Close Menu
Simply Invest Asia
  • Home
  • Industries
  • Investment
  • Money
  • Precious Metals
  • Property
  • Stock & Shares
  • Trading
What's Hot

High-Frequency Trading: HFT in Modern Crypto Trading

March 7, 2026

Martin Lewis explains how to get much better return on savings

March 7, 2026

Costco’s Strong Growth Continues. But Is the Stock Too Expensive?

March 7, 2026
Facebook X (Twitter) Instagram
Trending
  • High-Frequency Trading: HFT in Modern Crypto Trading
  • Martin Lewis explains how to get much better return on savings
  • Costco’s Strong Growth Continues. But Is the Stock Too Expensive?
  • Platinum deficit set to continue for 4th yr; shortage may shrink 75%
  • Boost tax-free Personal Allowance for savings with HMRC pension rule | Personal Finance | Finance
  • Best savings accounts as lenders cut rates
  • Arbitrage Trading: Profiting from Crypto Price Differences
  • Why Grocery Outlet Stock Dived by 33% This Week
Facebook X (Twitter) Instagram YouTube
Simply Invest Asia
  • Home
  • Industries
  • Investment
  • Money
  • Precious Metals
  • Property
  • Stock & Shares
  • Trading
Simply Invest Asia
Home»Trading»Algorithmic pricing: how AI is using your data to set personalised prices online (and how it could all go wrong)
Trading

Algorithmic pricing: how AI is using your data to set personalised prices online (and how it could all go wrong)

By LucasOctober 21, 20255 Mins Read
Share
Facebook Twitter LinkedIn Pinterest Email


You check prices online for a flight to Melbourne today. It’s $300. You leave your browser open. Two hours later, it’s $320. Half a day later, $280. Welcome to the world of algorithmic pricing, where technology tries to figure out what price you’re willing to pay.

Artificial intelligence (AI) is quietly remaking how companies set prices. Not only do prices shift with demand (dynamic pricing), but firms are increasingly tailoring prices to individual customers (personalised pricing).

This change isn’t just technical – it raises big questions about fairness, transparency and regulation.

How different pricing models work

Dynamic pricing reacts to the market and has been used for years on travel and retail websites.

Algorithms track supply, demand, timing and competitor prices. When demand peaks, prices rise for everyone. When it eases, they fall. Think Uber’s surge fares, airline ticket jumps in school holidays, or hotel rates during major events. This kind of variable pricing is now commonplace.

Personalised pricing goes further. AI uses personal data – your browsing history, purchase habits, device, even postcode – to predict your willingness to pay. The price varies with the individual. Some call this “surveillance pricing”.

Two people looking at the same product at the same time might see different prices. A person who always abandons carts might get a discount, while someone who rarely shops might see a premium price.

A study by the European Parliament defines personalised pricing as “price differentiation for identical products or services at the same time based on information a trader holds about a potential customer”.

Whereas dynamic pricing depends on the market, personalised pricing depends on the individual consumer.

It started with airfares

This shift began with the airline industry. Since deregulation in the 1990s, airlines have used “yield management” to alter fares depending on how many seats are left or how close to the departure date a booking is made.

More recently, airlines combine that with personalisation. They draw on shopping behaviour, social media context, device type, past browsing history – all to craft fare offers uniquely for you.

Hotels followed. A hotel might raise its base rate, but send a special “member only” discount to someone who has stayed before, or offer a price drop to someone lingering on a booking page. In hotel revenue management, pricing strategies enable companies to target distinct customer segments with different benefits (such as leisure versus business travellers).

AI enhances this process by enabling automated integration of large amounts of customer data into individual pricing.

Now the trend is spreading. E-commerce platforms such as Booking.com routinely test personalised discounts, depending on your profile. Ride-share apps, grocery promos, digital subscription plans – the reach can be broad.

How AI-driven personalised pricing works

At its core, such systems mine data, a lot of it. Every click, the amount of time spent on a web page, prior purchases, abandoned carts, location, device type, browsing path – these all feed into a profile. Machine learning models predict your “willingness to pay”. Using these predictions, the system picks a price that maximises revenue while hoping not to lose the sale.

Some platforms go further. At Booking.com, teams used modelling to select which users should receive a special offer, while meeting budget constraints. This drove a 162% increase in sales, while limiting the cost of promotions for the platform.

So you might not be seeing a standard price; you might be seeing a price engineered for you.

The risk is consumer backlash

There are, of course, risks to the strategy of personalised pricing.

First, fairness. If two households in the same suburb pay different rent or mortgage rates, that seems arbitrary. Pricing that uses income proxies (such as device type or postcode) might entrench inequality. Algorithms may discriminate (even unintentionally) against certain demographics.

Second, alienation. Consumers often feel cheated when they find a lower price later. Once trust is lost, customers might turn away or seek to game the system (clear cookies, browse in incognito mode, switch devices).

Third, accountability. Currently, transparency is low; firms rarely disclose the use of personalised pricing. If AI sets a price that breaches consumer law by being misleading or discriminatory, who’s liable — the firm or the algorithm designer?

What the regulators say

In Australia, the Australian Competition and Consumer Commission (ACCC) is taking notice. A five-year inquiry
published in June 2025 flagged algorithmic transparency, unfair trading practices, and consumer harms as central issues.

The commission said:

current laws are insufficient and regulatory reform is urgently needed.

It recommended stronger oversight of digital platforms, economy-wide unfair trading rules, and mechanisms to force algorithmic disclosure.

Is this efficient, or creepy?

We’re entering a world where your price might differ from mine — even in real time. That can unlock efficiency, new forms of loyalty pricing, or targeted discounts. But it can also feel Orwellian, unfair or exploitative.

The challenge for business is to deploy AI pricing ethically and transparently, in ways customers can trust. The challenge for regulators is to catch up. The ACCC’s actions suggest Australia is moving in that direction but many legal, technical, and philosophical questions remain.The Conversation

Nitika Garg, Professor of Marketing, UNSW Sydney

This article is republished from The Conversation under a Creative Commons license. Read the original article.





Source link

Share. Facebook Twitter Pinterest LinkedIn WhatsApp Reddit Tumblr Email

Related Posts

High-Frequency Trading: HFT in Modern Crypto Trading

March 7, 2026

Arbitrage Trading: Profiting from Crypto Price Differences

March 7, 2026

$44.55 Bn Trends, Opportunities, Competitive Analysis, and Long-term Forecasts, 2020-2025, 2025-2030F, 2035F

March 7, 2026
Leave A Reply Cancel Reply

Our Picks

Loop Industries targets 2027 India facility launch and second plant expansion amid strong demand and new textile partnerships (NASDAQ:LOOP)

October 16, 2025

How can I save money this Christmas?

December 4, 2025

silver price today: Why are gold and silver prices down again and will precious metals bounce back or continue to fall? Gold and silver drop, revised price targets, analysts insights and market outlook explained

February 16, 2026

Oil refinery blaze hits Cuba as fuel crisis deepens

February 21, 2026
Don't Miss
Trading

High-Frequency Trading: HFT in Modern Crypto Trading

By LucasMarch 7, 2026

In today’s dynamic financial environment, time is of the essence. A matter of a fraction…

Martin Lewis explains how to get much better return on savings

March 7, 2026

Costco’s Strong Growth Continues. But Is the Stock Too Expensive?

March 7, 2026

Platinum deficit set to continue for 4th yr; shortage may shrink 75%

March 7, 2026
Our Picks

AI can’t replace human creativity, emotional intelligence: Kumaraswamy | Ahmedabad News

November 16, 2025

Transportation Research Board (TRB)

November 25, 2025

Unlimited Industries’ AI-Powered Construction Raises $12 Million Seed Round

December 3, 2025
Weekly Pick's

Is it too late to invest in silver? Precious metals experts weigh in

February 14, 2026

Citi, JPMorgan tout China value stocks as haven amid tariff risk

October 13, 2025

Black Friday TV Deals 2025

November 26, 2025
Monthly Featured

2 Value Stocks on Our Watchlist and 1 Facing Headwinds

October 29, 2025

Medical Care Technologies Inc. Announces CEO Insider Purchase of 50 Million Shares of MDCE Common Stock

November 21, 2025

Is It Too Late to Buy This Surging Silver ETF?

February 1, 2026
Facebook X (Twitter) Instagram Pinterest
  • Contact Us
  • Privacy Policy
  • Terms and Conditions
© 2026 Simply Invest Asia.

Type above and press Enter to search. Press Esc to cancel.