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University Massey University (MU)
Subject 178.230 The Economics of Human Behaviour

178230 Individual Project Essay 2026

  • Essay length: 1500 words (maximum)

Instructions:

Consider nudging in behavioural economics and what it is designed to do. You are tasked with reflecting upon nudges and considering how they can be used to reduce traffic congestion and pollution in New Zealand. It could be achieved by various means, e.g., promoting walking and biking, promoting public transport usage, and discouraging driving in peak hours (or other means you can think of).

You are tasked with coming up with potential solution(s) to this issue. You can come up with your original ideas of nudges, or borrow from other countries’ experiences, or discuss both. If you borrow from other countries, you should explain how their nudges should be adapted to the New Zealand environment. You need to clearly describe the choice architecture of your solution(s) and show that they alter behaviour in a predictable way without restricting choice or incentives. You are also encouraged to consider some of the insights into biases and heuristics that you have learned in the course to explain how your solution will work.

It is up to you as to how you structure your essay, however you should bear in mind the marking rubric, which is in the assignment dropbox below.

If you use references, please be sure to use APA referencing style. Please also note that if you are quoting directly from a source, you must correctly attribute the source. Likewise, if you are paraphrasing from a source, please be sure to acknowledge that source.

Please submit your assignment in the dropbox below. Please submit the entire assignment as a single document, including the AI use statement as an appendix. Please include a title page and a header that includes your name and student ID. If you use references, a reference list should be included at the rear of your document. Your reference list will not be included in the word count.

For your reference, our discussion of nudging is discussed in Topic 9, the readings for which include the supplementary readings linked in the Topic 9 section of the Stream site. Once you have identified your nudge, you might also find it useful to review relevant connected biases or heuristics from earlier in the semester to inform this discussion.

178.230 Marking Schedule

Choice Architecture Design (10 marks)
Very poor or missing explanation. No clear understanding of behavioral influence through design.

2 points

Limited or unclear explanation. Shows weak understanding of choice architecture principles.

4 points

Adequate explanation with some relevant elements, but lacks depth or clarity in how behavior is predictably altered.

6 points

Clearly explains the choice architecture with minor gaps in detail or clarity. Shows good understanding of behavioral influence.

8 points

Provides a clear, detailed, and insightful explanation of the choice architecture. Demonstrates a strong understanding of how it alters behavior predictably.

10 points

Preservation of Freedom and Incentives (10 marks)
Fails to address or misunderstands the concept of preserving choice and avoiding incentives.

2 points

Limited explanation; may confuse nudging with coercion or incentives.

4 points

Addresses the issue but lacks clarity or depth in showing how freedom and incentives are preserved.

6 points

Shows good understanding of preserving choice and minimizing incentives, with minor gaps in explanation.

8 points

Clearly demonstrates that the solution preserves freedom of choice and avoids significant incentives. Strong justification provided.

10 points

Application of Behavioral Insights (5 marks)
No meaningful application of behavioral economics concepts.

1 points

Minimal or unclear use of behavioral insights.

2 points

Includes some behavioral concepts but lacks depth or relevance.

3 points

Uses relevant behavioral concepts with minor inaccuracies or limited integration.

4 points

Integrates multiple relevant behavioral concepts (e.g., biases, heuristics) effectively to support the solution.

5 points

Creativity and Feasibility of the Solution (5 marks)
No clear or viable solution presented.

1 points

Solution lacks creativity or is impractical.

2 points

Some originality shown, but feasibility or relevance is limited.

3 points

Solution is creative and mostly feasible, with minor limitations.

4 points

Presents a highly original and practical solution tailored to New Zealand’s context.

5 points

Use of Evidence and Examples (5 marks)
No meaningful evidence or examples provided.

1 points

Limited or unclear use of supporting material.

2 points

Some evidence used, but not always relevant or well-integrated.

3 points

Good use of examples or evidence, with minor gaps.

4 points

Strong use of relevant examples, data, or course material to support arguments.

5 points

Structure, Clarity, and Referencing (5 marks)
Disorganized and unclear writing. Referencing is missing or inappropriate.

1 points

Poor structure or clarity. Referencing is minimal or incorrect.

2 points

Adequate structure and clarity. Referencing is present but inconsistent or incomplete.

3 points

Mostly clear and well-organized. Minor referencing or language issues.

4 points

Writing is well-structured, clear, and academic. Referencing is accurate, consistent, and complete..

5 points

Plan

Introduction

Hook: Open with a concrete NZ stat — e.g. Auckland is one of the most congested cities in the Asia-Pacific; transport is NZ’s second-largest source of greenhouse gas emissions (~17%). Cite Ministry for the Environment or MfE data.

Define nudging: Reference Thaler & Sunstein (2008) — a nudge is any aspect of choice architecture that alters behaviour in a predictable way without restricting options or changing economic incentives. One sentence, precise.

Scope statement: Briefly flag your structure — you will propose [X] nudge solution(s) targeting [walking/PT/peak driving], drawing on international examples adapted for the NZ context.

Thesis: Argue that behavioural insights — particularly defaults, social norms, and present bias — offer a low-cost, liberty-preserving pathway to reduce congestion and emissions in NZ cities.

Background – 200 Words

Choice architecture defined: The environment in which decisions are made — the “choice architect” designs how options are presented. Even “neutral” design shapes choices.

Key biases to introduce here (then apply later):

  • Present bias / hyperbolic discounting — people overweight immediate costs (walking in rain) over future benefits (health, environment)
  • Status quo bias / defaults — people stick with the default option; opting in to driving is the default for many
  • Social norms / descriptive norms — “most people in your neighbourhood walk” messages shift behaviour
  • Salience & attention — information only influences if it’s noticed at the right moment
  • Loss aversion — framing congestion cost as a loss is more motivating than framing PT saving as a gain

Nudge 1: Default Active Transport Routes:

The nudge: Partnering with Google Maps / Waka Kotahi to make walking or cycling the default route shown for journeys under 3 km in NZ cities, with driving shown as the secondary option. Users can freely switch — no option is removed.

Choice architecture mechanism: Exploits default bias — the default option has outsized influence because it requires no active decision. By reordering route display, the architecture makes the active option salient without mandating it. Also exploits salience — a prominent “You’ll arrive at the same time walking!” prompt makes the trade-off concrete at the moment of decision.

International evidence to borrow: UK’s “nudge unit” (BIT) trip-planning interventions; Google Maps’ eco-routing default in Europe (defaulted to lowest-emission route) showed measurable shift in route selection. Adapt for NZ: focus on flat urban corridors in Auckland, Wellington, Christchurch where walking is genuinely feasible.

Freedom & incentives preserved: The driving option is always present — no route is hidden or made more expensive. This is purely information architecture. No fine, no congestion charge, no subsidy.

Biases activated: Status quo bias (default is now active transport), salience (time comparison shown), present bias partially addressed by showing real-time ETA equivalence.

NZ-specific adaptation: note that NZ’s relatively compact city centres (Wellington’s CBD, Christchurch post-rebuild flat grid) make this more feasible than in sprawling US cities.

Nudge 2: Social Norm Messaging On Pt (Public Transport): 300 Words

The nudge: Personalised monthly “travel reports” sent to Auckland/Wellington commuters (via HOP card data or Council app) showing: “You took the bus 8 times this month — that’s more than 62% of commuters in your area. Your trips saved X kg CO₂.” Modelled on Opower energy reports.

Choice architecture mechanism: Descriptive social norms — what most people actually do — are a powerful default anchor. When people believe PT use is normal/common, the psychological cost of using it drops. The comparison to neighbours triggers injunctive norms (what others approve of) and mild loss aversion if you’re below average.

Evidence: Opower (now Oracle Utilities) used social norm energy reports and achieved 2–3% reductions in energy consumption at scale (Allcott, 2011 — cite this). Cialdini’s hotel towel experiments established descriptive norm effects. Adapt to NZ: use AT HOP card data (already collected) for low-cost implementation.

Freedom & incentives: Purely informational — no penalty, no reward. People can drive as much as they like. The report simply reframes what “normal” looks like, leaving all choices open.

Biases activated: Social norm bias, loss aversion (below-average framing), identity effects (“I’m someone who takes the bus”).

This is a strong nudge because it uses existing infrastructure (HOP cards) — makes it very feasible and NZ-specific, earning creativity/feasibility marks.

Nudge 3: Peak-Hour Commitment Device: 250 Words:

The nudge: A voluntary “off-peak pledge” app where Auckland commuters pre-commit (the night before) to travelling outside peak hours. The act of committing leverages consistency bias and implementation intentions — people who set a specific plan are far more likely to follow through.

Choice architecture: Pre-commitment is a self-imposed constraint — the person freely chooses it. The system then sends a reminder at 7am: “You pledged to leave at 9am today.” This exploits the planning fallacy correction — we follow through more when we’ve publicly or privately committed. Optional social sharing (“I’m going off-peak today”) adds norm reinforcement.

International parallel: Singapore’s voluntary off-peak rail travel incentive programme reduced peak-hour crowding. The NZ version removes the financial incentive — it is purely a commitment/reminder device, keeping it a true nudge rather than an incentive scheme.

Freedom preserved: Entirely voluntary — no cost to breaking the pledge, no tracking of compliance by authorities. The only mechanism is the individual’s own prior commitment.

Explicitly noting “this is not an incentive — there is no reward or fine” directly addresses the 10-mark freedom/incentives criterion.

NZ Adaptation Discussion: 150 Words:

Address NZ-specific factors: Car dependency culture, limited PT in smaller cities, geographic terrain (hills in Wellington/Dunedin affect walking feasibility). Your nudges should acknowledge these — e.g. the default-route nudge should only activate where walking/cycling infrastructure exists.

Cultural considerations: Mana Whenua perspectives on communal wellbeing align with reducing pollution; this is a genuine NZ-specific framing opportunity. Social norm messaging could be localised to suburb/iwi level.

Policy fit: NZ’s emissions reduction plan and Urban Development Act provide institutional backing. Mention briefly to show feasibility.

Conclusion

Synthesise: three complementary nudges targeting different behavioural barriers — default bias (route), social norms (PT reports), present bias / commitment (off-peak pledge). Each preserves full freedom of choice.

Acknowledge limits: nudges work best alongside structural improvements (better PT infrastructure); they are not a substitute for policy. Shows intellectual nuance.

End with the core insight: behavioural economics reveals that the problem isn’t just infrastructure — it’s the choice architecture people navigate daily. Small, low-cost redesigns of that architecture can yield meaningful, liberty-preserving behavioural change.

Thaler, R. H., & Sunstein, C. R. (2008). Nudge: Improving decisions about health, wealth, and happiness. Yale University Press.

Allcott, H. (2011). Social norms and energy conservation. Journal of Public Economics, 95(9–10), 1082–1095. — The Opower study.

Kahneman, D. (2011). Thinking, fast and slow. Farrar, Straus and Giroux. — System 1/2 framing.

Cialdini, R. B. (2007). Influence: The psychology of persuasion. — Social norms evidence.

Ministry for the Environment (2023). New Zealand’s greenhouse gas inventory — NZ transport emissions data.

Behavioural Insights Team (BIT) reports on active travel nudges — search at bi.team for relevant UK case studies.

INTRO:
    • Thaler (2008) – a nudge preserves freedom of choice while steering people toward decisions that serve them better. – a nudge is a change to the choice architecture
BACKGROUND: Thaler (2008) – choice architecture – the environment in which decisions are made. A choice architect designs how decisions are made. The order, structure, context, in which choices are presented systematically influences the decisions people make

  • Present bias/hyperbolic discounting
  • Status quo bias – people tend to stick with the option that is currently in place because change requires effort and the idea that losses could be larger/more possible – (Thaler, 2008)
  • Social norms –
  • Salience and attention –
  • Loss aversion –
NUDGE 1: DEFAULT ACTIVE TRANSORT ROUTES:
    • The first nudge suggested is partnering with google maps to make walking or cycling the default choice for journeys under 3km in NZ cities, with driving shown as the secondary option. Users can freely switch, all options would remain available.
NUDGE 2: SOCIAL NORM MESSAGING ON PT:  
NUDGE 3:PEAK HOUR COMMITMENT DEVICE:  
ADAPTATION DISCUSSION  
CONCLUSION:  

The nudge: Partnering with Google Maps / Waka Kotahi to make walking or cycling the default route shown for journeys under 3 km in NZ cities, with driving shown as the secondary option. Users can freely switch — no option is removed.

Choice architecture mechanism: Exploits default bias — the default option has outsized influence because it requires no active decision. By reordering route display, the architecture makes the active option salient without mandating it. Also exploits salience — a prominent “You’ll arrive at the same time walking!” prompt makes the trade-off concrete at the moment of decision.

International evidence to borrow: UK’s “nudge unit” (BIT) trip-planning interventions; Google Maps’ eco-routing default in Europe (defaulted to lowest-emission route) showed measurable shift in route selection. Adapt for NZ: focus on flat urban corridors in Auckland, Wellington, Christchurch where walking is genuinely feasible.

Freedom & incentives preserved: The driving option is always present — no route is hidden or made more expensive. This is purely information architecture. No fine, no congestion charge, no subsidy.

Biases activated: Status quo bias (default is now active transport), salience (time comparison shown), present bias partially addressed by showing real-time ETA equivalence.

NZ-specific adaptation: note that NZ’s relatively compact city centres (Wellington’s CBD, Christchurch post-rebuild flat grid) make this more feasible than in sprawling US cities.

Reference List To Use

Chaudhuri, A (2021) Behavioural Economics and Experiments (1st Edition). London: Routledge

Frerich, J. (2025). Walk this way: harnessing digital nudges to promote walking for transportation.

Behavioural Public Policy, 1–15. https://doi.org/10.1017/bpp.2025.10

Steele, A. (2024). Nudge Theory. The Decision Lab. Retrieved May 28, 2026, from https://thedecisionlab.com/reference-guide/psychology/nudge-theory

Oliver, A. (2013). From Nudging to Budging: Using Behavioural Economics to Inform Public Sector Policy. Journal of Social Policy, 42(4), 685–700. https://www.cambridge.org/core/journals/journal-of-social-policy/article/from-nudging-to-budging-using-behavioural-Economics-to-inform-public-sector-policy/D98361CED793BE761AA22BF49299BF43

Thaler, R. H., & Sunstein, C. R. (2008). Nudge: Improving decisions about health, wealth, and happiness. Yale University Press.

Allcott, H. (2011). Social norms and energy conservation. Journal of Public Economics, 95(9–10), 1082–1095. — The Opower study.

Kahneman, D. (2011). Thinking, fast and slow. Farrar, Straus and Giroux. — System 1/2 framing.

Cialdini, R. B. (2007). Influence: The psychology of persuasion. — Social norms evidence.

Ministry for the Environment (2023). New Zealand’s greenhouse gas inventory — NZ transport emissions data.

Behavioural Insights Team (BIT) reports on active travel nudges — search at bi.team for relevant UK case studies.

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