News Daily


Men's Weekly

Australia

  • Written by The Conversation
How complex is your life? Computer scientists found a way to measure it

Nobel laureate economist Richard Thaler famously quipped:

People aren’t dumb, the world is hard.

Indeed, we routinely encounter problems in our everyday lives that feel complex – from choosing the best electricity plan, to deciding how to effectively spend our money.

Australian pay hundreds of millions of dollars each year to comparison websites and consumer-focused groups such as CHOICE to help them make decisions about products and services.

But how can we objectively measure how “complex” our decisions really are? Our recently published research offers one potential way to do this, by drawing on concepts from computer and systems science.

Why bother measuring complexity?

There are several factors when it comes to measuring complexity in any scenario. For instance, there may be a number of options to choose from and each option may have several different features to consider.

Suppose you want to buy jam. This will be easy if there are only two flavours available, but difficult if there are dozens. Yet choosing an electricity plan would be much harder even with just two options.

In other words, you can’t isolate one particular factor when trying to determine the complexity of something. You have to consider the problem as a whole – and this requires a lot more work.

The ability to accurately measure complexity could have a wide range of practical applications, including informing the design of:

  • regulation on how complex products should be

  • easy to navigate digital systems including websites, apps and smart device programs

  • easy to understand products. These may be financial products (superannuation and insurance plans, credit card schemes), physical products (devices) or virtual products (software)

  • artificial intelligence (AI) that offers advice when problems are too complex for humans. For example, a scheduler AI may let you book meetings yourself, before jumping in to suggest optimal meeting times and locations based on your history.

How we study human decision-making

Computer science can help us solve problems: information goes in and one (or more) solutions come out. However, the amount of computation needed for this can vary a lot, depending on the problem.

We and our colleagues used a precise mathematical framework, called “computational complexity theory”, that quantifies how much computation is needed to solve any given problem.

The idea behind it is to measure the amount of computational resources (such as time or memory) a computer algorithm needs when problem-solving. The more time or memory it needs, the more complex the problem is.

Once this is established, problems can be categorised into “classes” based on their complexity.

In our work, we were particularly interested in how complexity (as determined through computational complexity theory) corresponds with the actual amount of effort people must put into solving certain problems.

We wanted to know whether computational complexity theory could accurately predict how much humans would struggle in a certain situation and how accurate their problem-solving would be.

Testing our hypothesis

We focused on three types of experimental tasks, for which you can see examples below. All of these task types sit within a broader class of complex problems called “NP-complete” problems.

Here are example cases for the three experimental tasks, each of which required a yes or no answer from our research participants. Juan Pablo Franco Ulloa/Karlo Doroc/Nitin Yadav

Each task type requires a different ability to perform well in. Specifically:

  • “satisfiability” tasks require abstract logic
  • “travelling salesperson” tasks require spatial navigation skills and
  • “knapsack” tasks require arithmetic.

All three are ubiquitous in real life and reflect day-to-day problems such as software testing (satisfiability), planning a road trip (travelling salesperson), and shopping or investing (knapsack).

We recruited 67 people, split them into three groups, and made each group solve between 64-72 different variations of one of the three types of task.

We also used computational complexity theory and computer algorithms to figure out which tasks were “high complexity” for a computer, before comparing these with the results from our human problem solvers.

We expected – assuming computational complexity theory is congruent with how real people solve problems – that our participants would spend more time on tasks identified as being “high complexity” for a computer. We also expected lower problem-solving accuracy on these tasks.

In both cases that’s exactly what we found. On average, people did twice as well on the lowest complexity cases compared to the highest complexity cases.

Computer science can measure ‘complexity’ for humans

Our results suggest effort alone is not enough to ensure someone does well on a complex problem. Some problems will be hard no matter what – and these are the spaces in which advanced decision aids and AI can shine.

In practical terms, being able to gauge the complexity of a wide range of tasks could help provide people with the necessary support they need to tackle these tasks day-to-day.

The most important result was that our computational complexity theory-based predictions about which tasks humans would find harder were consistent across all three types of task – despite each requiring different abilities to solve.

Moreover, if we can predict how hard humans will find tasks within these three problems, then it should be able to do the same for the more than 3,000 other NP-complete problems.

These include similarly common hurdles such as task scheduling, shopping, circuit design and gameplay.

Now, to put research into practice

While our results are exciting, there’s still a long way to go. For one, our research used quick and abstract tasks in a controlled laboratory environment. These tasks can model real-life choices, but they’re not representative of actual real-life choices.

The next step is to apply similar techniques to tasks that more closely resemble real-life choices. For instance, can we use computational complexity theory to measure the complexity of choosing between different credit cards?

Progress in this space could help us unlock new ways to aid people in making better choices, every day, across various facets of life.

Read more: We've crunched the numbers in McDonald's Monopoly challenge to find your chance of winning

Read more https://theconversation.com/how-complex-is-your-life-computer-scientists-found-a-way-to-measure-it-187997

Why Cloud Services Are Now Essential for Business Growth and Security

In today’s fast-moving digital environment, understanding how cloud services support long-term stability has become a priority for businesses across Australia. As expectations shift and workplaces adopt more flexible models, organisations are turning to cloud services to keep systems running smoothly... Read more

Steel Cutting Services: Precision That Shapes Modern Construction

In today’s construction, manufacturing, and fabrication environments, steel cutting services play a vital role in turning raw steel into practical, usable components. From large-scale infrastructure projects to bespoke architectural features, the accuracy and quality of steel cutting directly influence the... Read more

Lighting Stores Perth: Expert Guidance for Inspired and Functional Spaces

Choosing the right lighting can completely change how a space feels, functions, and flows. Trusted lighting stores Perth play a crucial role in helping homeowners and businesses make confident lighting decisions that go beyond appearance alone. Lighting influences mood, productivity, comfort... Read more

Why Retail Cleaning Plays a Key Role in Customer Experience

In retail environments, cleanliness directly shapes how customers perceive a brand. Retail cleaning is not just about appearance but about creating a space where shoppers feel comfortable, confident, and welcome. From small boutiques to large shopping centres, a clean retail environment... Read more

Cleaner Floors, Healthier Homes: Lefant M3L Arrives as Australians Prioritise Pet-Friendly Hygiene

As pet ownership continues to rise, Australians are placing greater emphasis on maintaining a hygienic indoor environment for both family members and their animals. Issues such as dander, loose fur, and tracked-in dirt require consistent cleaning to support better home... Read more

How Home Removalists Save Time, Money, and Energy During Your Move

Moving to a new home is an exciting chapter in life, but the process of getting there can be overwhelming. From packing and organizing to transportation and unpacking, relocation involves a long list of tasks that can consume both your... Read more