Recruiters vs. Artificial Intelligence: How veteran recruiters conceptualise the future of recruitment

By Isha Arora (22-23)

Several reports have indicated that the integration of artificial intelligence in recruitment is on the rise (Robinson, 2019; Ore & Sposato, 2022). The Chartered Institute of Personnel and Development (2022) also found that 60% of UK employers are using AI for recruitment. Therefore, it is a good time to start researching the views of individuals on this phenomenon and learn from veterans on how to prepare for its subsequent consequences. The rising influence of AI poses its biggest threat to job security and has left many recruiters with a fear of job loss (Hmoud & Laszlo, 2019). If you too are a recruiter, fearing that a machine will steal your job and take over the world, then the findings of this study have some comfort to offer you.

12 veteran HR professionals were interviewed for the purpose of this study. On average, the sample of this study possessed 16 years of experience in hiring, therefore, having been well-versed in the field of recruitment, they had some thought-provoking insights to offer. When asked about the future of recruitment, given the rate at which AI is being utilised, they were generally optimistic and secure about their positions. They argued that AI could never replace humans and it would only benefit them to utilise it (Albassam, 2023). Firstly because human beings possess SVG > gears computation line intelligence - Free SVG Image & Icon ...the power of empathy. Years of evolution have helped us develop into the people we are today. Our interpersonal skills help us look beyond what meets the eye and read between the lines (Singh, 2014). This trait is particularly appreciated in recruitment. When finding the right candidate for a role, it was found that matching skills on paper is not enough (Fazel-Zarandi & Fox, 2009). Recruiters are looking for a candidate who will align with the organisational culture, values of the company, and perform well (Chen et al., 2023). Sometimes, this person may come from an unconventional background or doesn’t ‘fit the criteria’, in such cases they rely on their gut and instinct. AI tools have not yet reached this level of sophistication where they can make their own decisions and defy their programming. Furthermore, our interpersonal skills also allow us to build connections and form relationships. These relationships are valued by both candidates and recruiters (Zhang & Yencha, 2022). Allowing AI tools to overtake the recruitment process might make it feel transactional and detached. This can also dissuade job seekers and influence their opinion of the organisation (Wesche & Sonderegger, 2021). At times, candidates have found AI-based hiring strategies to be unfair and restricting (Mujtaba & Mahapatra, 2019). This is because AI-based selection is restricted to the information it is fed. For example, if the original code for the software includes Kings, College of London but a candidate has mentioned KCL on their application, the software will reject their application. There are ways of working around these shortcomings, which is why constant monitoring and revision of AI tools is extremely necessary (Rai & Mishra, 2022).

Other reservations surrounding the use of AI for selection are based on the perceived threat to data security (Gupta & Mishra, 2022). Concerns surrounding the ability of an AI tool to protect the sensitive and private information of candidates as well as recruiters have been raised. While such concerns were more prominent in the past, the current study revealed that individuals are now becoming more comfortable with big data. This may be because data manipulation and tracking have become more common, and people have now become aware of it. People have the option of choosing who they share their data with and should further be transparent with other stakeholders about how they might be using their data (Fernández-Martínez & Fernández, 2020). So far, it has not dissuaded organisations from using AI, however, they are progressing with caution (Gupta et al., 2018).

Although AI is not going to take over the world of recruitment any time soon, it does have certain benefits. The advantages of AI include its ability to analyse large amounts of information quickly and efficiently, screen resumes for eligible criteria, provide chatbot support, and predict performances based on past successes (Horodyski, 2023). While some of these advantages are also prone to errors and inaccuracies, their pros tend to outweigh the cons. One major advantage of using AI tools for routine and repetitive tasks is the amount of time it would save recruiters (Hinkle, 2019; Ibrahim & Hassan, 2019; Tambe et al., 2019). Therefore, ideally, they would no longer have to concern themselves with reviewing hundreds of resumes and would simply focus on the top candidates picked by the AI tool. Moreover, they could utilize their time and pay more attention to other demanding tasks.

As the influence of AI rises, the role of recruiters may transition and diversify. It is likely that future recruiters will be more focused on the strategic aspects of AI, final decision-making, and organisational culture development (De Cremer & Kasparov, 2021). It is also advisable to train and familiarise current and future recruiters with big data and AI analytics as they will become more present (Selwyn, 2022).

In conclusion, the future of recruitment is not bleak. While the integration of AI is a very real and ongoing phenomenon, it shouldn’t be perceived as frightening. The ideal way of tackling the changing atmosphere is by addressing and accepting it. Veteran recruiters suggest approaching it with an open mind and having faith in one’s own value.

Are hiring decisions biased?

By Kelly Ryan (MSc 2018/19)

As a hiring decision-maker you might believe that you would only progress a candidate’s CV based on merit, yet research shows that unconscious biases are likely to impact the objectivity of your selection decisions (Hunt, Prince, Dixon-Fyle, & Yee, 2018). Maybe you see yourself in their shoes; or they went to the same University as you, or you both have the same name? These and many others are reasons that we might subconsciously choose one candidate over another.

All decision-makers have their own biases, because humans understand the world from their own perspectives, be this related to their age, gender, title, socio-economic status or similar. Therefore, some applicants may receive preferential treatment in a recruitment process if the decision-maker can relate to them in some way. Likewise, other applicants may be treated less favorably because the decision-maker cannot relate to them, or in other words cannot accurately interpret their career trajectory. In spite of fact, there has been a lack of research conducted to date exploring the impact of what is known as the similar-to-me effect on CV screening.

The similar-to-me effect suggests that people are most likely to be attracted to those who are like themselves. This effect has been observed across a plethora of domains including perceptions of beauty, financing decisions of venture capitalists and during employment interviews. The similar-to-me effect is underpinned by theories such as the similarity-attraction paradigm. See Byrne (1971) for more detail.

The research project:

For my thesis, I conducted an experiment to assess the impact of the similar-to-me effect on hiring-decision maker’s CV screening. One-hundred and seventy-two participants predominately from Ireland, the United Kingdom, India and the United States took part in the study. All participants had recently engaged/or were currently engaging in some form of recruitment.

What participants did:

Firstly, participants were asked to fill in a CV template – their perception of a desirable candidate (i.e. someone that they would like to hire). All participants completed a CV template which included: desirable candidate’s name (an implicit measure for gender), nationality, highest level of education, university attended, degree-classification and personal interests or hobbies. After completing this CV template, participants were asked to fill in a similar CV template which included their own variables on the next page. In this CV template participants were explicitly asked for their gender rather than their name so as to ensure that all participation remained anonymous.  Participants were then asked to provide rationale for the decisions they made for their desirable candidate’s CV template.

Findings

Several analyses were then conducted. Firstly, I assessed whether the variables contained in the participant’s own CV would predict the variables they selected for their desirable candidate’s CV template. The results revealed that the vast majority of variables contained in the participant’s own CV significantly predicted the selection of these same variables for their desirable candidate’s CV. To take some examples from the data-set…

  • Irish participants were 129 times more likely to select an Irish candidate than participants who identified as different nationalities were to select an Irish candidate.
  • Participants with a doctorate degree were 66 times more likely to select a candidate with a doctorate degree than participants who did not have a doctorate degree.
  • Male participants were five times more likely to select a male candidate than a female participant.
  • Female participants were seven times more likely to select a female candidate than a male participant.

It is important to note however that not all of the variables contained in the participants’ own CVs predicted their selection of these same variables for their desirable candidate’s CV. For example, citing one’s highest level of education as a foundation degree or degree classification as third-class honors did not predict the selection of these same variables for one’s desirable candidate.

Nonetheless, almost half of the participants who engaged in the experiment replicated more than half of their own CV in the CV of their desirable candidate. These findings are important because most of the variables that were explored have little/no evidence linking them to performance. Interestingly however, when asked to explain the underpinning rationale as to why participants chose these particular variables for their desirable candidate’s CV template, even participants who created their desirable candidate’s CV in the image of their own CV oftentimes did not acknowledge doing so. This may point to the often-unconscious nature of biases where decision-makers may not be aware of their tendency to hire in “their own image” which makes this tendency even harder to deal with. Other participants however were explicit about seeking a candidate similar to themselves for rapport purposes and in order to validate this candidate’s credentials.

Implications

Overall, these findings present a number of implications for recruitment practices. Firstly, it would appear that hiring decision-makers subconsciously or otherwise favour candidates with a CV that resembles their own. Thus, recruiters could benefit from unconscious-bias training and awareness building around these issues. These findings also suggest, much like previous literature (Franke, Gruber, Harhoff, & Henkel, 2006) that applicants should not be overtly discouraged by rejection at the CV screening stage, as this decision may have had to less to do with their suitability for the role and more to do with the hiring-decision maker who reviewed their profile. 

One way of counteracting the similar to me effect may be to have all CVs reviewed by at least two hiring decision-makers to control for the impact of individual differences on hiring decisions (Frank & Hackman, 1975). This however, would be resource intensive and perhaps adopting a standardized scoring system for CV screening (Carbonaro & Schwarz, 2018) or blinding CVs by removing any information pertaining to applicants’ biographical characteristics (Rand & Wexley, 1975) would be more viable alternatives to counteracting the similar-to-me effect. 

Can you think of any other ways to limit the impact of such biases in selection processes?

Feel free to comment below!