| 2 July 2019 The Case for Public Service Recommender Algorithms Ben Fields, Rhianne Jones, Tim Cowlishaw BBC London
[email protected] ABSTRACT In this position paper we lay out the role for public service or- ganisations within the fairness, accountability, and transparency discourse. We explore the idea of public service algorithms and what role they might play, especially with recommender systems. We then describe a research agenda for public service recommendation systems. 1 INTRODUCTION In traditional commercial applications of recommender systems, the goal is a straightforward extension of an organisation’s overall commercial aims. This leads to a focus on designing and optimising recommender systems that above all else improve overall revenue (via increased purchasing) or in the case of a subscription service, increased engagement (via increased consumption of items, e.g. listens for songs, views for short video). However, for a class of organisations that answer to the public rather than shareholders, a dierent drive exists: public service. Whilst there is no single denition of what constitutes public service motivations, there are several ways in which the notion of public service enshrines the principles of Fairness, Accountability and Transparency (FAT) and presents an opportunity for novel ways to design recommender algorithms, challenging the orthodoxy of commercial applications of this technology. 2 CONTEXT Using data to deliver personalised services to audiences has be- come a key strategic priority for many Public Service Broadcasters across Europe [7]. However the increasing use of algorithmic rec- ommendations and personalisation in Public Service Media (PSM), specically in journalism, has surfaced concerns about the poten- tial risk these models pose for PSM values like universality and diversity, through the potential to undermine shared and collective media experiences, reinforce audiences’ preexisting preferences, and the cumulative risk to PSM of becoming more like a goldsh bowl, rather than a window to the world [1, 17, 19, 23, 25]. However, counter to this is the view that recommender systems could be im- portant in promoting diversity of supply and stimulating exposure diversity [8, 9]. The European Broadcast Union (EBU) describes due oversight and scrutiny [26] to ensure they do not undermine editorial independence, impartiality [7] and their trusted reputa- tion. They must deliver recommendations that responsibly balance personalisation with the public interest. 3 PSM VALUES AS A FRAMEWORK FOR RECOMMENDER SYSTEMS The notion that PSM values oer distinct frameworks for recom- mender systems is underpinning new EBU initiatives to develop distinctly PSM approaches to recommendations1. As a public ser- vice broadcaster, the BBC’s aims and operating principles are en- shrined in our public purposes2 which commit us to impartiality, distinctiveness, and diversity in our output. Issues of Fairness, Ac- countability and Transparency (FAT) thus inform approaches to recommendation and personalisation as these values are baked into its very reasons for existing as an organisation - in a way that is not necessarily true of commercial organisations. John Reith’s famous imperative of the BBC to "inform, educate and entertain" lies at the heart of the BBC mission. Whilst this has evolved over the years, the BBC’s unique duty and role in society remains central. In the domain of recommender systems the Reithian view of PSM commits to providing content which fulls the public’s need for diverse and balanced information, entertainment, and education in a manner which is unexpected or surprising – best expressed by Reith’s assertion that "the best way to give the public what it wants is to reject the express policy of giving the public what it wants"3. Notions of public service inevitably vary across dierent geo-political and cultural contexts [8] and a one size ts all model is likely to be unsatisfactory but it is clear that the PSM remit has implications for how we design and evaluate recommenders to ensure principles such as exposure diversity and surprise are maintained. 4 PUBLIC SERVICE ALGORITHMIC DESIGN: WHAT YOU OPTIMISE FOR MATTERS Why is this signicant for recommender systems specically? The metrics we choose to optimise for are critical. Many commercial providers optimise for engagement and audience gures, for ex- ample collaborative ltering (CF) algorithms are often evaluated in terms of how accurately they predict user ratings. If PSM or- Human-centric evaluation of similarity spaces of news articles Clara Higuera Caba˜ nes Michel Schammel Shirley Ka Kei Yu Ben Fields [first name].[last name]@bbc.co.uk The British Broadcasting Corporation New Broadcasting House, Portland Place London, W1A 1AA United Kingdom Abstract In this paper we present a practical approach to evaluate similarity spaces of news articles, guided by human perception. This is moti- vated by applications that are expected by modern news audiences, most notably recom- mender systems. Our approach is laid out and contextualised with a brief background in human similarity measurement and percep- tion. This is complimented with a discussion of computational methods for measuring sim- ilarity between news articles. We then go through a prototypical use of the evaluation in a practical setting before we point to fu- ture work enabled by this framework. 1 Introduction and Motivation In a modern news organisation, there are a number of functions that depend on computational understand- ing of produced media. For text-based news articles this typically takes the form of lower dimensionality content-similarity. But how do we know that these similarities are reliable? On what basis can we take these computational similarity spaces to be a proxy for human judgement? In this paper we address this • Analogously, what are e cient and e↵ective means of computing similarity between news ar- ticles • By what means can we use the human cognition of article similarity to select parameters or otherwise tune a computed similarity space A typical application that benefits from this sort of human calibrated similarity space for news articles is an article recommender system. While a classic col- laborative filtering approach has been tried within the news domain [LDP10], typical user behaviour makes this approach di cult in practice. In particular, the lifespan of individual articles tends to be short and the item preferences of users is light. This leads to a situation where in practice a col- laborative filtering approach is hampered by the cold- start problem, where lack of preference data negatively impacts the predictive power of the system. To get around this issue, a variety of more domain-specific ap- proaches have been tried [GDF13, TASJ14, KKGV18]. However, these all demand significant levels of analyt- ical e↵ort or otherwise present challenges when scaling to a large global news organisation. A simple way to get around these constraints while still meeting the functional requirements1 of a recommender system is to generate a similarity space across recently published https://piret.gitlab.io/fatrec2018/program/fatrec2018-fields.pdf https://research.signal-ai.com/newsir19/programme/index.html