Criteria for producing the Best HR Evidence.

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A recurring theme in this series, and a rather irritating obstacle to the further development of the evidence-based management movement, is the limitations of language – especially the one word that is meant to underpin everything – evidence.  What should be the movement’s greatest strength could prove to be its biggest impediment, unless we clarify it once and for all.

If that task were not difficult enough, we have the added complexity here of concentrating on evidence-based human resource management, which has its own data measurement problems.  Human data is different to most other types of organisational and performance data and just calling it ‘human analytics’ doesn’t suddenly transform it into evidence.  In order to break down this dual barrier there needs to be more precise use of language and clear criteria as to what constitutes valid evidence.

We should not lose sight of what we are trying to do here though – we define EBM as ‘making managerial decisions based on the best evidence available’ accepting that we do not live in a perfect world.  The best we can do therefore is aim for the highest probability that we are using the best evidence available.  Below is one set of pragmatic, working definitions (I don’t want any of my academic colleagues to get me bogged down in semantics) and you can add this to your favourite management checklists if it works for you.

1. Data, information and knowledge

First, let us make a distinction between 3 commonly used terms whilst adding a few human insights -

Data – straightforward facts, statistics and numbers that do not provide a basis for decision making – e.g. the population of the UK is 60 million, the earth is 93 million miles from the sun.

Human insights – some people think they can make decisions based on such raw data saying the UK is ‘overcrowded’ or ‘we have too many immigrants’.  Beware those who try to promote data as knowledge. Also, human error might have got the data wrong.

Information – a human being has processed all the relevant data in their head and started to draw some conclusions e.g. the population growth trend in the UK relative to available water resources, how long it would take to get to the sun – but it is still unusable in this format.

Human insights – Information only has meaning when processed by human beings and it is always unique to the individual. Once human beings are involved you can forget trying to regard this as a science.  An engagement survey score of 52% can be seen as both a success and a failure, depending on your perspective, and will not change the attitude or behaviour of the manager who does not perceive it as having value.

Knowledge – here we will use the simplest, purest definition – you actually know something to be true.  We know ‘1 + 1 equals 2’ because no one disputes the basis of the calculation, it is regarded as proof or perfect knowledge.  Better still, we can see, touch and experience it for ourselves.

Human insights – you are rarely, if ever, going to achieve a state of pure knowledge in EB-HR and genuine evidence-based managers do not pretend otherwise.  Beware anyone working in HR holding out the promise of proof.  Managers should openly admit their knowledge is imperfect and always accept they have to continuously learn (yeh, right), rather than blame, because imperfect knowledge inevitably produces imperfect decisions.

2. Defining Evidence

These definitions, on their own, might not appear to be particularly helpful though until we use them to define what evidence means to an evidence-based manager -

Evidence = Actionable Knowledge

This is really the only pragmatic definition.  Decisions have to be made, regardless of how well they are made.  At any point in time we just try to ensure we get as much knowledge as we can in order to act.  So, in the south east corner of the UK, an action plan is required to continue to provide water according to the population growth projections and what is ‘known’ about climate and weather pattern predictions.  Over time those decisions could turn out to be unsuccessful or appear to have been ‘wrong’ but taking no action at all is not an option.

What we need to do now is look at what data we might come across in the fields of HR, human capital and learning and how we can develop our own heightened awareness of what constitutes the best knowledge and evidence available and the skills to use them effectively.

3. Criteria for ‘best evidence’

Here is a simple list of questions to help you make intelligent choices about the quality of evidence presented to you and how you are prepared to use it.

Activity – avoid activity data like the plague. Probably the best example is ‘number of training days’ or ‘annual training hours per employee’.  PwC/Saratoga (see page 6) still insist that knowing the ratio of HR people to FTE’s is meaningful data – it isn’t. This type of data just tells you somebody is sitting somewhere, not what they are producing.  See also INPUT and CORRELATION below.

Causation – both Gallup’s Q12 “Proven Approach” and Watson Wyatt’s* (now Towers Watson) “Human Capital Index” refer to their statistics as PROOF that their methods work. No credible EB-HR Manager would dare to suggest this without establishing CAUSATION from the beginning: statistical regression mistakenly tries to do this after the event.  Regression is an aircrash investigation while EB-HR is aircraft design.  EB-HR managers have a much simpler, more practical and convincing way to deal with CAUSATION – they go and ask the people using Q12 or the HCI to show their original, causative hypothesis (e.g. which particular employees in this department will sell more if they become more engaged).  If they don’t operate in this way they failed to use the best evidence available.

Correlations – In the absence of CAUSATION the purveyors of very popular, off-the-shelf, HR ‘solutions’ substitute CORRELATIONS, which is the lazy statistician’s way of making up data to suit themselves in order to make a fast buck.  For example, suggesting there is data that shows the more a company spends on training the better it will perform.  Even if these spurious correlations are made to look statistically valid the dimmest, first grade student of statistics will remember they were taught not to trust CORRELATIONS**.  Instead, the evidence-based learning manager will make sure training is designed strictly in accordance with the principle of causation by only investing in training that is designed to deal with specific business issues.

Input – generally cost, time or manhours expended. It cannot be turned into useful INFORMATION until it is set against a corresponding OUTPUT (e.g. how much did all this produce in terms of cars, bank loans etc.)  HR departments and training managers often resort to measuring input data (happy sheets) simply because they don’t know how to measure outputs.  The worst ones think measuring inputs tells their bosses something about the way they work – yes it does, but not what they intended it to.

Output – The only thing that matters and produces value. Goods or services actually produced and sold, their costs reduced or quality improved and any extra revenue earned.  Any HR or training not focused on these outcomes is not only non-evidence-based but a waste of resources.

Performance – a rule-of-thumb definition of a performance measure is that you should know which way the measure should move, which is not as easy as it sounds.  For example, should your staff turnover or attrition rate go up or down?  Should your ratio of HR to FTE’s go up or down – well surely it depends on what they are doing? The key is for everyone involved to understand and agree what ‘good’ looks like.  Stupid measures or ratios encourage stupid behaviour: reducing your HR to FTE ratio could seriously damage the business if you lose people in HR who were adding a lot of value.

Qualitative – a confusing term – the best definition is to view it as the opposite of OBJECTIVE.  Some people use the word QUALITATIVE to mean SUBJECTIVE data (i.e. how much do you respect your boss on a scale of 1 to 5?) while others regard it as a measure of intangibles (i.e. engagement, empowerment etc.).  It only becomes tangible EVIDENCE (actionable knowledge) though when someone has a stab at making it OBJECTIVE by putting a potential value on it.

Quantitative – the meaning should be very obvious – it is simply data that has a number attached (the population is 60 million) – regardless of whether the number has any intrinsic validity, purpose or application.  It is often viewed, mistakenly, as the opposite of QUALITATIVE on the basis that any number or measure is preferable to an indistinct or subjective statement.  But some things are extremely important without any numbers attached – how about the question ‘do we have a financial regulation SYSTEM in place?’ It’s not quantitative, it’s not qualitative (it can be clearly demonstrated) but it’s probably the most valuable element in evidence-based human resource management.

For personal development linked to this topic visit the Consummate Professional Series Module 2 and Module 4

*Compare Towers Watson’s ‘proof’ with a contradictory statement from their own European Survey Report in 2000 – “(HCI) Demonstrates a very strong correlation between effective people practices and shareholder value…but on its own does not prove a causal link.”

**“It is important to state 3 caveats about regression models. First, correlation does not mean “cause”. The fact that one variable is correlated to another does not necessarily mean that one variable causes another…. Generally, you should conclude that one thing causes another only if you have some other good reason besides the correlation itself to suspect a cause-and-effect relationship. Second, keep in mind that these are simple linear regressions…. Finally, in multiple regression models, you should be careful of independent variables being correlated to each other…. regression modelling …is a useful tool, but proceed with caution.”

From How to measure Anything – Finding the value of ‘intangibles’ in business” (2nd Ed.) Douglas W. Hubbard, Wiley, 2010

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Evidence-Based HR managers know better than to rely on correlations

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Finding the causes of complex problems. is the single, most skilful part of the evidence-based manager’s job.  Asking ‘Why?’ is also a prime motivator of human behaviour.  Many of man’s greatest endeavours are driven by this most primal need – why are we here, what has caused me to feel this way?  If we fail to identify the right causes, using evidence-based analysis, we fail to find the right solutions.   When organisational  demands for activity – ‘do anything but do something!’ – take precedence over intelligent thought and proper analysis then we are bound to see short cuts being taken, however erroneous.

Academia is not put under the same immediate, operational duress so we expect academics to go to the trouble of providing better evidence with more scientifically rigorous methods.  The LSE (London School of Economics and Political Science) even takes its Latin motto ‘Rerum cognoscere causas’ – ‘to understand the causes of things’ – from Virgil’s dictum “happy is he who can discover the causes of things”.

Indeed, great happiness will stem from knowing the causes of what ails us and one LSE academic in particular has followed this line of enquiry – Professor Richard Layard – who is well known for his work on happiness and wellbeing.  These are both matters of great interest to those who have devoted their entire careers to the search for the causes of employee happiness and fulfilment at work. So has Professor Layard followed the LSE’s creed in this endeavour?

Anyone dealing with people issues at work will be reminded, every day, that HR management is not a ‘science’ in any meaningful sense.  It cannot be tested in laboratory conditions and neither does it respond well to conventional, statistical analysis. I am referring of course to correlations and regression analysis.  This is an arcane, statistical technique used by social scientists to pretend that they have identified the causes of complex human problems when, in fact, they have just resorted to stacking one correlation on top of another – which is not the same thing at all.  If this is all a bit too academic for you let me make my point much simpler.

Every HR department I know wants to believe that employee engagement causes organisational performance.  This notion appears obvious and very valid until you consider that the buyer of your office furniture could equally make the same claim about their role.  There is probably as much of a correlation between office furniture costs and profit as there is between engagement and profit but no one in their right mind (apart from the procurement department) would suggest that this denotes a significant, causal relationship with performance.  Evidence-based managers do not rely on correlations that can so easily make them look stupid.

This logic does not stop highly respected academics passing off correlations as causation though.  Take Professor Layard’s own paper  – ‘Good Jobs and Bad Jobs’ where he tells us in “Annex A: Evidence on Happiness” that

Happiness research has confirmed that happiness is a single dimension of all experience, measurable by psychometric or neurological measures (both highly correlated).”

They may well be highly correlated but that will never reveal what causes what.  Or has the LSE dropped its motto now and replaced it with a much lower standard of evidence – “to find correlations between things”.  Would they be just as happy to pass off a bottle of cheap Cava as Dom Perignon at receptions for their generous alumni?  Probably, if they thought  no one would notice.

Surreptitiously and knowingly substituting correlation for causation is a serious crime and extremely dangerous.  There is a correlation between skin colour and prison population in the US and no doubt this is irresponsibly seized upon, by those with their own agendas, to infer that the colour of someone’s skin can actually cause crime.

This is the prime reason why evidence-based HR is now so high on the organisational agenda – because the development of HR management thinking over the last 30 years has been predicated on spurious correlations (e.g. happy employees are productive employees, diversity targets improve diversity) rather than causation.

There can be no better example of this than the “Best companies to work for” (*but see Update below) schemes. In the UK the image shown above was printed in The Sunday Times supplement announcing the ‘winners’ of this award in 2005.  The graphs purport to show a causal connection between being a ‘best company’ and superior performance, when compared to the FTSE 100.  Except that the small print had to admit that -

in the last year … the FTSE 100 moved ahead with a 14.3% return against an 8.3% return for Best Companies”.

So not only had they failed to support their causal claim with the evidence on show, the correlation they used had been broken and they continued to refer to those with the worst performance as the ‘Best companies’.  One could infer from the ‘Best Companies’ own data that perhaps it should be called the ‘Most Stupid Companies’ awards?

This is why lies and ‘damn lies’ often masquerade as meaningful statistics. Coming up with a solution first and then concocting the ‘evidence’ (sic) later to justify it will never be able to compete with the professionalism of the evidence-based.  There will only ever be one winner in this competition.

For personal development linked to this topic visit the Consummate Professional Series Module 2 and Module 4

*Update 17th April 2012

This similar chart was taken from the i4cp site. Even if these graphs are true it is highly unlikely that they have anything to do with being (or not being) an i4cp member. Trying to mislead innumerate HR people is a sure sign of a non-evidence-based approach – interestingly Professor John Boudreau is on their Board of Directors.

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Where can I get my next EI fix?

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A week ago an email landed in my spam filter from a company called TalentSmart (based in San Diego, USA) advertising “Working with an emotional intelligence mentor”.  What a very seductive concept emotional intelligence has always been since it hit the headlines over a decade ago. It felt like emotionally intelligent executives were suddenly being described as ‘attractive and intelligent’ or ‘good in bed and a great conversationalist’ – the perfect combination. So who wouldn’t want an emotional intelligence mentor?

Normally this sort of unsolicited email would not get past my own bullshit detector but being evidence-based does not automatically make me resistant to new ideas, mean-spirited, mechanistic, obsessed with measurement or devoid of human sensibilities. So I read further and found that TalentSmart offer (apparently): -

“Everything you need to develop an emotionally intelligent workforce. From books, to selection tools, to the leading emotional intelligence assessment.”

If that is “everything” I am not sure where it leaves one’s existing personality, parental influence, genes and a host of other factors that probably have a part to play in the way someone behaves in the workplace – but let us not worry ourselves unduly about such minor details.  Also, let us not open up the eternal debate again about nature versus nurture, or whether emotional intelligence is a skill, competence, attribute or whatever.  Instead let’s just get to the logic and evidence on offer.  Here is one snippet from their “Business Case for Emotional Intelligence (EQ) 2009 Update” – which, incidentally, invokes a quote from Jack Welch in support of emotional intelligence – yes, that Jack Welch – the one who developed that emotionally intelligent system called forced ranking.

“Fortune Brands saw 100% of leaders who developed their EQ skills through classroom training, coaching, and online learning exceed the performance targets set for them in the company’s metric-based performance management system. Just 28% of leaders who failed to develop their EQ skills exceeded their performance targets. (Bradberry*, 2005).”

As with all statistics, we need to check what we are reading first. There are only 4 possible outcomes from this exercise. Some of the participants could have: -

a. developed their EQ skills and exceeded targets (i.e. the 100% referred to)

b. developed their EQ skills and not exceeded their targets (must be 0% if a. is true)

c. failed to develop their EQ skills and exceeded targets (the 28% referred to)

d. failed to develop their EQ skills and did not exceed targets (no mention of this group)

The only data we are actually given though is percentages, not actual numbers of participants. So, let us assume that for every 100 ‘leaders’ who participated, the actual numbers in each category were as follows (with the relative percentages in parentheses) -

a. 1 (1% of the total but 100% of those who developed skills and exceeded targets)

b. 0 (0% of the total)

c. 28 (28% of the total but also approximately 28% of the group who did not develop EQ skills)

d. 71 (71% of the total)

On this basis TalentSmart’s EQ approach would have a success rate of just 1% and yet would still be able to justify their claims on a purely statistical basis.  We don’t know if this was the split of course but you could play around with any other combination that achieves the same relative percentages (e.g. 20/0/23/57 – but b. will always be zero).

Regardless of the questionable statistics though, what the evidence-based manager would really take issue with is the methodology itself – the focus here is on the process of ‘developing EQ skills’ and not on any evidence of the likely causes of under or over performance. The ‘solution serum’ has been pre-prepared and injected into everyone before any evidence is offered. Of course, this approach is supported by Daniel Goleman’s** article in Harvard Business Review (March 2000) entitled ‘Leadership that gets results’ because HBR informs us that

“drawing on research of more than 3,000 executives, Goleman explores which precise leadership behaviors yield positive results. He outlines six distinct leadership styles, each one springing from different components of emotional intelligence.”

The evidence-based manager does not have to challenge this assertion so much as ask the simple question – is this just correlation masquerading as causation again? Where is the evidence that attempting to develop emotional intelligence actually gets results (and doesn’t have any side effects)?  Those who are offering EI or EQ have to do better than this.

*Bradberry is a partner at TalentSmart

** Daniel Goleman has been appointed as an adviser to the UK’s NHS Leadership Council

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