Measuring Emotion Recognition Through Language: The Development and Validation of an English Productive Emotion Vocabulary Size Test
Abstract
1. Introduction
2. Literature Review
2.1. Emotion Vocabulary in Language Learning
2.2. Challenges in Identifying Emotion Vocabulary
2.3. Existing Measures of Emotion Vocabulary
3. Methodology
3.1. Participants
3.2. Designing the Productive Emotion Vocabulary Size Test (PEVST) (Appendix A)
- The emotion word was not explicitly mentioned in the context, but was conveyed through the protagonist’s actions or thoughts to prevent informing participants of the target emotion.
- Each character’s thoughts were presented in the first person to simulate emotional experiences that participants might feel.
- Each character’s thoughts did not exceed 2 sentences to keep the vignettes as brief as possible.
3.3. Supplementary Instruments
Lexical Test for Advanced Learners of English (LexTALE)
3.4. Data Analysis
3.4.1. Scoring the PEVST
3.4.2. Rasch Analysis
4. Results
4.1. By-Item Analysis
4.2. Rasch Analysis
4.2.1. Dichotomous Rasch Model
- Q26:
- Infit and outfit t were out of range (beyond −2);
- Q71:
- Negative discrimination value.
4.2.2. Polytomous Rasch Model
- Q30
- ○
- Q30.c1: p < 0.05, z > +1.96;
- ○
- Q30.c2: p = 0.065; although not significant, but close to threshold.
- Q41
- ○
- Q41.c2: p < 0.05, z > +1.96;
- ○
- Q41.c1: p = 0.054; although not significant, but close to threshold.
5. Discussion
Limitations and Future Directions
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Acknowledgments
Conflicts of Interest
Glossary
L1/L2 | First language/second language. English L2 refers here to English learned as an additional language in ESL/EFL contexts, but does not denote a chronological or dominance/language proficiency or order of acquisition in the case of multilinguals. |
ESL/EFL | English as a Second Language refers to learners who are acquiring English in a country where English is the dominant or official language and is used outside of classrooms in a natural manner. English as a Foreign Language refers to learners who are learning English in a non-English-speaking country and English is typically used only in the classroom, so exposure is more limited and structured. |
BNC/COCA | A combined word frequency list derived from the British National Corpus (BNC) and the Corpus of Contemporary American English (COCA). The combined BNC/COCA list provides frequency rankings that reflect usage in both British and American English. |
SUBTLEX-UK | A word frequency database based on over 200 million words from British television and film subtitles. As subtitles tend to closely match everyday spoken language, SUBTLEX-UK provides frequency data that are often more representative of colloquial usage than those based on traditional written corpora. |
Word families | A base word and its inflected or derived forms (e.g., teach, teaches, teacher, teaching). Word family counting assumes learners can recognise related forms once the base word is known. |
High-frequency words | The most commonly used words in a language. They cover a large proportion of everyday texts and are essential for basic comprehension. |
Mid-frequency Words | Words that occur less frequently than high-frequency items but are still common in academic, literary, and general texts. |
Low-frequency Words | Rare words, often domain-specific, which appear infrequently and are usually acquired incidentally or through specialised reading. |
Frequency bands | Groupings of words based on how often they occur in large language corpora. (High-frequency: 1–3k; mid-frequency: 4–8k; low-frequency: 9k and above (Schmitt & Schmitt, 2014). |
Appendix A
Item | Target Emotion | Frequency | Valence | Arousal | Vignette |
---|---|---|---|---|---|
Q23 | dirty | 1k | 4.50 | 3.44 | “Oh no, I need a shower!” |
Q24 | doubt | 1k | 3.28 | 4.33 | “Can I really figure this out?” |
Q25 | lazy | 1k | 3.90 | 2.76 | “I should really get up and start taking care of these tasks but I don’t want to.” |
Q26 | defeat | 3k | 3.74 | 4.14 | “I lost the competition.” |
Q27 | obsess | 4k | 3.23 | 4.95 | “This movie is so good, I’m going to get their merchandise!” |
Q28 | bewilder | 5k | 4.32 | 4.57 | “What is going on? Why is our boss wearing a unicorn outfit to work?” |
Q29 | dismay | 5k | 3.10 | 2.85 | “I can’t believe my job application was rejected again.” |
Q30 | dizzy | 5k | 3.36 | 4.95 | “Oh no, I need to lie down.” |
Q31 | inferior | 5k | 3.43 | 4.55 | “Everyone else seems to be doing so much better than me.” |
Q32 | daze | 7k | 4.14 | 4.5 | “I can’t think clearly” |
Q33 | phony | 7k | 2.52 | 4.40 | “I really hope they don’t notice that my bag is fake” |
Q34 | drowsy | 9k | 4.25 | 2.83 | “I need to pull over. I can’t keep driving like this” |
Q35 | vindictive | 10k | 3.24 | 4.64 | “I am going to hurt you just like how you hurt me” |
Q36 | luck | 1k | 6.73 | 4.57 | “I feel like I will win this!” |
Q37 | support | 1k | 6.89 | 3.05 | “I have a safety net. I always have people that I can rely on.” |
Q38 | secret | 2k | 5.33 | 4.14 | “I need to watch what I say. I do not want them to find out about my partner yet.” |
Q39 | relieve | 3k | 7.25 | 3.9 | “Thank goodness! I thought it might be something serious.” |
Q40 | sympathy | 3k | 6.67 | 3.29 | “Oh dear, I can’t imagine what it feels like to be cheated on.” |
Q41 | nostalgia | 6k | 6.65 | 4.38 | “I miss those good old days.” |
Q42 | trustworthy | 8k | 7.25 | 4.22 | “I’m glad my friend shares his secrets with me”. |
Q43 | sociable | 9k | 6.43 | 4.35 | “Aww I love having all these people around and making new friends.” |
Q44 | bashful | 13k | 5.55 | 4.36 | “Oh? Who is this? I’ve never met her before!” |
Q45 | homy | 15k | 5.68 | 3.41 | “It is so nice here, I want to live here forever” |
Q46 | hate | 1k | 1.96 | 6.26 | “Urgh! I really can’t stand him.” |
Q47 | responsible | 1k | 2.50 | 5.00 | “This is my fault! I will pay the owner for the repairs” |
Q48 | accuse | 2k | 3.38 | 5.48 | “I haven’t done anything but she is scolding me.” |
Q49 | hostile | 3k | 2.35 | 5.39 | “I can’t stand noisy children! Get out of my restaurant!” |
Q50 | curse | 4k | 2.90 | 5.20 | “This is the sixth time I’ve gotten a punctured tyre this month.” |
Q51 | greed | 4k | 2.48 | 4.45 | “Yum! This ice-cream is so delicious, I want more!” |
Q52 | insult | 4k | 2.62 | 5.3 | “Why do they have to say such nasty things to me?” |
Q53 | intimidate | 4k | 2.84 | 5.27 | “He always shouts at me and says I would be fired if I didn’t do well.” |
Q54 | frantic | 5k | 3.79 | 5.39 | “I have to find it quickly before they realize it’s missing.” |
Q55 | horrified | 5k | 2.68 | 6.29 | “How could something so awful happen?!” |
Q56 | reckless | 5k | 3.09 | 5.18 | “I don’t care what happens.” |
Q57 | squirm | 7k | 3.86 | 5.29 | “Ugh! I can’t stand the sight of blood.” |
Q58 | foreboding | 10k | 3.53 | 5.30 | “I think something bad is going to happen.” |
Q59 | grumpy | 10k | 2.81 | 5.05 | “Why is everyone bugging me today?! I wish they would leave me alone.” |
Q60 | disbelief | 12k | 4.21 | 5.58 | “There is no way this is actually true.” |
Q61 | famished | 14k | 4.47 | 6.43 | “I haven’t eaten all day and now my stomach is hurting. I really need to eat something!” |
Q62 | silly | 1k | 6.27 | 5.13 | “I’m acting so childish.” |
Q63 | adventure | 2k | 7.40 | 6.36 | “I live for new experiences.” |
Q64 | curious | 2k | 6.37 | 5.90 | “I really want to understand how it works.” |
Q65 | defence | 2k | 5.36 | 5.11 | “I need to justify myself. I will not let her criticise me like this.” |
Q66 | impulse | 4k | 5.16 | 5.33 | “I just had to have it.” |
Q67 | gratitude | 5k | 6.67 | 5.09 | “My mother is so thoughtful and kind.” |
Q68 | enchant | 6k | 7.16 | 5.27 | “I feel like I’ve stepped into a magical world.” |
Q69 | flirt | 6k | 6.73 | 5.93 | “You’re so beautiful. You made me forget my pickup line” |
Q70 | tickle | 6k | 6.14 | 5.86 | “I can’t stop laughing! I can’t stand it anymore.” |
Q71 | hilarious | 7k | 7.80 | 6.11 | “I killed that joke. Everyone is laughing hysterically!” |
Q72 | inquisitive | 9k | 6.00 | 5.33 | “I wonder how many planes, pilots, passengers, and bags are at this airport? I have so many questions!” |
Q73 | euphoric | 11k | 7.80 | 5.25 | “We’re finally having a baby after trying for five years! This is amazing!” |
Appendix B
Target Emotion | Freq | Dom 1 | Freq | Count 1 | NA1 | Dom 2 | Freq | Count 2 | NA2 | Dom 3 | Freq | Count 3 | NA3 |
---|---|---|---|---|---|---|---|---|---|---|---|---|---|
Dirty | 1k | Dirty * | 1k | 48 | 30.77 | Disgust | 2k | 35 | 22.43 | Un(comfort)able | 1k | 18 | 11.54 |
Doubt | 1k | Doubt * | 1k | 53 | 33.97 | Confuse | 2k | 33 | 21.15 | Worry | 1k | 18 | 11.54 |
Lazy | 1k | Lazy * | 1k | 111 | 71.15 | Relax | 2k | 24 | 15.38 | Tire | 1k | 19 | 12.18 |
Defeat | 3k | Sad | 1k | 83 | 53.20 | Disappoint | 2k | 71 | 45.51 | Defeat * | 3k | 27 | 17.31 |
Obsess | 4k | Excite | 1k | 50 | 32.05 | Happy | 1k | 34 | 21.79 | Obsess * | 4k | 16 | 10.26 |
Dizzy | 5k | Dizzy * | 5k | 99 | 63.46 | Tire | 1k | 42 | 26.92 | Sick | 1k | 25 | 16.03 |
Secret | 2k | Care | 1k | 31 | 19.87 | Cautious | 4k | 30 | 19.23 | Secret * | 2k | 30 | 19.23 |
Relieve | 3k | Relieve * | 3k | 85 | 54.48 | Relief | 2k | 50 | 32.05 | Happy | 1k | 43 | 27.56 |
Sympathy | 3k | Sad | 1k | 70 | 44.87 | Empathy | 6k | 41 | 26.28 | Sympathy * | 3k | 37 | 23.72 |
Nostalgia | 6k | Nostalgic * | 7k | 63 | 40.38 | Happy | 1k | 59 | 37.82 | Sad | 1k | 27 | 17.31 |
Responsible | 1k | Guilty | 2k | 66 | 42.30 | Responsible * | 1k | 40 | 25.64 | Worry | 1k | 19 | 12.18 |
Greed | 4k | Happy | 1k | 72 | 46.15 | Satisfy | 2k | 27 | 17.30 | Greed * | 4k | 23 | 14.74 |
Reckless | 5k | Reckless * | 5k | 36 | 23.07 | Care | 1k | 14 | 8.97 | Apathy | 7k | 9 | 5.77 |
Disbelief | 12k | Doubt | 1k | 45 | 28.84 | Disbelief * | 12k | 32 | 20.51 | Sceptic | 4k | 26 | 16.67 |
Silly | 1k | Happy | 1k | 56 | 35.89 | Fun | 1k | 36 | 23.07 | Silly * | 1k | 30 | 19.23 |
Adventure | 2k | Excite | 1k | 81 | 51.92 | Adventure * | 2k | 69 | 44.23 | Happy | 1k | 31 | 19.87 |
Curious | 2k | Curious * | 2k | 121 | 77.56 | Determine | 2k | 19 | 12.17 | Interest | 1k | 14 | 8.97 |
Defence | 2k | Angry | 1k | 44 | 28.21 | Confident | 3k | 28 | 17.94 | Defence * | 2k | 26 | 16.67 |
Impulse | 4k | Excite | 1k | 24 | 15.38 | Happy | 1k | 23 | 14.74 | Impulse * | 4k | 22 | 14.10 |
Flirt | 6k | Flirt * | 6k | 42 | 26.92 | Confident | 3k | 24 | 15.38 | Happy | 1k | 17 | 10.90 |
Inquisitive | 9k | Curious | 2k | 124 | 79.49 | Excite | 1k | 33 | 21.15 | Inquisitive * | 9k | 17 | 10.90 |
Appendix C
Target Emotion | Freq | Dom 1 | Freq | Count 1 | NA1 | Dom 2 | Freq | Count 2 | NA2 | Dom 3 | Freq | Count 3 | NA3 |
---|---|---|---|---|---|---|---|---|---|---|---|---|---|
bewilder | 5k | confuse * | 2k | 70 | 44.87 | curious | 2k | 58 | 37.18 | shock | 2k | 28 | 17.95 |
dismay | 5k | sad | 1k | 54 | 34.61 | disappoint * | 2k | 47 | 30.13 | frustrate | 2k | 42 | 26.92 |
inferior | 5k | sad | 1k | 56 | 35.90 | disappoint | 2k | 35 | 22.44 | depress | 2k | 13 | 8.33 |
daze | 7k | confuse * | 2k | 35 | 22.44 | shock | 2k | 27 | 17.31 | distract | 4k | 12 | 7.69 |
phony | 7k | worry | 1k | 50 | 32.05 | embarrass | 2k | 25 | 16.03 | anxious | 2k | 25 | 16.03 |
drowsy | 9k | tire | 1k | 40 | 25.64 | dizzy | 5k | 36 | 23.08 | sick | 1k | 32 | 20.51 |
vindictive | 10k | angry | 1k | 71 | 45.51 | vengeful * | 11k | 58 | 37.18 | revenge | 5k | 26 | 16.67 |
luck | 1k | confident | 3k | 61 | 39.10 | hope | 1k | 56 | 35.90 | excite | 1k | 37 | 23.72 |
support | 1k | happy | 1k | 53 | 33.97 | safe | 1k | 46 | 29.49 | grateful | 3k | 32 | 20.51 |
trustworthy | 8k | happy | 1k | 52 | 33.33 | trust * | 1k | 40 | 25.64 | grateful | 3k | 31 | 19.87 |
sociable | 9k | happy | 1k | 96 | 61.54 | joy | 2k | 22 | 14.10 | grateful | 3k | 18 | 11.54 |
bashful | 13k | shy * | 1k | 77 | 49.36 | curious | 2k | 55 | 35.26 | scare | 1k | 24 | 15.38 |
homy | 15k | comfort * | 1k | 58 | 37.18 | relax | 2k | 42 | 26.92 | happy | 1k | 39 | 25.00 |
hate | 1k | annoy | 2k | 84 | 53.85 | angry | 1k | 55 | 35.26 | frustrate | 2k | 24 | 15.38 |
accuse | 2k | confuse | 2k | 68 | 43.59 | sad | 1k | 23 | 14.74 | annoy | 2k | 15 | 9.62 |
hostile | 3k | annoy | 2k | 90 | 57.69 | angry | 1k | 82 | 52.56 | frustrate | 2k | 24 | 15.38 |
curse | 4k | frustrate | 2k | 37 | 23.72 | annoy | 2k | 30 | 19.23 | (un)luck(y) | 1k | 38 | 24.36 |
insult | 4k | angry | 1k | 71 | 45.51 | sad | 1k | 28 | 17.95 | annoy | 2k | 20 | 12.82 |
intimidate | 4k | sad | 1k | 52 | 33.33 | scare | 1k | 15 | 9.62 | worry | 1k | 14 | 8.97 |
frantic | 5k | worry | 1k | 51 | 32.69 | anxious | 2k | 45 | 28.85 | panic * | 2k | 36 | 23.08 |
horrified | 5k | sad | 1k | 62 | 39.74 | shock * | 2k | 39 | 25.00 | disbelief | 12k | 18 | 11.54 |
squirm | 7k | scare | 1k | 77 | 49.36 | disgust | 2k | 56 | 35.90 | fear | 1k | 26 | 16.67 |
foreboding | 10k | worry | 1k | 52 | 33.33 | anxious | 2k | 50 | 32.05 | scare | 1k | 34 | 21.79 |
grumpy | 10k | annoy * | 2k | 105 | 67.31 | frustrate | 2k | 31 | 19.87 | irritate | 4k | 29 | 18.59 |
famished | 14k | hungry * | 1k | 119 | 76.28 | tire | 1k | 22 | 14.10 | pain | 1k | 20 | 12.82 |
gratitude | 5k | grateful * | 3k | 64 | 41.03 | love | 1k | 58 | 37.18 | happy | 1k | 51 | 32.69 |
enchant | 6k | amaze | 2k | 46 | 29.49 | excite | 1k | 33 | 21.15 | happy | 1k | 28 | 17.95 |
tickle | 6k | happy | 1k | 95 | 60.90 | fun | 1k | 30 | 19.23 | joy | 2k | 28 | 17.95 |
hilarious | 7k | proud | 2k | 64 | 41.03 | happy | 1k | 62 | 39.74 | confident | 3k | 25 | 16.03 |
euphoric | 11k | happy * | 1k | 67 | 42.95 | excite | 1k | 52 | 33.33 | joy * | 2k | 21 | 13.46 |
Appendix D
Target Emotion | Freq | Examples | Sum of Accurate Responses |
---|---|---|---|
dirty | 1k | Frustrated, gross, annoyed | 35 |
doubt | 1k | Anxious, unsure, uncertain | 66 |
lazy | 1k | Unmotivated, overwhelmed, sluggish | 30 |
defeat | 3k | Frustrated, dejected, depressed | 69 |
obsess | 4k | Attracted, addicted, mesmerised | 35 |
bewilder | 5k | Surprised, funny, puzzled | 62 |
dismay | 5k | Dejected, hopeless, depressed | 90 |
dizzy | 5k | Unwell, nauseous, weak | 35 |
inferior | 5k | Jealous, insecure, worried | 66 |
daze | 7k | Lost, distraught, disoriented | 40 |
phony | 7k | Scared, fearful, ashamed | 63 |
drowsy | 9k | Unwell, fatigue, nauseous | 30 |
vindictive | 10k | Angry, hateful, resentful | 54 |
luck | 1k | Optimistic, determined, positive | 33 |
support | 1k | Loved, secure, comfortable | 55 |
secret | 2k | Worried, nervous, scared | 54 |
relieve | 3k | Grateful, thankful, reassured | 35 |
sympathy | 3k | Pity, sorry, compassion | 35 |
nostalgia | 6k | Longing, melancholic, wistful | 37 |
trustworthy | 8k | Glad, appreciated, touched | 45 |
sociable | 9k | Friendly, welcomed, popular | 30 |
bashful | 13k | Nervous, confused, anxious | 46 |
homy | 15k | Content, calm, cosy | 70 |
hate | 1k | Irritated, disgusted, angry | 75 |
responsible | 1k | Regret, remorse, sorry | 53 |
accuse | 2k | Frustrated, misunderstood, wronged | 67 |
hostile | 3k | Irritated, impatient, angry | 62 |
curse | 4k | Sad, tired, disappointed | 41 |
greed | 4k | Hungry, addicted, obsessed | 43 |
insult | 4k | Hurt, upset, furious | 62 |
intimidate | 4k | Stressed, hurt, discouraged | 56 |
frantic | 5k | Scared, nervous, anxious | 52 |
horrified | 5k | Worried, sorrowful, terrified | 55 |
reckless | 5k | Fearless, impulsive, free | 30 |
squirm | 7k | Nauseous, uncomfortable, terrified | 66 |
foreboding | 10k | Fearful, paranoid, anxious | 47 |
grumpy | 10k | Angry, impatient, agitated | 60 |
disbelief | 12k | Unbelievable, suspicious, unimpressed | 33 |
famished | 14k | Desperate, weak, suffering | 35 |
silly | 1k | Playful, foolish, comical | 22 |
adventure | 2k | Adventurous, happy, courageous | 29 |
curious | 2k | Eager, intrigued, focused | 50 |
defence | 2k | Determined, annoyed, indignant | 79 |
impulse | 4k | Greedy, obsessed, tempted | 59 |
gratitude | 5k | Appreciated, touched, thankful | 61 |
enchant | 6k | Wonderous, awe, mesmerised | 65 |
flirt | 6k | Attracted, lustful, infatuated | 55 |
tickle | 6k | Amused, entertained, giggly | 46 |
hilarious | 7k | Satisfied, accomplished, funny | 51 |
inquisitive | 9k | Interested, intrigued, wonder | 45 |
euphoric | 11k | Ecstatic, elated, overjoyed | 72 |
1 | English L2 refers here to English learned as an additional language in ESL/EFL contexts, but does not denote a chronological or dominance/language proficiency or order of acquisition in the case of multilinguals. |
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Demographics | N (%) |
---|---|
Gender | |
Male | 64 (41%) |
Female | 92 (59%) |
Language Background | |
L1 English | 82 (53%) |
L2 English | 74 (47%) |
Nationality | |
Malaysian | 126 (81%) |
Non-Malaysian | 30 (19%) |
Range | N | Min | Max | Mean | SD | |
---|---|---|---|---|---|---|
Advanced | 80–100 | 103 | 80.00 | 100.00 | 91.74 | 5.75 |
Upper intermediate | 60–79 | 24 | 61.25 | 78.75 | 71.04 | 5.83 |
Lower intermediate | <60 | 10 | 40.00 | 55.00 | 48.38 | 4.88 |
Item | Target Emotion | Dom 1 | Dom 2 | Dom 3 | Match % |
---|---|---|---|---|---|
Q23 | dirty | Yes | Yes | Yes | 100 |
Q24 | doubt | Yes | Yes | Yes | 100 |
Q25 | lazy | Yes | Yes | Yes | 100 |
Q26 | defeat | Yes | Yes | Yes | 100 |
Q27 | obsess | Yes | Yes | Yes | 100 |
Q28 | bewilder | Yes | Yes | Yes | 100 |
Q29 | dismay | Yes | Yes | Yes | 100 |
Q30 | dizzy | Yes | Yes | Yes | 100 |
Q31 | inferior | Yes | Yes | Yes | 100 |
Q32 | daze | Yes | Yes | No | 66.66 |
Q33 | phony | Yes | Yes | No | 66.66 |
Q34 | drowsy | Yes | Yes | Yes | 100 |
Q35 | vindictive | Yes | Yes | Yes | 100 |
Q36 | luck | Yes | Yes | Yes | 100 |
Q37 | support | Yes | Yes | No | 66.66 |
Q38 | secret | Yes | Yes | Yes | 100 |
Q39 | relieve | Yes | Yes | Yes | 100 |
Q40 | sympathy | Yes | Yes | Yes | 100 |
Q41 | nostalgia | Yes | Yes | No | 66.66 |
Q42 | trustworthy | Yes | Yes | Yes | 100 |
Q43 | sociable | Yes | Yes | No | 66.66 |
Q44 | bashful | Yes | Yes | Yes | 100 |
Q45 | homy | Yes | Yes | Yes | 100 |
Q46 | hate | Yes | Yes | No | 66.66 |
Q47 | responsible | Yes | Yes | Yes | 100 |
Q48 | accuse | Yes | Yes | No | 66.66 |
Q49 | hostile | Yes | Yes | Yes | 100 |
Q50 | curse | Yes | Yes | Yes | 100 |
Q51 | greed | Yes | Yes | No | 66.66 |
Q52 | insult | Yes | Yes | Yes | 100 |
Q53 | intimidate | Yes | Yes | No | 66.66 |
Q54 | frantic | Yes | Yes | Yes | 100 |
Q55 | horrified | Yes | Yes | Yes | 100 |
Q56 | reckless | Yes | Yes | No | 66.66 |
Q57 | squirm | Yes | Yes | No | 66.66 |
Q58 | foreboding | Yes | Yes | Yes | 100 |
Q59 | grumpy | Yes | Yes | No | 66.66 |
Q60 | disbelief | Yes | Yes | Yes | 100 |
Q61 | famished | Yes | Yes | No | 66.66 |
Q62 | silly | Yes | Yes | Yes | 100 |
Q63 | adventure | Yes | Yes | Yes | 100 |
Q64 | curious | Yes | Yes | Yes | 100 |
Q65 | defence | Yes | Yes | Yes | 100 |
Q66 | impulse | Yes | Yes | Yes | 100 |
Q67 | gratitude | Yes | Yes | Yes | 100 |
Q68 | enchant | Yes | Yes | Yes | 100 |
Q69 | flirt | Yes | Yes | Yes | 100 |
Q70 | tickle | Yes | Yes | Yes | 100 |
Q71 | hilarious | Yes | Yes | No | 66.66 |
Q72 | inquisitive | Yes | Yes | No | 66.66 |
Q73 | euphoric | Yes | Yes | Yes | 100 |
Item | Chisq | df | p-Value | Outfit MSQ | Infit MSQ | Outfit t | Infit t | Discrim |
---|---|---|---|---|---|---|---|---|
Q23 | 152.294 | 155 | 0.546 | 0.976 | 0.974 | −0.239 | −0.350 | 0.218 |
Q24 | 171.465 | 155 | 0.173 | 1.099 | 1.060 | 1.262 | 0.966 | 0.021 |
Q25 | 157.887 | 155 | 0.420 | 1.012 | 0.996 | 0.159 | −0.031 | 0.149 |
Q26 | 138.577 | 155 | 0.824 | 0.888 | 0.899 | −2.401 | −2.458 | 0.447 |
Q27 | 144.565 | 155 | 0.715 | 0.927 | 0.972 | −0.862 | −0.402 | 0.246 |
Q28 | 151.313 | 155 | 0.569 | 0.970 | 0.978 | −0.579 | −0.491 | 0.237 |
Q29 | 145.396 | 155 | 0.698 | 0.932 | 0.941 | −0.896 | −0.974 | 0.333 |
Q30 | 161.952 | 155 | 0.335 | 1.038 | 1.026 | 0.579 | 0.470 | 0.097 |
Q35 | 145.824 | 155 | 0.689 | 0.935 | 0.944 | −1.316 | −1.320 | 0.334 |
Q39 | 162.260 | 155 | 0.329 | 1.040 | 1.028 | 0.821 | 0.659 | 0.100 |
Q41 | 167.880 | 155 | 0.227 | 1.076 | 1.060 | 1.271 | 1.202 | 0.040 |
Q42 | 142.110 | 155 | 0.763 | 0.911 | 0.929 | −1.091 | −1.080 | 0.356 |
Q44 | 162.648 | 155 | 0.321 | 1.043 | 1.047 | 0.908 | 1.126 | 0.086 |
Q45 | 166.265 | 155 | 0.254 | 1.066 | 1.068 | 0.974 | 1.218 | 0.022 |
Q47 | 155.877 | 155 | 0.465 | 0.999 | 0.995 | 0.004 | −0.101 | 0.200 |
Q54 | 147.651 | 155 | 0.650 | 0.946 | 0.969 | −0.636 | −0.459 | 0.238 |
Q55 | 152.778 | 155 | 0.535 | 0.979 | 0.983 | −0.330 | −0.338 | 0.234 |
Q58 | 168.624 | 155 | 0.215 | 1.081 | 1.053 | 1.014 | 0.833 | 0.051 |
Q59 | 155.565 | 155 | 0.472 | 0.997 | 0.992 | −0.010 | −0.098 | 0.175 |
Q60 | 160.045 | 155 | 0.374 | 1.026 | 1.024 | 0.297 | 0.336 | 0.093 |
Q61 | 149.983 | 155 | 0.599 | 0.961 | 0.976 | −0.311 | −0.235 | 0.196 |
Q63 | 146.094 | 155 | 0.684 | 0.937 | 0.947 | −1.357 | −1.290 | 0.325 |
Q64 | 135.482 | 155 | 0.869 | 0.868 | 0.934 | −1.053 | −0.636 | 0.291 |
Q67 | 155.872 | 155 | 0.465 | 0.999 | 1.014 | 0.005 | 0.312 | 0.145 |
Q69 | 153.436 | 155 | 0.520 | 0.984 | 0.979 | −0.121 | −0.221 | 0.181 |
Q71 | 171.739 | 155 | 0.170 | 1.101 | 1.074 | 1.705 | 1.513 | -0.012 |
Q73 | 151.808 | 155 | 0.557 | 0.973 | 0.961 | −0.472 | −0.826 | 0.315 |
Item | z-Statistics | p-Value |
---|---|---|
Q23 | 1.056 | 0.291 |
Q24 | 0.865 | 0.387 |
Q25 | 0.945 | 0.344 |
Q26 | −1.987 | 0.047 |
Q27 | −1.072 | 0.284 |
Q28 | −0.494 | 0.621 |
Q29 | −1.050 | 0.294 |
Q30 | −0.262 | 0.793 |
Q35 | −1.679 | 0.093 |
Q39 | 0.643 | 0.520 |
Q41 | 1.118 | 0.264 |
Q42 | −1.590 | 0.112 |
Q44 | 1.858 | 0.063 |
Q45 | 1.683 | 0.092 |
Q47 | −0.098 | 0.922 |
Q54 | 0.521 | 0.602 |
Q55 | −0.906 | 0.365 |
Q58 | 0.695 | 0.487 |
Q59 | 0.755 | 0.450 |
Q60 | 1.599 | 0.110 |
Q61 | −1.073 | 0.283 |
Q63 | −1.589 | 0.112 |
Q64 | −1.017 | 0.309 |
Q67 | 0.601 | 0.548 |
Q69 | 0.305 | 0.760 |
Q71 | 1.939 | 0.052 |
Item | Chisq | df | p-Value | Outfit MSQ | Infit MSQ | Outfit t | Infit t | Discrim |
Q23 | 161.713 | 155 | 0.340 | 1.037 | 1.033 | 0.462 | 0.435 | 0.133 |
Q24 | 149.850 | 155 | 0.602 | 0.961 | 0.978 | −0.386 | −0.205 | 0.255 |
Q25 | 163.957 | 155 | 0.296 | 1.051 | 1.050 | 0.505 | 0.498 | 0.037 |
Q26 | 155.784 | 155 | 0.467 | 0.999 | 0.999 | 0.028 | 0.032 | 0.192 |
Q27 | 161.377 | 155 | 0.346 | 1.034 | 1.013 | 0.410 | 0.175 | 0.133 |
Q28 | 139.445 | 155 | 0.810 | 0.894 | 0.914 | −0.878 | −0.746 | 0.349 |
Q29 | 132.924 | 155 | 0.900 | 0.852 | 0.896 | −0.940 | −0.723 | 0.385 |
Q30 | 152.918 | 155 | 0.532 | 0.980 | 0.982 | −0.177 | −0.162 | 0.257 |
Q35 | 159.021 | 155 | 0.396 | 1.019 | 1.018 | 0.226 | 0.213 | 0.166 |
Q39 | 151.046 | 155 | 0.575 | 0.968 | 0.980 | −0.313 | −0.182 | 0.231 |
Q41 | 163.181 | 155 | 0.311 | 1.046 | 1.037 | 0.522 | 0.430 | 0.134 |
Q42 | 156.556 | 155 | 0.450 | 1.004 | 1.001 | 0.070 | 0.042 | 0.220 |
Q44 | 142.253 | 155 | 0.760 | 0.912 | 0.927 | −0.891 | −0.758 | 0.337 |
Q45 | 183.286 | 155 | 0.060 | 1.175 | 1.096 | 1.566 | 0.945 | 0.021 |
Q47 | 139.361 | 155 | 0.811 | 0.893 | 0.899 | −1.185 | −1.130 | 0.391 |
Q54 | 142.180 | 155 | 0.761 | 0.911 | 0.907 | −0.853 | −0.935 | 0.379 |
Q55 | 147.801 | 155 | 0.647 | 0.947 | 0.948 | −0.560 | −0.558 | 0.312 |
Q58 | 153.714 | 155 | 0.514 | 0.985 | 0.993 | −0.127 | −0.044 | 0.210 |
Q59 | 148.962 | 155 | 0.622 | 0.955 | 0.967 | −0.379 | −0.278 | 0.268 |
Q60 | 140.637 | 155 | 0.789 | 0.902 | 0.915 | −1.115 | −0.978 | 0.348 |
Q61 | 149.637 | 155 | 0.606 | 0.959 | 0.960 | −0.369 | −0.360 | 0.243 |
Q63 | 149.346 | 155 | 0.613 | 0.957 | 0.957 | −0.447 | −0.452 | 0.274 |
Q64 | 146.730 | 155 | 0.670 | 0.941 | 0.937 | −0.617 | −0.652 | 0.328 |
Q67 | 150.628 | 155 | 0.584 | 0.966 | 0.951 | −0.199 | −0.341 | 0.274 |
Q69 | 151.652 | 155 | 0.561 | 0.972 | 0.964 | −0.288 | −0.385 | 0.239 |
Q71 | 158.685 | 155 | 0.403 | 1.017 | 1.001 | 0.195 | 0.039 | 0.210 |
Q73 | 147.618 | 155 | 0.651 | 0.946 | 0.963 | −0.560 | −0.375 | 0.285 |
Items | z-Statistic | p-Value |
---|---|---|
Q23.c1 | 0.567 | 0.570 |
Q23.c2 | 0.467 | 0.640 |
Q24.c1 | −0.527 | 0.598 |
Q24.c2 | −0.474 | 0.635 |
Q25.c1 | 1.810 | 0.070 |
Q25.c2 | 1.616 | 0.106 |
Q26.c1 | −0.997 | 0.319 |
Q26.c2 | −0.416 | 0.677 |
Q27.c1 | 0.257 | 0.797 |
Q27.c2 | −0.775 | 0.439 |
Q28.c1 | −0.978 | 0.328 |
Q28.c2 | −0.695 | 0.487 |
Q29.c1 | 0.029 | 0.977 |
Q29.c2 | −0.465 | 0.642 |
Q30.c1 | 2.294 | 0.022 |
Q30.c2 | 1.845 | 0.065 |
Q35.c1 | 0.309 | 0.757 |
Q35.c2 | 1.409 | 0.159 |
Q39.c1 | −1.054 | 0.292 |
Q39.c2 | −0.828 | 0.408 |
Q41.c1 | 1.931 | 0.054 |
Q41.c2 | 2.202 | 0.028 |
Q42.c1 | 0.292 | 0.770 |
Q42.c2 | 0.626 | 0.531 |
Q44.c1 | −0.969 | 0.333 |
Q44.c2 | −1.025 | 0.305 |
Q45.c1 | −0.010 | 0.992 |
Q45.c2 | 0.621 | 0.534 |
Q47.c1 | −0.378 | 0.705 |
Q47.c2 | −0.855 | 0.392 |
Q54.c1 | 0.740 | 0.459 |
Q54.c2 | −0.089 | 0.929 |
Q55.c1 | −0.684 | 0.494 |
Q55.c2 | 0.163 | 0.87 |
Q58.c1 | 1.137 | 0.256 |
Q58.c2 | 1.041 | 0.298 |
Q59.c1 | −0.113 | 0.910 |
Q59.c2 | −0.312 | 0.755 |
Q60.c1 | −0.784 | 0.433 |
Q60.c2 | −1.255 | 0.209 |
Q61.c1 | 0.553 | 0.58 |
Q61.c2 | −0.124 | 0.901 |
Q63.c1 | 1.047 | 0.295 |
Q63.c2 | 0.467 | 0.641 |
Q64.c1 | −0.267 | 0.790 |
Q64.c2 | −0.647 | 0.517 |
Q67.c1 | −0.251 | 0.802 |
Q67.c2 | −0.093 | 0.926 |
Q69.c1 | −0.217 | 0.828 |
Q69.c2 | −0.301 | 0.763 |
Q71.c1 | 0.701 | 0.483 |
Q71.c2 | 0.457 | 0.648 |
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Chee, A.J.E.; Szabo, C.Z.; Ambrose, S. Measuring Emotion Recognition Through Language: The Development and Validation of an English Productive Emotion Vocabulary Size Test. Languages 2025, 10, 204. https://doi.org/10.3390/languages10090204
Chee AJE, Szabo CZ, Ambrose S. Measuring Emotion Recognition Through Language: The Development and Validation of an English Productive Emotion Vocabulary Size Test. Languages. 2025; 10(9):204. https://doi.org/10.3390/languages10090204
Chicago/Turabian StyleChee, Allen Jie Ein, Csaba Zoltan Szabo, and Sharimila Ambrose. 2025. "Measuring Emotion Recognition Through Language: The Development and Validation of an English Productive Emotion Vocabulary Size Test" Languages 10, no. 9: 204. https://doi.org/10.3390/languages10090204
APA StyleChee, A. J. E., Szabo, C. Z., & Ambrose, S. (2025). Measuring Emotion Recognition Through Language: The Development and Validation of an English Productive Emotion Vocabulary Size Test. Languages, 10(9), 204. https://doi.org/10.3390/languages10090204