Concepts, effects & terms

Frequently asked, clearly explained.

The Hawthorne effect is a psychological phenomenon where individuals consciously or subconsciously modify their behaviour and improve their performance simply because they are aware they are being observed.
 

In programme management and delivery, this effect can significantly skew the results of pilot schemes or temporary process changes. When contributors know a new tool or workflow is being closely monitored by leadership or external consultants, their productivity often spikes due to the increased attention rather than the actual efficacy of the new process. To ensure sustainable change, programme managers must design evaluation frameworks that account for this bias, measuring long-term adoption and performance after the initial novelty of observation has faded.

Historical source: Phrase first introduced in 1953 by John R.P. French. First observation of the behaviour by F.J Roethlisberger and William J. Dickson in 1939.

Source: Landsberger, H. A. (1958). Hawthorne Revisited: Management and the Worker, its Critics, and Developments in Human Relations in Industry. Cornell University.

Under the 1:10:100 rule, the financial impact of a defect compounds exponentially the longer it remains in a system. It costs an organisation roughly £1 to prevent an error at the source, £10 to correct it through internal rework, and £100 to remediate a failure once that bad data impacts business operations or the end-user.
 
The 1:10:100 rule illustrates that the financial impact of poor quality compounds exponentially, starting with a baseline cost of just £1 to proactively prevent an error at the point of entry. If this initial safeguard is missed, an organisation must spend approximately £10 on the labour and resources required to identify and correct the defect through internal rework. However, if the error goes entirely unnoticed and impacts the end-user, the cost of failure skyrockets to £100 to account for severe operational disruption, regulatory fines, and damaged customer trust.
 
Source: Labovitz, G., & Chang, Y. S. (1992). Making Quality Work: A Leadership Guide for the Results-Driven Manager. HarperBusiness.
The Ringelmann Effect is a psychological and sociological phenomenon describing the tendency for individual productivity to decrease as the size of a group increases. In simple terms, the larger the team, the less effort each individual member is likely to contribute to a collective task.
 
The effect is named after Maximilien Ringelmann, a French agricultural engineer who identified the phenomenon in 1913. In his famous rope-pulling (tug-of-war) experiments, Ringelmann measured the force exerted by individuals pulling alone versus pulling in groups. He discovered that while the total force generated by the group was higher than that of a single person, the average force per person dropped significantly as more people were added to the rope.
 

Historical source: Ringelmann, M. (1913). “Recherches sur les moteurs animés: Travail de l’homme” [Research on animate sources of power: The work of man]. Annales de l’Institut National Agronomique, 12, 1–40.

Source: Kravitz, D. A., & Martin, B. (1986). “Ringelmann rediscovered: The original article.” Journal of Personality and Social Psychology, 50(5), 936–941.

Work expands so as to fill the time available for its completion.
 
The law was first articulated by Cyril Northcote Parkinson, a British naval historian and author, in a humorous 1955 essay published in The Economist. Parkinson originally used the concept to critique the relentless growth of bureaucratic institutions—specifically noting how the British Colonial Office staff increased year after year even as the British Empire’s global footprint declined. He later expanded these observations into the 1958 book, Parkinson’s Law: The Pursuit of Progress.
 

Source: Parkinson, C.N.; Osborn, R.C. Parkinson’s Law, and Other Studies in Administration; Houghton Mifflin: Boston, MA, USA, 1957.

The boiling frog effect is a psychological metaphor describing the human tendency to fail to react to gradual, creeping threats until it is too late, whereas sudden, dramatic changes would trigger an immediate defensive response.
 
This effect perfectly illustrates the dangers of unchecked scope creep, slow budget erosion, or gradually declining team morale. Because these negative changes occur incrementally, programme contributors and stakeholders often fail to recognise the mounting crisis until the project is on the brink of catastrophic failure. To counter this complacency, effective programme managers must implement rigorous, data-driven health checks and baseline tracking, ensuring that small, subtle deviations are treated with the same level of urgency as major disruptions.
 

Source: Senge, P. M. (1990). The Fifth Discipline: The Art and Practice of the Learning Organization. Doubleday/Currency.

Anchoring is a cognitive bias where individuals rely too heavily on the initial piece of information they receive—known as the “anchor”—when making subsequent judgements, estimations, or decisions.
 
This bias frequently manifests during the initial scoping phases, where early, rough estimates for a project’s budget or timeline inadvertently become the fixed baseline for all future planning. Even when concrete data later emerges proving the original estimate was wildly inaccurate, stakeholders typically struggle to adjust their expectations far enough away from that initial anchor. 
 

Source: Tversky, A., & Kahneman, D. (1974). Judgment under Uncertainty: Heuristics and Biases. Science, 185(4157), 1124–1131.

Reference class forecasting is a method of predicting the future by looking at similar past situations and using their actual outcomes to forecast the results of a planned action.
 
The theories behind this forecasting technique were developed by psychologists Daniel Kahneman and Amos Tversky to counteract the planning fallacy, which is the persistent human tendency to underestimate time, costs, and risks due to an overly optimistic “inside view”. Rather than relying on case-specific details, reference class forecasting mandates the use of an “outside view” grounded in empirical base rates and historical distributional information. By systematically identifying a relevant reference class of analogous projects and comparing the current initiative against that statistical distribution, planners can effectively remove optimism bias and strategic misrepresentation from their estimates.
 
Quantitative Reference Class Forecasting: This is a statistical technique that uses actual, measurable, and verifiable past data to predict future trends. Reference class forecasting is inherently a quantitative approach, as it builds empirical distributions from hard historical data to reduce subjective bias.
 
Qualitative Reference Class Forecasting: Conversely, qualitative forecasting techniques rely heavily on expert opinions, intuition, and judgemental methods rather than verifiable statistical data. Examples of qualitative methods include the Delphi method, market research, and scenario building. Reference class forecasting directly counters the flaws of qualitative “inside view” judgements by anchoring estimates to objective outside statistics.
 

Source: Lovallo, D., & Kahneman, D. (2003). “Delusions of success. How optimism undermines executives’ decisions”. Harvard Business Review, 81(7): 56–63.

The fundamental attribution error is a cognitive bias where we tend to overemphasise an individual’s personality or character traits and underemphasise situational factors when explaining their behaviour.
 
In the context of programme consultancy and project delivery, this error frequently surfaces when a project milestone is missed or a specific deliverable fails. Programme managers might instinctively blame a team member’s lack of effort or competence (internal factors) rather than objectively evaluating external bottlenecks, such as unrealistic deadlines, shifting stakeholder requirements, or severe resource constraints (situational factors). By actively recognising this bias, consultants and project leaders can replace a culture of personal blame with rigorous root-cause analysis, ultimately designing more resilient project frameworks and fostering higher-performing teams.
 

Source: Ross, L. (1977). The intuitive psychologist and his shortcomings: Distortions in the attribution process. Advances in Experimental Social Psychology, 10, 173–220.

Confirmation bias is a cognitive phenomenon wherein individuals actively seek out, interpret, and favour information that validates their pre-existing beliefs while ignoring or undervaluing contradictory evidence.
 
In programme management and consultancy, this bias can severely derail strategic planning and risk assessment if left unchecked. For instance, a programme sponsor might heavily weigh positive preliminary data that supports a preferred methodology, while dismissing critical stakeholder feedback or budgetary red flags as mere outliers. 
 

Source: Wason, P. C. (1960). On the failure to eliminate hypotheses in a conceptual task. Quarterly Journal of Experimental Psychology, 12(3), 129–140.

Loss aversion is a cognitive bias demonstrating that the psychological pain of losing something is significantly more intense than the pleasure of gaining something of equal value.
 
In programme management, this bias frequently causes stakeholders to irrationally cling to failing projects simply because they fear losing their initial sunk costs, even when halting the project is the most strategic choice. 
 
The concept of loss aversion—and the famous maxim that “losses loom larger than gains”—was introduced by Amos Tversky and Daniel Kahneman as a core component of their Nobel Prize-winning work on Prospect Theory in 1979.
 

Source: Kahneman, D., & Tversky, A. (1979). Prospect theory: An analysis of decision under risk. Econometrica, 47(2), 263–291.

The sunk cost fallacy is a cognitive bias that compels individuals to continue investing time, money, or resources into a failing endeavour simply because they have already invested heavily in it.
 
In the context of programmes, this fallacy is a frequent culprit behind bloated budgets and delayed project terminations. Stakeholders often resist abandoning an underperforming initiative, wrongly factoring irretrievable past expenses—the “sunk costs”—into their future decision-making. 
 

Source: Arkes, H. R., & Blumer, C. (1985). The psychology of sunk cost. Organizational Behavior and Human Decision Processes, 35(1), 124–140.

The planning fallacy is a cognitive bias in which individuals or teams systematically underestimate the time, costs, and risks required to complete a future task, despite knowing that similar tasks have overrun in the past.
 
In programme and project management, this fallacy can be a driver of  schedule delays and budget overspends. It occurs because project sponsors and planners naturally adopt an overly optimistic “inside view”, focusing on an idealised, best-case scenario for their specific project rather than consulting the historical data of similar past initiatives. 
 

Source: Kahneman, D., & Tversky, A. (1979). Intuitive prediction: biases and corrective procedures. TIMS Studies in Management Sciences, 12, 313–327.

The framing effect is a cognitive bias in which people’s decisions and judgements are significantly influenced by how information is presented to them, rather than just the objective facts themselves.
 
The way a project’s risks and benefits are communicated can drastically alter stakeholder buy-in and risk appetite. For example, presenting a project as having a “90% chance of delivering on time” will garner much stronger executive support than framing the exact same metric as a “10% chance of missing the deadline.” 
 

Source: Tversky, A., & Kahneman, D. (1981). The framing of decisions and the psychology of choice. Science, 211(4481), 453–458.