Researchers claim to have trained a machine learning system to identify posts on social media that aim to manipulate political events. This has been made possible, researchers claim, through the development of an automated machine learning system that identifies certain posts based around their content.

There are thought to be a rising number of political events targeted by foreign activity via social media networks. Researchers have found that these foreign manipulation campaigns can be identified when looking at the timing, the URLs contained in posts, as well as the length of the these posts.

Princeton University’s Dr Meysam Alizadeh, one of the co-authors on the research, stated in an article by The Guardian “We can use machine learning to automatically identify the content of troll postings and track an online information operation without human intervention”

The research team reports in the journal Science Advances exactly how the work was carried out, using content from four well-known social media campaigns that were targeted to the US. As a comparison, the researchers also used data from American Twitter accounts, including both average users and those engaged in the country’s politics. In addition to this, the research also used posts from accounts on Reddit that weren’t associated to any of these campaigns. 

Once the system had been trained, the research then explored whether it could distinguish between normal user activity and trolls. The team found positive results, with posts flagged up by the technology generally being those made by trolls. However, it’s worth noting that whilst the system did identify some of the troll posts, it did not pick up on all of them.

Prof Martin Innes explains that machine learning is good to identify online content but is hard to apply in live operations.

Director of Cardiff University’s Crime and Security Research Institute Prof Martin Innes commented “This is an important, interesting and sometimes intriguing piece of analysis”

“That machine learning algorithms should be able to identify similar content from within bounded datasets is perhaps to be expected, as after all there were already signals in the data that enabled them to be connected. But as the authors quite correctly clarify, there is a gap still to be bridged in terms of applying these approaches ‘in the wild’ to identify ‘live’ operations.”

This approach, the team claim, is different from detecting bots – an important point to note as these social media campaigns very often involve posts made by humans.

In addition to distinguishing between the activity of trolls and that of normal users, the research also found differences in the technology’s ability to detect, dependent on the country – Dr Alizadeh stating the system’s performance was “near-perfect; close to 99% accurate” for Venezuelan campaigns. In addition to this, Chinese activity was claimed to be easier to detect in comparison to that from Russia.

However, whilst the campaigns of some countries were easier to detect than others, Dr Alizadeh notes that this does not mean certain countries are better at disguising themselves as regular US users, and that there are a whole host of other reasons why some are more difficult to spot – “For example, the Venezuelans always talk about politics. The Russian trolls, some of them never talk about politics – they engage in hashtag games or share links to download music. Why are Russian trolls doing that? One answer could be to build their own audience.”

Filter by
Reset
Thank you! Your submission has been received!
Oops! Something went wrong while submitting the form.
Insurance
Create a claims triage system using Excel logic

Create a claims triage system using Excel logic

With claims, departments need to be able to filter out valid claims and pay them quickly amongst other tasks. See how Excel helps make a claims triage system.

Insurance

Boost sales with an insight sales model

Generating sales will often cost time and money, particularly in the insurance sector. Learn how smart tools can help manage costs using Optalitix Models here.

Use Case
Create a claims forecasting system

Create a claims forecasting system

Calculating claims is vital for insurers as it can take months or even years for the claim payments after an insurance event to emerge. Learn more now.

Insurance
Create a pricing application from a spreadsheet pricing model

Create a pricing application from a spreadsheet pricing model

When setting a price for a new product, the starting point is almost always Excel. Find out how to create a pricing application from a spreadsheet pricing model here.

Use Case

Optalitix Models Use Cases

Insurance often involves using pricing models in spreadsheets. Use Optalitix Models to simplify processes by transforming these spreadsheets into a system.

Insurance
Is the future of Lloyd’s algorithmic? - Part 2

Is the future of Lloyd’s algorithmic? - Part 2

Smart Follow underwriting and the algorithmic technology will bring a revolution of improved pricing and lower costs to insuring large and complex risks.

Insurance
Is the future of Lloyd’s algorithmic? - Part 1

Is the future of Lloyd’s algorithmic? - Part 1

Take a look at a report that considers the impact of algorithmic underwriting on Lloyd’s and the London Market where complex risks are often underwritten..

News
Optalitix and Almagro Capital announce a new partnership that provides Almagro Capital with a rapid online quoting tool for its forthcoming expansion

Optalitix and Almagro Capital announce a new partnership that provides Almagro Capital with a rapid online quoting tool for its forthcoming expansion

Optalitix and Almagro Capital have agreed to partner to create improved pricing tools for Almagro and its brokers. Read more about their partnership in here.

Insurance
The emergence of digital exchanges in the London Insurance Market

The emergence of digital exchanges in the London Insurance Market

The Optalitix team were invited to contribute to a discussion where the digitisation on the underwriting process for the London Market. Read our insights here.

News
Iotatech and Optalitix announce the successful integration of their products providing significant added value to Iotatech’s clients

Iotatech and Optalitix announce the successful integration of their products providing significant added value to Iotatech’s clients

Iotatech and Optalitix are pleased to announce the successful integration of their platforms aimed at creating added value for clients of the Iotatech Platform.

Insurance

Case Study: Catastrophe Reporting - Lloyd's of London

Learn how the London market could benefit from greater levels of digitisation and automation by converting data into cloud-based systems using low code software

News
Verto syndicate 2689 and Optalitix announce partnership - Press Release

Verto syndicate 2689 and Optalitix announce partnership - Press Release

Verto syndicate 2689 (Verto), a follow-only Lloyd’s syndicate, and Optalitix, an award-winning Insurtech company providing SaaS software to leading UK insurers.

Insurance
FCA disrupts the insurance market

FCA disrupts the insurance market

The FCA has changed the game for more established players in the insurance sector with its significant gear change in pricing for insurance business. Read more.

Underwriting
Insurance
Optalitix Quote, the innovative new product for underwriters

Optalitix Quote, the innovative new product for underwriters

Optalitix Quote is a new cloud product that enables underwriters using spreadsheets to improve their pricing processes. Learn more about it in this handy guide.

Insurance
Insurance innovation – what will 2022 bring?

Insurance innovation – what will 2022 bring?

What might we expect for insurance in 2022? From digital insurance marketplaces to wellness products and profitability, read our predictions and more.