early shop floor ethnographies of the manufacturing industry, I show that the game of gig income maximization operates as an indirect modality of control by (re)aligning the interests of couriers with the interests of capital and by individualizing and depoliticizing couriers’ overall low wage level. I argue that the new, algorithmic technologies expand and intensify the much older forms of gamified control by infusing the organizational activities of shift and task allocation with the logic of the piece wage game and by increasing the possibilities for interaction, direct feedback and immersion. My study contributes to the literature on gamification in the gig economy by interweaving it with the classic observations derived from the manufacturing industry and by developing a conceptualization of gamification in which both capital and labour exercise agency.

Details

Ethnographies of Work
Type: Book
ISBN: 978-1-83753-949-9

Keywords

Book part
Publication date: 19 August 2021

Kristine M. Kuhn, Jeroen Meijerink and Anne Keegan

This work examines the intersection between traditional human resource management and the novel employment arrangements of the expanding gig economy. While there is a substantial…

Abstract

This work examines the intersection between traditional human resource management and the novel employment arrangements of the expanding gig economy. While there is a substantial multidisciplinary literature on the digital platform labor phenomenon, it has been largely centered on the experiences of gig workers. As digital labor platforms continue to grow and specialize, more managers, executives, and human resource practitioners will need to make decisions about whether and how to utilize gig workers. Here the authors explore and interrogate the unique features of human resource management (HRM) activities in the context of digital labor platforms. The authors discuss challenges and opportunities regarding (1) HRM in organizations that outsource labor needs to external labor platforms, (2) HRM functions within digital labor platform firms, and (3) HRM policies and practices for organizations that develop their own spin-off digital labor platform. To foster a more nuanced understanding of work in the gig economy, the authors identify common themes across these contexts, highlight knowledge gaps, offer recommendations for future research, and outline pathways for collecting empirical data on HRM in the gig economy.

Details

Research in Personnel and Human Resources Management
Type: Book
ISBN: 978-1-80117-430-5

Keywords

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