Boost Adoption of Change and Innovation With Dynamic Learning Loops
John-Paul Crofton-Biwer
Gain Fresh Insight, Take The Initiative & Create Innovation: Empowering Health & Wellbeing Organisations to Survive and Thrive In Uncertain Times: Take the Opportunity to Create Change For Better
Adapting to change and innovation is crucial for business success, but traditional linear models are outdated. Assuming that people make one-off hyper logical decisions to change. Modern psychology shows that learning to change is an ongoing process of feedback and adaptation, through dynamic learning loops.
The classic model of diffusion of innovation theory has behind it outdated views of psychology and learning from the 1960;s. By updating the models with modern dynamic learning loops, like Active Inference and the OODA Loop, provide a realistic and flexible approach to adopting change. Allowing us to overcome resistance to traditional change models and boost adoption of our change and innovation.
Introduction to the Psychology of Diffusion of Innovation
Why the Psychology of Change Behind the Diffusion of Innovation Matters
In 1962 Elliot Roger’s described the psychology of change behind the diffusion of innovation theory as a linear psychology learning process called the Innovation-Decision Process.
However, modern psychology emphasises how people actually learn through time through learning loops. Active Inference as well as the OODA loops.
If we can better understand and enhance the learning process we can improve the flow of change through a social system.?
What is the Diffusion of Innovation Theory
The Diffusion of Innovation Theory is all about the speed of new ideas and technologies spread through a social system such as a community or organisation.?
People adopt innovations and change at different rates: Some people are more eager to try new things than others. The theory identifies five adopter categories: innovators, early adopters, early majority, late majority, and laggards.
The Psychology of Learning is a Key Aspect of Diffusion of Innovation Theory:?
Learning is crucial in the diffusion of innovation theory for a few key reasons:
The Psychology of the Innovation-Decision Process
Elliot Rogers created the Innovation-Decision process in the 1960s to explain the psychology learning process behind the diffusion of innovation theory. This process is a linear progression through five stages through which an individual or other decision-making group passes:
Our understanding of psychology has moved on significantly from the 1960’s. The innovation decision process is now outdated.? It assumes that people are entirely rational when making decisions. It is a linear process and strangely ignores the identity and thinking of the decision maker upon which everything else in Roger’s theory depends. The difference between the innovators and late majority is rooted in their identity but it, does not appear in the process.
Ashby’s Law and Adapting Innovation
Ashby’s Law of Requisite Variety tells us how people need to learn how to make the innovation fit into their ways of working and doing things for it to be sustained. Whilst the Innovation-Decision Process treats change as a one off decision rather, than an adaptation process. Meaning changes may often not be sustained.
Instead, an essential process of learning and adaption is required to help us successfully ensure the innovation fits. The innovation needs to successfully adapt to the work we do, the customers we work with, as well as fit it into our own work. So learning to apply an innovation is not a one off process, but a learning loop of developing understanding what works and what doesn’t.
Updating the Diffusion of Innovation Learning Models:
What is Active Inference?
Active Inference is a theoretical framework in cognitive neuroscience and psychology that explains how living organisms, including humans, understand and interact with their environment. It combines principles from Bayesian inference, control theory, and the free energy principle.?
Key Concepts of Active Inference:
What is the OODA Loop?
Key Concepts of the OODA Loop:
Observe:
Orient:
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Decide:
Act:
Feedback:
Key Similarities and Differences Between Active Inference and OODA Loops?
Both these processes have internal mental models, which are tested and updated through Bayesian logic and hypothesis testing at their heart. But there is a crucial difference which is why i mention them both:
Both frameworks have many core similarities and offer valuable insights into human behavior, but they address different aspects. The OODA loop provides a strategic framework for making decisions in complex situations, while active inference helps us understand the individual’s internal processes underlying individual perception and action.
Replacing the Innovation Decision Making Process With New Psychologies of Change.
Active inference and John Boyd’s OODA loop are a more accurate and up to date theory of learning and decision-making. Both active inference and the OODA Loop provide a more realistic and flexible representation of how decisions are made in complex, dynamic environments compared to the linear unjustifiably rational and somewhat rigid structure of Rogers’ model.
Emphasis on Existing knowledge.
These models focus on how people learn and make decisions and re-orientate themselves based on their existing knowledge and beliefs about the world.
Contextual and Situational Sensitivity:?
Both frameworks better integrate contextual factors, recognising the importance of situational awareness and environmental influences in decision-making.
Innovations can be evaluated and adopted with a strong consideration of the specific context and changing circumstances, enhancing the relevance and success of the innovation in diverse environments. The bigger the gap between the innovation and people’s experience the longer it would take people to adopt an innovation.
Continuous Feedback and Adaptation:?
These models emphasise continuous feedback and adaptation, allowing for better handling of the uncertainties and rapid changes that often accompany innovation processes. Meaning that people can successfully implement changes in a sustainable way (complying with Ashby’s requisite variety)
Time to Change
Active Inference and the OODA much better explains why people take time to adopt change. Why they might resist change initially or take a while to grasp. They have to update their thinking to re-orientate their thinking by continuously learning about the world.?
More Dynamic Learning Process:
?By incorporating active inference and the OODA Loop, the theory could better capture the dynamic nature of learning about innovations. Individuals wouldn’t just passively receive information but actively seek it out, shaping their understanding through ongoing experience.?
The knowledge that people need about a change alters over time. From a high level summary of the change, to a process they can follow, and finally, to guidance about how to integrate it with their every day experience. The what to do when type of guidance.
Uncertainty Reduction:
?One of the key factors separating the categories of adopter is the amount of uncertainty they have and how much they will tolerate. Active Inference and the OODA loop explain why there needs to be a greater emphasis on reducing uncertainty and prediction errors, which could lead to faster and more adaptive decision-making processes.
Learning Through Testing Experience:?
The implementation phase can be enhanced to be more flexible, allowing individuals to iteratively test and refine the use of the innovation, rather than a one-time, static adoption decision.
10 Recommendations? to Improve Diffusion of Innovation From Adopting Dynamic Learning Models
This blog is an extract from a blog on my website. Please read the recommendations from visiting the blog here.
Conclusion
Adopting dynamic learning loops like Active Inference and the OODA Loop modernizes our approach to change and innovation. Traditional linear models are outdated and fail to capture the continuous nature of learning. By using these updated frameworks, we can better understand and facilitate adaptation, address resistance effectively, and ensure innovations are contextually relevant and sustainable. This shift will significantly enhance the possibility of change initiatives.