Datasets:
arg1
stringlengths 1
43
| arg2
stringlengths 1
60
| score
float64 1
1
| wikipedia_primary_page
sequencelengths 0
2
| synset
sequencelengths 0
2
|
---|---|---|---|---|
snowdrop | carpel | 0.999075 | [
"Galanthus"
] | [
"wn.carpel.n.01"
] |
plant | stem | 0.99918 | [
"Plant"
] | [
"wn.plant.n.02",
"wn.stalk.n.02"
] |
soy food | dietary fiber | 0.998896 | [
"Dietary fiber"
] | [] |
hagfish | heart | 0.999295 | [
"Hagfish",
"Heart"
] | [
"wn.hagfish.n.01",
"wn.heart.n.01"
] |
capillary hemangioma | vessel | 0.999185 | [
"Capillary hemangioma"
] | [
"wn.vessel.n.01"
] |
bird | feather | 0.999124 | [
"Bird",
"Feather"
] | [
"wn.bird.n.01",
"wn.feather.n.01"
] |
insect | respiratory system | 0.999071 | [
"Insect",
"Respiratory system"
] | [
"wn.insect.n.01",
"wn.respiratory_system.n.01"
] |
surface | material | 0.999239 | [
"Surface",
"Material"
] | [
"wn.surface.n.01",
"wn.material.n.01"
] |
fungus | flagella | 0.999125 | [
"Fungus"
] | [
"wn.fungus.n.01"
] |
spiny mouse | scale tail | 0.999399 | [
"Spiny mouse",
"Tail"
] | [
"wn.tail.n.01"
] |
mammal | scale tail | 0.999392 | [
"Mammal",
"Tail"
] | [
"wn.mammal.n.01",
"wn.tail.n.01"
] |
vascular plant | tissue | 0.999304 | [
"Vascular plant"
] | [
"wn.vascular_plant.n.01",
"wn.tissue.n.01"
] |
swan | plumage | 0.99929 | [
"Swan",
"Plumage"
] | [
"wn.swan.n.01",
"wn.feather.n.01"
] |
leave | chlorophyll | 0.999231 | [
"Leaf",
"Chlorophyll"
] | [
"wn.leaf.n.01",
"wn.chlorophyll.n.01"
] |
beak echidna | tongue | 0.999363 | [
"Tongue"
] | [
"wn.tongue.n.01"
] |
oryx | sense | 0.998863 | [
"Oryx",
"Sense"
] | [
"wn.oryx.n.01",
"wn.sense.n.03"
] |
food chain | nitrogen | 0.998691 | [
"Food chain",
"Nitrogen"
] | [
"wn.food_chain.n.01",
"wn.nitrogen.n.01"
] |
cnidarian | tentacle | 0.999114 | [
"Tentacle"
] | [
"wn.coelenterate.n.01",
"wn.tentacle.n.02"
] |
cnidarian | cell | 0.999187 | [] | [
"wn.coelenterate.n.01",
"wn.cell.n.02"
] |
tentacle | cell | 0.998625 | [
"Tentacle"
] | [
"wn.tentacle.n.02",
"wn.cell.n.02"
] |
seed | enzyme | 0.998944 | [
"Seed",
"Enzyme"
] | [
"wn.seed.n.01",
"wn.enzyme.n.01"
] |
geranium | flower | 0.999327 | [
"Geranium",
"Flower"
] | [
"wn.geranium.n.01",
"wn.flower.n.01"
] |
bear | coat | 0.999115 | [
"Bear",
"Coat"
] | [
"wn.bear.n.01"
] |
wasp | wing | 0.999061 | [
"Wasp",
"Wing"
] | [
"wn.wasp.n.02",
"wn.wing.n.01"
] |
hippos | and body | 0.999302 | [
"Hippopotamus"
] | [
"wn.hippopotamus.n.01",
"wn.body.n.01"
] |
hippos | skin | 0.998924 | [
"Skin"
] | [
"wn.hippopotamus.n.01",
"wn.hide.n.02"
] |
hippos | leg | 0.999355 | [
"Hippopotamus",
"Leg"
] | [
"wn.hippopotamus.n.01",
"wn.leg.n.01"
] |
human | two nigrae | 0.999102 | [
"Human"
] | [
"wn.homo.n.02"
] |
cheese | protein | 0.99869 | [
"Cheese",
"Protein"
] | [
"wn.cheese.n.01",
"wn.protein.n.01"
] |
cheese | component | 0.998974 | [
"Cheese"
] | [
"wn.cheese.n.01",
"wn.part.n.01"
] |
treehopper | leg | 0.999192 | [
"Treehopper",
"Leg"
] | [
"wn.treehopper.n.01",
"wn.leg.n.02"
] |
arthropod | exoskeleton | 0.999164 | [
"Arthropod",
"Exoskeleton"
] | [
"wn.arthropod.n.01",
"wn.exoskeleton.n.01"
] |
animal | exoskeleton | 0.999266 | [
"Animal",
"Exoskeleton"
] | [
"wn.animal.n.01",
"wn.exoskeleton.n.01"
] |
arthropod | body | 0.999121 | [
"Arthropod"
] | [
"wn.arthropod.n.01",
"wn.body.n.01"
] |
animal | body | 0.999153 | [
"Animal"
] | [
"wn.animal.n.01",
"wn.body.n.01"
] |
arthropod | appendage | 0.999205 | [
"Arthropod",
"Appendage"
] | [
"wn.arthropod.n.01",
"wn.extremity.n.01"
] |
animal | appendage | 0.999235 | [
"Animal",
"Appendage"
] | [
"wn.animal.n.01",
"wn.extremity.n.01"
] |
soil | root | 0.998863 | [
"Soil",
"Root"
] | [
"wn.soil.n.02",
"wn.root.n.01"
] |
beta cell | proinsulin | 0.999196 | [
"Beta cell",
"Proinsulin"
] | [
"wn.beta_cell.n.01"
] |
mangrove | stem | 0.999245 | [
"Mangrove"
] | [
"wn.mangrove.n.01",
"wn.stalk.n.02"
] |
mangrove | leaf | 0.998606 | [
"Mangrove",
"Leaf"
] | [
"wn.mangrove.n.01",
"wn.leaf.n.01"
] |
plant | leaf | 0.999024 | [
"Plant",
"Leaf"
] | [
"wn.plant.n.02",
"wn.leaf.n.01"
] |
mangrove | root | 0.998917 | [
"Mangrove",
"Root"
] | [
"wn.mangrove.n.01",
"wn.root.n.01"
] |
plant | root | 0.999024 | [
"Plant",
"Root"
] | [
"wn.plant.n.02"
] |
basis | hydroxide ion | 0.998817 | [] | [
"wn.base.n.10",
"wn.hydroxide_ion.n.01"
] |
snowfall | ice needle | 0.999035 | [] | [
"wn.snow.n.01",
"wn.ice_crystal.n.01"
] |
white tiger | stripe | 0.999282 | [
"White tiger"
] | [
"wn.stripe.n.05"
] |
food | fatty acid | 0.99914 | [
"Food",
"Fatty acid"
] | [
"wn.food.n.01",
"wn.fatty_acid.n.01"
] |
knee | hip socket | 0.999253 | [
"Knee"
] | [
"wn.knee.n.01",
"wn.hip_socket.n.01"
] |
cacti | flower | 0.999164 | [
"Cactus",
"Flower"
] | [
"wn.cactus.n.01"
] |
tyrannosaurus | brain | 0.999342 | [
"Tyrannosaurus",
"Brain"
] | [
"wn.tyrannosaur.n.01",
"wn.brain.n.01"
] |
liver | metabolizing enzyme | 0.998942 | [
"Liver",
"Enzyme"
] | [
"wn.liver.n.01",
"wn.enzyme.n.01"
] |
fungus | gall | 0.998897 | [
"Fungus",
"Gall"
] | [
"wn.fungus.n.01",
"wn.bile.n.01"
] |
mollie | sperm | 0.998802 | [
"Sperm"
] | [
"wn.mollie.n.01",
"wn.sperm.n.01"
] |
shark | blood | 0.998715 | [
"Shark",
"Blood"
] | [
"wn.shark.n.01",
"wn.blood.n.01"
] |
both the and digestive tract | mucus | 0.999002 | [
"Gastrointestinal tract",
"Mucus"
] | [
"wn.alimentary_canal.n.01",
"wn.mucus.n.01"
] |
tom | bone cell | 0.999185 | [] | [
"wn.turkey_cock.n.01",
"wn.bone_cell.n.01"
] |
medicine | steroid | 0.99905 | [
"Medicine",
"Steroid"
] | [
"wn.medicine.n.02",
"wn.steroid.n.01"
] |
animal | limb | 0.999024 | [
"Animal"
] | [
"wn.animal.n.01",
"wn.limb.n.01"
] |
dicotyledon | leave | 0.998778 | [
"Dicotyledon",
"Leaf"
] | [
"wn.dicot.n.01",
"wn.leaf.n.01"
] |
dicotyledon | vein | 0.999387 | [
"Dicotyledon",
"Vein"
] | [
"wn.dicot.n.01",
"wn.vein.n.03"
] |
leave | vein | 0.999123 | [
"Leaf",
"Vein"
] | [
"wn.leaf.n.01",
"wn.vein.n.03"
] |
almond | alpha - linolenic acid | 0.999105 | [
"Almond",
"Linolenic acid"
] | [
"wn.almond.n.02",
"wn.linolenic_acid.n.01"
] |
cacti | delicate white flower | 0.999332 | [
"Cactus",
"Elaeocarpus bojeri"
] | [
"wn.cactus.n.01"
] |
flower | pollen | 0.998914 | [
"Flower",
"Pollen"
] | [
"wn.flower.n.01",
"wn.pollen.n.01"
] |
flower | seed capsule | 0.999318 | [
"Flower"
] | [
"wn.flower.n.01"
] |
zygote | chromatin | 0.999169 | [
"Zygote",
"Chromatin"
] | [
"wn.zygote.n.01",
"wn.chromatin.n.01"
] |
chicken | feather | 0.999269 | [
"Chicken",
"Feather"
] | [
"wn.chicken.n.01",
"wn.feather.n.01"
] |
organism | tissue | 0.99901 | [
"Organism"
] | [
"wn.organism.n.01",
"wn.tissue.n.01"
] |
dandelion | flower | 0.999403 | [
"Taraxacum",
"Flower"
] | [
"wn.taraxacum.n.01",
"wn.flower.n.02"
] |
capuchin | tail | 0.999329 | [
"Tail"
] | [
"wn.capuchin.n.02",
"wn.tail.n.01"
] |
animal | follicle | 0.999159 | [
"Animal"
] | [
"wn.animal.n.01",
"wn.follicle.n.01"
] |
animal | cell | 0.998977 | [
"Animal"
] | [
"wn.animal.n.01",
"wn.cell.n.02"
] |
sewage | organic matter | 0.99904 | [
"Sewage",
"Organic matter"
] | [
"wn.sewage.n.01"
] |
bundle sheath | chloroplast | 0.999249 | [
"Chloroplast"
] | [
"wn.chloroplast.n.01"
] |
grasshopper | reproductive organ | 0.999398 | [
"Grasshopper",
"Sex organ"
] | [
"wn.grasshopper.n.01",
"wn.reproductive_organ.n.01"
] |
oak ' flower part | catkin | 0.998621 | [
"Catkin"
] | [
"wn.part.n.03",
"wn.catkin.n.01"
] |
grease | group | 0.999102 | [] | [
"wn.grease.n.01",
"wn.group.n.02"
] |
cat | gland | 0.99889 | [
"Cat",
"Gland"
] | [
"wn.cat.n.01",
"wn.gland.n.01"
] |
horse | cell | 0.999127 | [
"Horse"
] | [
"wn.horse.n.01",
"wn.cell.n.02"
] |
desert tortoise | dome shell | 0.999309 | [
"Desert tortoise"
] | [
"wn.desert_tortoise.n.01"
] |
peccary | stomach | 0.998818 | [
"Peccary",
"Stomach"
] | [
"wn.peccary.n.01",
"wn.stomach.n.01"
] |
peccary | four compartment | 0.999163 | [
"Peccary"
] | [
"wn.peccary.n.01",
"wn.compartment.n.01"
] |
stomach | four compartment | 0.998807 | [
"Stomach"
] | [
"wn.stomach.n.01",
"wn.compartment.n.01"
] |
bluefish | snout | 0.999334 | [
"Bluefish",
"Snout"
] | [
"wn.bluefish.n.01",
"wn.snout.n.01"
] |
lynx | ring tail | 0.999283 | [
"Lynx",
"Ring-tailed lemur"
] | [
"wn.lynx.n.02",
"wn.madagascar_cat.n.01"
] |
ant | sacs | 0.999351 | [
"Ant"
] | [
"wn.ant.n.01",
"wn.sac.n.04"
] |
gland | cortisol | 0.998716 | [
"Gland",
"Cortisol"
] | [
"wn.gland.n.01",
"wn.hydrocortisone.n.01"
] |
plant | pod | 0.999186 | [
"Plant"
] | [
"wn.plant.n.02"
] |
raceme | pod | 0.999178 | [
"Raceme"
] | [
"wn.raceme.n.01",
"wn.pod.n.02"
] |
light bulb | glass | 0.998858 | [
"Incandescent light bulb",
"Glass"
] | [
"wn.glass.n.01"
] |
asparagus | plant | 0.998813 | [
"Asparagus",
"Plant"
] | [
"wn.asparagus.n.01",
"wn.plant.n.02"
] |
worm | substance | 0.99877 | [
"Worm"
] | [
"wn.worm.n.01",
"wn.substance.n.01"
] |
cow | growth hormone | 0.998892 | [
"Cattle",
"Growth hormone"
] | [
"wn.cattle.n.01",
"wn.somatotropin.n.01"
] |
cucumber | acid | 0.999196 | [
"Cucumber",
"Acid"
] | [
"wn.cucumber.n.02",
"wn.acid.n.01"
] |
river otter | gland | 0.999357 | [
"Gland"
] | [
"wn.river_otter.n.01",
"wn.gland.n.01"
] |
plant | spore | 0.999018 | [
"Plant",
"Spore"
] | [
"wn.plant.n.02",
"wn.spore.n.01"
] |
eye | layer | 0.999074 | [
"Eye"
] | [
"wn.eye.n.01",
"wn.layer.n.02"
] |
owl | body | 0.999097 | [
"Owl"
] | [
"wn.owl.n.01",
"wn.body.n.01"
] |
moth | antenna | 0.999325 | [
"Moth"
] | [
"wn.moth.n.01",
"wn.antenna.n.03"
] |
Dataset Card for [HasPart]
Dataset Summary
This dataset is a new knowledge-base (KB) of hasPart relationships, extracted from a large corpus of generic statements. Complementary to other resources available, it is the first which is all three of: accurate (90% precision), salient (covers relationships a person may mention), and has high coverage of common terms (approximated as within a 10 year old’s vocabulary), as well as having several times more hasPart entries than in the popular ontologies ConceptNet and WordNet. In addition, it contains information about quantifiers, argument modifiers, and links the entities to appropriate concepts in Wikipedia and WordNet.
Supported Tasks and Leaderboards
Text Classification / Scoring - meronyms (e.g., plant
has part stem
)
Languages
English
Dataset Structure
Data Instances
[More Information Needed]
{'arg1': 'plant',
'arg2': 'stem',
'score': 0.9991798414303377,
'synset': ['wn.plant.n.02', 'wn.stalk.n.02'],
'wikipedia_primary_page': ['Plant']}
Data Fields
arg1
,arg2
: These are the entities of the meronym, i.e.,arg1
has_partarg2
score
: Meronymic score per the procedure described belowsynset
: Ontological classification from WordNet for the two entitieswikipedia_primary_page
: Wikipedia page of the entities
Note: some examples contain synset / wikipedia info for only one of the entities.
Data Splits
Single training file
Dataset Creation
Our approach to hasPart extraction has five steps:
- Collect generic sentences from a large corpus
- Train and apply a RoBERTa model to identify hasPart relations in those sentences
- Normalize the entity names
- Aggregate and filter the entries
- Link the hasPart arguments to Wikipedia pages and WordNet senses
Rather than extract knowledge from arbitrary text, we extract hasPart relations from generic sentences, e.g., “Dogs have tails.”, in order to bias the process towards extractions that are general (apply to most members of a category) and salient (notable enough to write down). As a source of generic sentences, we use GenericsKB, a large repository of 3.4M standalone generics previously harvested from a Webcrawl of 1.7B sentences.
Annotations
Annotation process
For each sentence S in GenericsKB, we identify all noun chunks in the sentence using a noun chunker (spaCy's Doc.noun chunks). Each chunk is a candidate whole or part. Then, for each possible pair, we use a RoBERTa model to classify whether a hasPart relationship exists between them. The input sentence is presented to RoBERTa as a sequence of wordpiece tokens, with the start and end of the candidate hasPart arguments identified using special tokens, e.g.:
[CLS] [ARG1-B]Some pond snails[ARG1-E] have [ARG2-B]gills[ARG2-E] to breathe in water.
where [ARG1/2-B/E]
are special tokens denoting the argument boundaries. The [CLS]
token is projected to two class labels (hasPart/notHasPart), and a softmax layer is then applied, resulting in output probabilities for the class labels. We train with cross-entropy loss. We use RoBERTa-large (24 layers), each with a hidden size of 1024, and 16 attention heads, and a total of 355M parameters. We use the pre-trained weights available with the
model and further fine-tune the model parameters by training on our labeled data for 15 epochs. To train the model, we use a hand-annotated set of ∼2k examples.
Who are the annotators?
[More Information Needed]
Personal and Sensitive Information
[More Information Needed]
Considerations for Using the Data
Social Impact of Dataset
[More Information Needed]
Discussion of Biases
[More Information Needed]
Other Known Limitations
[More Information Needed]
Additional Information
Dataset Curators
[More Information Needed]
Licensing Information
[More Information Needed]
Citation Information
@misc{bhakthavatsalam2020dogs, title={Do Dogs have Whiskers? A New Knowledge Base of hasPart Relations}, author={Sumithra Bhakthavatsalam and Kyle Richardson and Niket Tandon and Peter Clark}, year={2020}, eprint={2006.07510}, archivePrefix={arXiv}, primaryClass={cs.CL} }
Contributions
Thanks to @jeromeku for adding this dataset.
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