The Global Scale of English: A decade of innovation in language education

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This year marks 10 years since the launch of the Global Scale of English (GSE) and what a journey it has been. As we celebrate this important milestone, it’s time to reflect on everything that has been achieved over the past decade.

10 years of the GSE
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What is the Global Scale of English? 

The GSE is both a proficiency scale and a language framework designed to provide a detailed understanding of learners' English levels. It is the result of extensive global research and goes beyond other language measurement tools, such as the CEFR, to offer unparalleled insights into learners' skills.  

The GSE ensures precise learner placement and measurable progress tracking. It provides tangible insights into learners' English language competencies, boosting motivation and confidence.  Ìý
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Accurately place learners: Easily pinpoint reading, writing, listening and speaking skills on the simple 10-90 scale.

Measure and fast-track progress: Learning objectives describing what learners 'can do' at each point on the scale enable the creation of personalized learning journeys, short-term learning goals and the monitoring of progress towards these goals. Ìý
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In just a decade, the GSE has grown to support educators, learners and businesses across diverse learning stages and languages. Now, with the Global Scale of Languages (GSL), it also supports learners of French, German, Italian and Spanish. 

The evolution of the GSE 

From the initial set of 100 new GSE Learning Objectives, we now have almost 4,000 for all types of learners, from pre-primary to adults learning English for academic study and work. Our resources include comprehensive grammar and vocabulary databases, text analysis software and job-specific tools, all aligned to the GSE. Ìý

We wouldn’t be where we are today without the support of thousands of people around the world. This includes researchers, psychometricians and the 6,000+ teachers who collaborated with us to rate and validate the new learning objectives. 

Key milestones 

The GSE's journey is marked by many key milestones that highlight its growth and impact on global language education. Here are but a few notable achievements to showcase how far the GSE has come.

Plans and frameworks: The GSE resources provide guidance and support for the language learning process. Key educational frameworks, including Pre-Primary Learning Objectives, Young Learner Learning Objectives, Adult Learning Objectives, Academic Learning Objectives and Professional Learning Objectives, have been developed to help support English teaching in all contexts and for all ages. Educators can use these frameworks to deliver effective lessons, plan curriculums, shape learning and develop lessons further.

Recognition and awards: Recognition for the GSE by other education bodies such as the Council of Europe (CEFR), EAQUALS, NEAS and ACCET has strengthened its reputation within the worldwide education community. Furthermore, the GSE's nomination for the British Council ELTons Award for Innovation in Teacher Resources in 2020 further demonstrates its value and growing recognition.

Tools and applications: Teachers and students can benefit from the GSE Toolkit and GSE Text Analyzer. These tools provide helpful resources for educators and learners to make the most of the GSE. The GSE Job Profiles tool is an innovative resource that connects language learning with specific job requirements.

Global Scale of Languages expansion: It doesn’t just stop with English either. The GSE's expansion now includes the Global Scale of Languages (GSL) for French, German, Spanish and Italian, demonstrating our commitment to supporting language learners and educators across multiple languages.

10 Years of Global Scale of English: Mike Mayor Reflects on the Journey
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The 10-year anniversary of the Global Scale of English represents a significant milestone in language education. The GSE, a key part of ÃÛÌÒapp's learning programs, aims to provide precise, accurate, and personalized learning for students worldwide. We look forward to another decade of supporting learners, educators and businesses.Ìý

Find out about the GSE today and how it can enhance your educational journey.

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  • Hands typing at a laptop with symbols

    Can computers really mark exams? Benefits of ELT automated assessments

    By ÃÛÌÒapp Languages

    Automated assessment, including the use of Artificial Intelligence (AI), is one of the latest education tech solutions. It speeds up exam marking times, removes human biases, and is as accurate and at least as reliable as human examiners. As innovations go, this one is a real game-changer for teachers and students. 

    However, it has understandably been met with many questions and sometimes skepticism in the ELT community – can computers really mark speaking and writing exams accurately? 

    The answer is a resounding yes. Students from all parts of the world already take AI-graded tests.  and VersantÌýtests – for example – provide unbiased, fair and fast automated scoring for speaking and writing exams – irrespective of where the test takers live, or what their accent or gender is. 

    This article will explain the main processes involved in AI automated scoring and make the point that AI technologies are built on the foundations of consistent expert human judgments. So, let’s clear up the confusion around automated scoring and AI and look into how it can help teachers and students alike. 

    AI versus traditional automated scoring

    First of all, let’s distinguish between traditional automated scoring and AI. When we talk about automated scoring, generally, we mean scoring items that are either multiple-choice or cloze items. You may have to reorder sentences, choose from a drop-down list, insert a missing word- that sort of thing. These question types are designed to test particular skills and automated scoring ensures that they can be marked quickly and accurately every time.

    While automatically scored items like these can be used to assess receptive skills such as listening and reading comprehension, they cannot mark the productive skills of writing and speaking. Every student's response in writing and speaking items will be different, so how can computers mark them?

    This is where AI comes in. 

    We hear a lot about how AI is increasingly being used in areas where there is a need to deal with large amounts of unstructured data, effectively and 100% accurately – like in medical diagnostics, for example. In language testing, AI uses specialized computer software to grade written and oral tests. 

    How AI is used to score speaking exams

    The first step is to build an acoustic model for each language that can recognize speech and convert it into waveforms and text. While this technology used to be very unusual, most of our smartphones can do this now. 

    These acoustic models are then trained to score every single prompt or item on a test. We do this by using human expert raters to score the items first, using double marking. They score hundreds of oral responses for each item, and these ‘Standards’ are then used to train the engine. 

    Next, we validate the trained engine by feeding in many more human-marked items, and check that the machine scores are very highly correlated to the human scores. If this doesn’t happen for any item, we remove it, as it must match the standard set by human markers. We expect a correlation of between .95-.99. That means that tests will be marked between 95-99% exactly the same as human-marked samples. 

    This is incredibly high compared to the reliability of human-marked speaking tests. In essence, we use a group of highly expert human raters to train the AI engine, and then their standard is replicated time after time.  

    How AI is used to score writing exams

    Our AI writing scoring uses a technology called . LSA is a natural language processing technique that can analyze and score writing, based on the meaning behind words – and not just their superficial characteristics. 

    Similarly to our speech recognition acoustic models, we first establish a language-specific text recognition model. We feed a large amount of text into the system, and LSA uses artificial intelligence to learn the patterns of how words relate to each other and are used in, for example, the English language. 

    Once the language model has been established, we train the engine to score every written item on a test. As in speaking items, we do this by using human expert raters to score the items first, using double marking. They score many hundreds of written responses for each item, and these ‘Standards’ are then used to train the engine. We then validate the trained engine by feeding in many more human-marked items, and check that the machine scores are very highly correlated to the human scores. 

    The benchmark is always the expert human scores. If our AI system doesn’t closely match the scores given by human markers, we remove the item, as it is essential to match the standard set by human markers.

    AI’s ability to mark multiple traits 

    One of the challenges human markers face in scoring speaking and written items is assessing many traits on a single item. For example, when assessing and scoring speaking, they may need to give separate scores for content, fluency and pronunciation. 

    In written responses, markers may need to score a piece of writing for vocabulary, style and grammar. Effectively, they may need to mark every single item at least three times, maybe more. However, once we have trained the AI systems on every trait score in speaking and writing, they can then mark items on any number of traits instantaneously – and without error. 

    AI’s lack of bias

    A fundamental premise for any test is that no advantage or disadvantage should be given to any candidate. In other words, there should be no positive or negative bias. This can be very difficult to achieve in human-marked speaking and written assessments. In fact, candidates often feel they may have received a different score if someone else had heard them or read their work.

    Our AI systems eradicate the issue of bias. This is done by ensuring our speaking and writing AI systems are trained on an extensive range of human accents and writing types. 

    We don’t want perfect native-speaking accents or writing styles to train our engines. We use representative non-native samples from across the world. When we initially set up our AI systems for speaking and writing scoring, we trialed our items and trained our engines using millions of student responses. We continue to do this now as new items are developed.

    The benefits of AI automated assessment

    There is nothing wrong with hand-marking homework tests and exams. In fact, it is essential for teachers to get to know their students and provide personal feedback and advice. However, manually correcting hundreds of tests, daily or weekly, can be repetitive, time-consuming, not always reliable and takes time away from working alongside students in the classroom. The use of AI in formative and summative assessments can increase assessed practice time for students and reduce the marking load for teachers.

    Language learning takes time, lots of time to progress to high levels of proficiency. The blended use of AI can:

    • address the increasing importance of formative assessmentÌýto drive personalized learning and diagnostic assessment feedback 

    • allow students to practice and get instant feedback inside and outside of allocated teaching time

    • address the issue of teacher workload

    • create a virtuous combination between humans and machines, taking advantage of what humans do best and what machines do best. 

    • provide fair, fast and unbiased summative assessment scores in high-stakes testing.

    We hope this article has answered a few burning questions about how AI is used to assess speaking and writing in our language tests. An interesting quote from Fei-Fei Li, Chief scientist at Google and Stanford Professor describes AI like this:

    “I often tell my students not to be misled by the name ‘artificial intelligence’ — there is nothing artificial about it; A.I. is made by humans, intended to behave [like] humans and, ultimately, to impact human lives and human society.â€

    AI in formative and summative assessments will never replace the role of teachers. AI will support teachers, provide endless opportunities for students to improve, and provide a solution to slow, unreliable and often unfair high-stakes assessments.

    Examples of AI assessments in ELT

    At ÃÛÌÒapp, we have developed a range of assessments using AI technology, including , aimed at those who need to prove their level of English for a university place, a job or a visa. It uses AI to score tests and results are available within five days.