Sentence
stringlengths 11
579
| Intent_label
stringclasses 6
values |
---|---|
Poco Bueno was a American Quarter Horse stallion foaled April 10, 1944. | pets |
Formal breeds often considered to be of the pit bull-type include the American Pit Bull Terrier, American Staffordshire Terrier, American Bully, and Staffordshire Bull Terrier. | pets |
The foundation breeding for what became the modern Olde English Bulldogge consisted of half English Bulldog, one-sixth Bullmastiff, one-sixth American Pit Bull Terrier and one sixth American Bulldog. | pets |
The Bull and Terrier is an extinct type of dog that was the progenitor of the Bull Terrier, Miniature Bull Terrier, Staffordshire Bull Terrier, American Pit Bull Terrier and American Staffordshire Terrier. | pets |
The Bull and Terrier was a cross between the Old English Bulldog and a variety of Old English Terriers. | pets |
Heaven Sent Brandy is the world's smallest dog by length, measuring 15.2 cm (6 in), according to the Guinness Book of World Records.Brandy was bred by Marlene and Matthew Ritzenthaler. | pets |
Her sire was an AKC registered Chihuahua, Sevenbark Devil's Gold, a UKC Best in Show winner and AKC Champion producer. | pets |
Her dam is Creel's Carmelita, a pointed AKC Chihuahua and AKC Champion producer. | pets |
Heaven Sent Brandy faced a challenge from Tom Thumb, a Jack Russell terrier-Chihuahua mix puppy. | pets |
Luckystar of Ware, was a male English Cocker Spaniel who won the title of Best In Show at Cruft's in both 1930 and 1931. | pets |
He was the first dog to retain the title, and the first of three dogs owned by H.S.Lloyd to win the Cruft's Best in Show title, including Tracey Witch of Ware, the granddaughter of Luckystar. | pets |
GCH Roundtown Mercedes of Maryscot (2 April 2005 - ), also known as Sadie, was a Scottish terrier from Mackinac Island in the U.S.state of Michigan. | pets |
The English Cocker is closer to the working-dog form of the Field Spaniel and the English Springer Spaniel. | pets |
Outside the US, the breed is usually known simply as the Cocker Spaniel, as is the American Cocker Spaniel within the US. | pets |
Tracey Witch of Ware, was a female English Cocker Spaniel who won the title of Best In Show at Cruft's in both 1948 and 1950. | pets |
She was a descendant of a previous Cruft's Best in Show winner, Luckystar of Ware. | pets |
Ferry v.Rauhfelsen of Giralda (9 January 1937 – 1943) also known as Ferry, a Doberman Pinscher, best known for being Best in Show at the Westminster Kennel Club Dog Show in both 1939 while owned by Geraldine Rockefeller Dodge. | pets |
He was the grandfather of two-time champion, Rancho Dobe's Storm. | pets |
Exquisite Model of Ware (born 9 July 1935) was a female English Cocker Spaniel who won the title of Best in Show at Crufts in both 1938 and 1939. | pets |
She was the most successful female English Cocker Spaniel in Great Britain prior to the Second World War. | pets |
Nemo A534 was a German Shepherd dog who served in the United States Air Force during the Vietnam War. | pets |
Salilyn's Condor (born October 5, 1987) also known as Robert, was an English Springer Spaniel, best known for being Best in Show at the Westminster Kennel Club Dog Show in Feb.1993. | pets |
He was the first Westminster winner to sire another, when his daughter Ch.Salilyn 'N Erin's Shameless won Best in Show in 2000. | pets |
Lucky Diamond (c.1997 – June 5, 2012) was a female Maltese owned by Wendy Diamond, media personality and publisher of Magazine. | pets |
Lucky is the current Guinness World Record holder for most photographed dog with celebrities. | pets |
GCH Banana Joe V Tani Kazari, also known as Joe, is a year old toy Affenpinscher that won Best In Show at the 137th Westminster Kennel Club Dog Show on February 12, 2013. | pets |
The Alapaha Blue Blood Bulldog is a type of domestic dog. | pets |
Briergate Bright Beauty was an Airedale Terrier and the best in show winner at the 1919 Westminster Kennel Club Dog Show. | pets |
Bright Beauty was an imported dog. | pets |
Most thought that best in show would be awarded to Haymarket Faultless. | pets |
Horand von Grafrath (January 1, 1895 - after 1899) (formerly Hektor Linksrhein) was the first German Shepherd Dog and the genetic basis for modern German Shepherds. | pets |
Ballyregan Bob (May 1983- 3 April 1994) was a racing greyhound who, along with Mick the Miller and Scurlogue Champ, is one of the most revered racing hounds in British hound racing. | pets |
Ballyregan Bob was a brindle dog and was whelped in May 1983. | pets |
Salilyn 'N Erin's Shameless (born 1995) also known as Samantha, was an English Springer Spaniel, best known for being Best in Show at the Westminster Kennel Club Dog Show in February 2000. | pets |
Her sire was Ch.Salilyn's Condor, Best in Show winner at Westminster in 1993, Samantha became the first offspring of a previous Best in Show winner at Westminster to take the same prize. | pets |
Willie Bean Roscoe P Coltrane is the name of a yellow labrador retriever who has been the focus of several political satires during 2008, and is also the first dog who ran for mayor of Fairhope, Alabama. | pets |
Tress Turner is the owner and director of the Willie Bean for Mayor and Willie Bean for President campaigns. | pets |
he term rat terrier refers to the American Rat Terrier and its descendants, as well as other terrier breeds used as ratters | pets |
American Hairless Terrier and Brazilian Terrier and Chilean Fox Terrier and Decker Rat Terrier and Manchester Terrier and Plummer Terrier and the Rat Terrier. | pets |
Teddy Roosevelt Terrier and Tenterfield Terrier and the Jack Russel Terrier. | pets |
Ratonero Bodeguero Andaluz or Andalusian Ratter and the Ratonero Mallorquín or Majorca Ratter and the Ratonero Murciano or Murcian Ratter and the Ratonero Valenciano or Valencian Ratter and the Ratonero Vasco or Basque Ratter. | pets |
Pinschers - excluding the large Doberman Pinscher used as a service dog and were originally developed to be rat catchers for example Affenpinscher and Austrian Pinscher. | pets |
The German Pinscher and Harlequin Pinscher and Miniature Pinscher and Silky Pinscher and Swiss Pinscher and Brussels Griffon and Dutch Smoushond and Dutch Ratter and the Prague Ratter. | pets |
The Russo-European Laika (Russko-Evropeĭskaya Láĭka) is the name of a breed of hunting dog that originated in the forested region of northern Europe and Russia. | pets |
The Russo-European Laika is one of several breeds developed from landrace Laika dogs of Spitz type. | pets |
The Russo-European Laika itself dates to a breeding program begun in 1944 by E.I.Shereshevsky | pets |
The Shiba Inu Puppy Cam is a website that features Shiba Inu dogs. | pets |
They were subsequently developed into two modern breeds: the Australian Cattle Dog and the Australian Stumpy Tail Cattle Dog. | pets |
Cocker Spaniels are dogs belonging to two breeds of the spaniel dog type: the American Cocker Spaniel and the English Cocker Spaniel, both of which are commonly called simply Cocker Spaniel in their countries of origin. | pets |
The East Siberian Laika (Vostotchno-Sibirskaia Laika) is a Russian breed of dog of spitz type, a hunting dog originating in parts of Siberia east of the Yenisei River. | pets |
Ace the Wonder Dog was a German Shepherd Dog that acted in several films and film serials from 1938 to 1946. | pets |
He is considered by many critics an attempt by RKO Pictures to cash in on the success of Warner Bros.' canine sensation, Rin Tin Tin. | pets |
The Bull Terrier, founded by James Hinks of Birmingham, England, the Stafford, the American Staffordshire Terrier and American Pit Bull Terrier all trace back to the bull-type terrier breeds with the common component being the Bulldog. | pets |
Rin Tin Tin was responsible for greatly increasing the popularity of German Shepherd dogs as family pets. | pets |
Scurlogue Champ is a famous racing greyhound from the 1980s. | pets |
Rocky Top's Sundance Kid was a Bull Terrier who is best known for being the 2006 Best In Show winner at the Westminster Dog Showhandled by Kathy Kirk PHA. | pets |
He is the first Colored Bull Terrier to win Best in Show at Westminster, with the only other victory for his breed going to a White Bull Terrier in 1918. | pets |
He is the most successful Colored Bull Terrier Show Dog of all time. | pets |
Miss Beazley (October 28, 2004 to May 17, 2014) was a Scottish Terrier which belonged to former U.S.President George W.Bush and former U.S.First Lady Laura Bush. | pets |
Miss Beazley father, a Scottish terrier named Clinton, was born on November 7, 2000. | pets |
The Cane da Presa Meridionale (Italian for "Southern Catch Dog") is the old, functional working variant of the Neapolitan Mastiff. | pets |
Before 1965 there was no distinction between Neapolitan Mastiff, Cane da Presa and Cane Corso, these were simply three different names for the same dog. | pets |
The modern Neapolitan Mastiff is unlike the original, a dog created by dog shows. | pets |
Boo Boo is the world's smallest dog by height at 9.65cm, according to the Guinness Book of World Records. | pets |
Boo Boo faces competition from Milly, another Chihuahua and Beyonce, a Dachshund and Chihuahua mix | pets |
Boo Boo weathered a challenge from Scooter, a Maltese | pets |
The Alaskan Klee Kai is a spitz type breed of dog, developed in the late 20th century as a companion sized dog resembling the larger Alaskan Malamute. | pets |
The German Spitz Mittel is a breed, of the German spitz type.It is a companion dog originating in Germany. | pets |
Jet of Iada a.k.a.Jet (21 July 1942 – 18 October 1949) was a German Shepherd Dog, who assisted in the rescue of 150 people trapped under blitzed buildings. | pets |
The Border Collie was not used to create the Australian Shepherd. | pets |
The Australian Shepherd most likely is the descendant of Carea Leonés, Pyrenean Shepherd and Old German Herding dogs that were brought over by shepherds. | pets |
Vbos the Kentuckian (30 August 2001 to 3 June 2013), also known as Jet, was a Flat Coated Retriever and show dog bred and handled by Jim Irvine who won Best in Show at Crufts in 2011. | pets |
Giant George was a blue Great Dane previously recognised as the world's tallest living dog, and the tallest dog ever by Guinness World Records. | pets |
They are similar to other arctic breeds and spitz breeds, such as the Greenland Dog, Canadian Eskimo Dog, the Siberian Husky, and the Samoyed. | pets |
Izzy the Frenchie is a French Bulldog living in East Hampton, New York. | pets |
Signal Circuit of Halleston was a Wire Fox Terrier and winner of the 1926 Westminster Kennel Club Dog Show. | pets |
The show was judged by Wintrhop Rutherford, the owner of Conejo Wycollar Boy, a Fox Terrier that took best in show from 1907 to 1909. | pets |
Snuppy was an Afghan hound, the first dog clone. | pets |
Buster was a dog belonging to Roy Hattersley, a British politician and former Deputy Leader of the Labour Party. | pets |
Buster was a mongrel, as his father was a German Shepherd, and his mother a Staffordshire Bull Terrier. | pets |
Rajah the German Shepherd Dog (billed as "Methven's Wonder Dog") was a working and performance dog in New Zealand during the 1930s. | pets |
Rajah was the first, although unofficial, police dog in New Zealand and was nominated as a replacement for Rin Tin Tin during his time in Methven. | pets |
Jafrak Philippe Olivier, also known as Philip, was a male Giant Schnauzer who won the title of Best In Show at Crufts in 2008. | pets |
Fred Basset (born 4 October 2004) is a greyhound dog which was owned and raced by Australian comedy duo Hamish & Andy. | pets |
Canigou Cambrai, also known as Albert, an English Cocker Spaniel, is the most recent of his breed to win best-in-show at Crufts in 1996, the seventh occasion it was awarded to a Cocker Spaniel and the first time for forty six years. | pets |
For a while he was the most successful black male Cocker Spaniel of all time in the UK, and his descendants continue to be multi-show winning champions around the world. | pets |
The West Siberian Laika or WSL, is a breed of hunting dog and a breed of spitz type. | pets |
Russian publications indicate that the term West Siberian Laika loosely applied to hunting dogs originating with the Mansi and Khanty people in Ural and West Siberia. | pets |
In early 1960 many hunters in Ural still preferred the term Mansi Laika. | pets |
Any hunting Laika is a bark pointer, pointing at animal of interest by barking and staying with the animal. | pets |
Luke the Dog (1913-1926) was a Staffordshire Bull Terrier that performed as a recurring character in American silent comedy shorts between 1914 and 1920. | pets |
My Own Brucie (May 4, 193 to June 9, 1943) was a male American Cocker Spaniel who was the Best in Show at the Westminster Kennel Club Dog Show in 1940 and 1941. | pets |
The Heeler is a naturally bobtailed or tailless, medium-sized cattle dog similar and/or related to the Australian Cattle Dog | pets |
The Australian Stumpy Tail Cattle Dog was developed in Australia to herd cattle, and descends from crosses between European herding dogs and the Australian dingo. | pets |
The American Staffordshire Terrier, also known as the Amstaff, is a medium-sized, short-coated American dog breed. | pets |
The American Staffordshire Terrier should not be confused with the Staffordshire Bull Terrier | pets |
Lupo is an English Cocker Spaniel owned by Prince William, Duke of Cambridge, and Catherine, Duchess of Cambridge. | pets |
The puppy was created using a cell from an ear from an adult Afghan hound and involved 123 surrogate mothers, of which only two produced pups. | pets |
Treo (c.2001–2015) was a black Labrador Retriever and English Springer Spaniel crossbreed and a retired Arms and Explosives Search dog with the Royal Army Veterinary Corps. | pets |
Rex (December 16, 1984 to August 31, 1998) was a Cavalier King Charles Spaniel owned by Ronald Reagan and his wife Nancy. | pets |
Large language models (i.e., GPT-4) for Zero-shot Intent Classification in English (En), Japanese (Jp), Swahili (Sw) & Urdu (Ur)
Please find additional data files specific to each language at this GitHub repo https://github.com/jatuhurrra/LLM-for-Intent-Classification/tree/main/data
This project explores the potential of deploying large language models (LLMs) such as GPT-4 for zero-shot intent recognition
. We demonstrate that LLMs can perform intent classification through prompting. This aligns with the ongoing trend of exploiting the power of in-context learning
in LLMs without the need for extensive fine-tuning.
To test our hypothesis, we introduce a dataset to explore and analyze zero-shot intent classification further, providing a valuable resource for the research community.
The dataset consists of 8,453 sentences across 6 distinct intent classes: pet, food, job, hobby, sport, drink.
🤖 🤖 Human-Robot Interaction (HRI)
We envision a scenario in which the human and the robot engage in discussion over a wide range of topics. For example:
From the above illustration, we can deduce that the phrase Cochinita Pibil for sure!
is related to the intent
called food
because the human is answering the question what's your favorite cuisine?
🗂️ 🗂️ The Dataset
In this dataset, we set out to defer from the conventional norm in which intent classification datasets are constructed. For each sentence in the dataset, only a label identifying the intent label to which the sentence belongs is included.
No slot labels are added to the token inside each sentence. We aim to investigate if LLMs, such as Llama-2, GPT-4, Claude 3, etc., can correctly distinguish sentences that belong to different intent categories with in context learning, i.e., prompting. We do not conduct fine-tuning on this dataset. Our target domain is human-robot interaction (HRI).
We considered the following intent categories: pet, food, job, hobby, sport, and drink. This repository has one file corresponding to each of these categories.
The data files are provided in two categories.
Category 1: HRI_intent_1_pet.csv, HRI_intent_2_food.csv, HRI_intent_3_job.csv, HRI_intent_4_hobby.csv, HRI_intent_5_sport.csv, HRI_intent_6_drink.csv
The file named HRI_TOTAL_data.csv contains all of the data found in the 6 files HRI_intent_*.csv
Category 2:
On top of that, we have provided more specific data files corresponding to four languages
; English (En), Japanese (Jp), Swahili (Sw), Urdu (Ur), and six intent classes
such as IntentRecognitionData_En_Intent_Sports.csv
Feel free to use whichever data files you are interested in, from the ./data/
folder at the GitHub repo https://github.com/jatuhurrra/LLM-for-Intent-Classification/tree/main/data.
💫 💫 The Data format
We have provided the data in tabular format with two columns. Column 1 contains the Sentence while column 2 contains the Intent_label.
Sentence | Intent_label |
---|---|
Tracey Witch of Ware, was a female English Cocker Spaniel who won the title of Best In Show at Cruft's in both 1948 and 1950. | pet |
A teller is a person who counts the votes in an election, vote, referendum or poll. | job |
Kya zan hinga is a grass noodle in chicken consommé dish in Burmese cuisine and it's made with mushrooms, bean, curd skin , lily stems, shrimp, garlic, pepper and sometimes fish balls. | food |
People who deliberately tan their skin by exposure to the sun engage in a passive recreational activity of sun bathing. | hobby |
Judo influenced other combat styles such as close quarters combat, mixed martial arts, shoot wrestling and submission wrestling. | sport |
Hibiscus tea is a herbal tea made as an infusion from crimson or deep magenta colored calyces of the roselle flower. | drink |
🦾🦾 The Prompts are shown below.
Here are the prompts used in the experiments.
1. Zero-shot Standard
This is our standard prompt under zero-shot settings.
We want to perform an intent classification task.
That is, given a sentence, our goal is to predict to which intent class the sentence belongs.
We have 7 intent classes namely: pet, food, job, hobby, sport, drink, other.
Each sentence can only belong to one intent class.
Do not include explanations for the answer.
Print out only the intent class per sentence.
Tell me how many predictions you make in total.
2. Few-shot Chain-of-Thought (Wei et al.)
This is the few-shot prompting introduced in the paper Chain-of-thought prompting elicits reasoning in large language models.
We want to perform an intent classification task.
That is, given a sentence, our goal is to predict to which intent class the sentence belongs.
We have 7 intent classes namely: pet, food, job, hobby, sport, drink, other.
Each sentence can only belong to one intent class.
The intent classes are described as follows:
pet: this means the sentence contains pets and is talking about pets
food: this means the sentence contains foods and is talking about foods
job: this means the sentence contains jobs and is talking about jobs
hobby: this means the sentence contains hobbies and is talking about hobbies
sport: this means the sentence contains sports and is talking about sports
drink: this means the sentence contains drinks and is talking about drinks
Other: the sentence does not belong to any of the above intent classes
If the sentence belongs to none of the intent classes, that sentence is assigned the intent class "other".
Classify ALL the sentences in column 1 into one of the 7 intent classes namely: pet, food, job, hobby, sport, drink, other.
Do not include explanations for the answer.
Print out only the intent class per sentence.
Tell me how many predictions you make in total.
3. Zero-shot Chain-of-Thought (Kojima et al.)
The paper introduced this technique Large language models are zero-shot reasoners.
We want to perform an intent classification task.
That is, given a sentence, our goal is to predict to which intent class the sentence belongs.
We have 7 intent classes namely: pet, food, job, hobby, sport, drink, other.
Each sentence can only belong to one intent class.
Let’s think step by step.
Print out only the intent class per sentence and do not include explanations for the answer.
Tell me how many predictions you make in total.
4&5. ExpertPrompting
Our study uses two ExpertPrompting methods: Expert-General and Expert-Specific. ExpertPrompting was introduced in the paper Expertprompting: Instructing large language models to be distinguished experts.
[4. Expert-General]
You are an expert that helps people accomplish sophisticated tasks.
Please follow the provided instructions and answer the question accordingly.
We want to perform an intent classification task.
That is, given a sentence, our goal is to predict to which intent class the sentence belongs.
We have 7 intent classes namely: pet, food, job, hobby, sport, drink, other.
Each sentence can only belong to one intent class.
If the sentence belongs to none of the intent classes, that sentence is assigned the intent class "other".
Classify ALL the sentences in column 1 into one of the 7 intent classes namely: pet, food, job, hobby, sport, drink, other.
Do not include explanations for the answer.
Each sentence can only belong to one intent class, so carefully analyze the provided information to determine the most accurate and appropriate response.
Print out only the intent class per sentence.
Tell me how many predictions you make in total.
Print out the list of answers for downloading.
And...
[5. Expert-Specific]
As a Social AI Specialist designing a conversational AI for a social robot in a coffee shop setting, analyze user queries to categorize their intent
into one of seven categories: pet, food, job, hobby, sport, drink, or other.
Consider the user's query itself, the casual social context, sentence structure (open-ended vs. specific), and any social cues (formality, emojis) to
identify the main topic (e.g., "hey, what are fun puppy tricks?" classified as "pet").
Utilize non-verbal cues (if applicable) and past interactions (if any) for a more nuanced understanding.
Classify any queries not fitting the predefined categories as "other."
Classify ALL the sentences in column 1 into one of the 7 intent classes namely: pet, food, job, hobby, sport, drink, other.
Do not include explanations for the answer.
Each sentence can only belong to one intent class, so carefully analyze the provided information to determine the most accurate and appropriate response.
Print out only the intent class per sentence.
Tell me how many predictions you make in total.
Print out the list of answers for downloading.
6. Multi-Persona
Introduced in the paper Unleashing the emergent cognitive synergy in large language models: A task-solving agent through multi-persona self-collaboration.
Multi-Persona Prompting for Intent Classification (7 Classes)
Participants:
AI Assistant (You): A large language model with access to a vast amount of text data and capable of understanding natural language.
Topic Classifier: An NLP specialist focused on identifying the main subject or theme of a user query.
Intent Specialist: An expert in understanding the user's goal or desired outcome within a conversation.
Clarification Specialist: An expert in understanding user intent by asking clarifying questions or analyzing conversational context.
Profiles:
AI Assistant (You): You can process user queries and identify keywords, but may struggle to determine the user's ultimate goal or the specific topic of interest.
Topic Classifier: This persona analyzes the query to identify the main subject matter.
Intent Specialist: This persona analyzes the user's phrasing and context to understand their desired outcome (e.g., information, action, social interaction).
Clarification Specialist: This persona identifies ambiguities and can ask clarifying questions or consider the surrounding conversation to pinpoint user intent.
Task: Analyze the following user query and classify its intent into one of the following categories:
Pet: User query relates to pets (e.g., care, training, adoption)
Food: User query relates to food (e.g., recipes, recommendations, preferences)
Job: User query relates to jobs (e.g., searching, applications, careers)
Hobby: User query relates to hobbies (e.g., finding new hobbies, discussing existing hobbies)
Sport: User query relates to sports (e.g., following teams, playing sports, rules)
Drink: User query relates to drinks (e.g., recipes, recommendations, preferences)
Other: User query doesn't fit neatly into the predefined categories.
Collaboration:
AI Assistant (You): The user asks: "What are some fun tricks I can teach my new puppy?"
Topic Classifier: This query focuses on "puppy" and "tricks," suggesting the topic is pets.
Intent Specialist: The user asks about "teaching tricks," indicating they want information on pet training. Their intent is likely Pet.
Clarification Specialist: While the intent seems clear, we could consider asking, "Are you looking for beginner tricks or more advanced ones?" for further refinement.
AI Assistant (You): Based on the combined analysis, the user's intent is classified as Pet. We can incorporate the suggestion from the Clarification Specialist to tailor the response further.
Final Answer:
"Pet" <<
Explanation:
By collaborating with all four personas, you were able to leverage their expertise and achieve accurate intent classification. The Topic Classifier identified the main subject as pets. The Intent Specialist confirmed the user's goal as seeking information related to pet training. The Clarification Specialist offered an optional step for additional refinement. This multi-faceted approach ensures a robust intent classification system for your dataset.
Note: Remember to adapt the user query and expected intent category throughout your actual application based on your specific dataset.
Each sentence can only belong to one intent class.
Do not include explanations for the answer.
Print out only the intent class per sentence.
Tell me how many predictions you make in total.d
The prompts above facilitated our zero-shot intent classification analysis.
✨✨ Evaluation
We conducted experiments with data sizes per intent class of 200
, 500
, and all data
. Moreover, we used the three models: Gemma
, Claude-3-Opus
, and GPT-4-turbo
.
200 samples | 500 samples | All Data | ||||||||||
---|---|---|---|---|---|---|---|---|---|---|---|---|
En | Jp | Sw | Ur | En | Jp | Sw | Ur | En | Jp | Sw | Ur | |
Gemma | 39 | n/a | n/a | n/a | 44 | n/a | n/a | n/a | 44 | n/a | n/a | n/a |
Claude 3 Opus | 63 | 71 | 55 | 78 | 85 | 84 | 87 | 87 | 94 | 92 | 89 | 86 |
GPT 4 Turbo | 96 | 97 | 97 | 92 | 98 | 99 | 98 | 100 | 75 | 82 | 68 | 74 |
200 samples | 500 samples | All Data | ||||||||||
---|---|---|---|---|---|---|---|---|---|---|---|---|
En | Jp | Sw | Ur | En | Jp | Sw | Ur | En | Jp | Sw | Ur | |
Gemma | 49 | n/a | n/a | n/a | 42 | n/a | n/a | n/a | 38 | n/a | n/a | n/a |
Claude 3 Opus | 99 | 96 | 98 | 98 | 94 | 95 | 98 | 96 | 85 | 80 | 88 | 82 |
GPT 4 Turbo | 98 | 97 | 97 | 99 | 95 | 95 | 98 | 91 | 87 | 92 | 79 | 84 |
200 samples | 500 samples | All Data | ||||||||||
---|---|---|---|---|---|---|---|---|---|---|---|---|
En | Jp | Sw | Ur | En | Jp | Sw | Ur | En | Jp | Sw | Ur | |
Gemma | 65 | n/a | n/a | n/a | 52 | n/a | n/a | n/a | 55 | n/a | n/a | n/a |
Claude 3 Opus | 100 | 100 | 98 | 99 | 100 | 100 | 100 | 98 | 100 | 100 | 96 | 99 |
GPT 4 Turbo | 100 | 100 | 100 | 100 | 100 | 100 | 100 | 100 | 100 | 100 | 100 | 100 |
200 samples | 500 samples | All Data | ||||||||||
---|---|---|---|---|---|---|---|---|---|---|---|---|
En | Jp | Sw | Ur | En | Jp | Sw | Ur | En | Jp | Sw | Ur | |
Gemma | 77 | n/a | n/a | n/a | 61 | n/a | n/a | n/a | 59 | n/a | n/a | n/a |
Claude 3 Opus | 99 | 96 | 99 | 99 | 91 | 96 | 97 | 89 | 94 | 93 | 94 | 96 |
GPT 4 Turbo | 100 | 99 | 100 | 100 | 100 | 93 | 97 | 96 | 85 | 93 | 96 | 98 |
200 samples | 500 samples | All Data | ||||||||||
---|---|---|---|---|---|---|---|---|---|---|---|---|
En | Jp | Sw | Ur | En | Jp | Sw | Ur | En | Jp | Sw | Ur | |
Gemma | 68 | n/a | n/a | n/a | 71 | n/a | n/a | n/a | 48 | n/a | n/a | n/a |
Claude 3 Opus | 99 | 95 | 95 | 96 | 97 | 95 | 94 | 97 | 92 | 93 | 95 | 97 |
GPT 4 Turbo | 98 | 97 | 99 | 99 | 99 | 98 | 96 | 97 | 94 | 96 | 93 | 95 |
200 samples | 500 samples | All Data | ||||||||||
---|---|---|---|---|---|---|---|---|---|---|---|---|
En | Jp | Sw | Ur | En | Jp | Sw | Ur | En | Jp | Sw | Ur | |
Gemma | 76 | n/a | n/a | n/a | 62 | n/a | n/a | n/a | 55 | n/a | n/a | n/a |
Claude 3 Opus | 100 | 97 | 98 | 99 | 100 | 95 | 96 | 99 | 100 | 95 | 96 | 97 |
GPT 4 Turbo | 99 | 97 | 92 | 99 | 99 | 99 | 98 | 91 | 100 | 95 | 97 | 92 |
Usage and License Notices
The data is provided under a CC BY 4.0 license.
To download the dataset, please use:
>>> from datasets import load_dataset
>>> dataset = load_dataset("atamiles/ZeroshotIntentClassification")
Citation
Please cite as follows
@inproceedings{inproceedings,
author = {Atuhurra, Jesse},
year = {2024},
month = {06},
title = {Zero-shot Retrieval of User Intent in Human-Robot Interaction with Large Language Models}
}
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