| Literature DB >> 24356992 |
Barry J Devereux1, Lorraine K Tyler, Jeroen Geertzen, Billi Randall.
Abstract
Theories of the representation and processing of concepts have been greatly enhanced by models based on information available in semantic property norms. This information relates both to the identity of the features produced in the norms and to their statistical properties. In this article, we introduce a new and large set of property norms that are designed to be a more flexible tool to meet the demands of many different disciplines interested in conceptual knowledge representation, from cognitive psychology to computational linguistics. As well as providing all features listed by 2 or more participants, we also show the considerable linguistic variation that underlies each normalized feature label and the number of participants who generated each variant. Our norms are highly comparable with the largest extant set (McRae, Cree, Seidenberg, & McNorgan, 2005) in terms of the number and distribution of features. In addition, we show how the norms give rise to a coherent category structure. We provide these norms in the hope that the greater detail available in the Centre for Speech, Language and the Brain norms should further promote the development of models of conceptual knowledge. The norms can be downloaded at www.csl.psychol.cam.ac.uk/propertynorms.Entities:
Mesh:
Year: 2014 PMID: 24356992 PMCID: PMC4237904 DOI: 10.3758/s13428-013-0420-4
Source DB: PubMed Journal: Behav Res Methods ISSN: 1554-351X
Fig. 1Screen shot of the norming Web page showing how the features were collected
A subset of the preprocessed features for the concept turtle (only a sample of uncollapsed features is shown)
| PF | Relation | Feature | Participant list |
|---|---|---|---|
| 23 | has | a shell | p15 17 18 24 28 30 39 45 48 50 52 55 56 58 59 60 61 63 64 88 132 133 135 |
| 18 | does | swim | p15 18 28 30 45 48 52 55 56 58 59 60 62 88 113 131 131 133 |
| 16 | does | lay | p15 17 24 28 39 55 56 59 59 60 62 87 88 113 132 133 |
| 14 | does | live | p18 24 30 45 45 52 52 52 55 59 60 62 64 133 |
| 10 | is | a reptile | p18 45 50 56 58 60 64 113 132 134 |
| 10 | is | an animal | p28 39 45 48 50 53 132 133 134 135 |
| 9 | does | lay egg+s | p15 24 60 62 87 88 113 132 133 |
| 8 | is | green | p24 30 45 48 55 59 60 134 |
| 7 | is | slow | p24 28 48 50 57 61 64 |
| 5 | has | four leg+s | p52 55 62 88 133 |
| 5 | does | have | p62 87 87 87 87 |
| 5 | does | swim in sea+s | p28 56 59 131 133 |
| 4 | is | endanger+ed | p39 45 55 58 |
| 4 | has | a tail | p39 63 64 88 |
| 4 | has | flipper+s | p60 113 131 134 |
| 4 | has | skin | p24 28 58 63 |
| 3 | does | eat | p52 60 88 |
| 3 | does | live in sea+s | p18 59 60 |
| 3 | does | live in water | p24 52 62 |
| 3 | does | move | p17 52 62 |
| 3 | has | a beak | p18 24 45 |
| 2 | does | crawl | p52 60 |
| 2 | has | small head | p30 57 |
| 2 | does | lay egg+s on the beach | p28 39 |
| 2 | has | scaly skin | p24 58 |
| 2 | does | travel | p60 133 |
| 2 | does | look | p17 45 |
| 2 | is | old | p57 61 |
| 2 | has | head | p30 57 |
| 2 | … | be+s endanger+ed | p24 87 |
| 2 | does | have a hard shell | p62 87 |
| 2 | has | scale+s | p18 52 |
| 2 | is | shy | p15 52 |
| 2 | is | graceful | p15 134 |
| 2 | does | live a long time | p45 52 |
| 1 | does | live in shell+s | p52 |
| 1 | … | can live on land or sea | p87 |
| 1 | has | a little tail | p24 |
| 1 | is | cold-blooded | p132 |
| 1 | is | not+ dangerous | p28 |
| 1 | is | crawl+s | p57 |
| 1 | has | tough skin | p63 |
| 1 | is | big | p50 |
| 1 | does | lay egg+s on beach+s | p55 |
| 1 | does | move slowly on land and quick in the sea | p17 |
| 1 | does | return | p17 |
| 1 | does | look like tortoise+s | p17 |
Preprocessing maintains a record of which participants have provided input into which feature. PF, production frequency
Means (and standard deviations; SDs) of number of features (NOF), number of shared (NOsF) and distinctive (NOdF) features, and mean distinctiveness (MeanD) for the new CSLB norms and for the McRae norms and their respective correlations across concepts
| NOF | NOsF | NOdF | MeanD | ||
|---|---|---|---|---|---|
| McRae | Mean | 12.2 | 8.2 | 4.1 | 0.35 |
|
| 3.3 | 3 | 2.6 | 0.16 | |
| CSLB | Mean | 14.4 | 11 | 3.4 | 0.26 |
|
| 3.3 | 3.2 | 2.4 | 0.13 | |
| Diff | 2.2 | 2.8 | -0.7 | −0.1 | |
| Correlation | .35 | .51 | .5 | .63 |
Intercorrelational density (ICD), mean correlational strength (Corrstr), number of significantly correlated property pairs (CPPs), and percentage of feature pairs that are significantly correlated (%CPPs) for the 415 items in the McRae and CSLB norms, and their respective correlations across concepts
| ICD | Corrstr | CPPs | %CPPs | ||
|---|---|---|---|---|---|
| McRae | Mean | 177 | .26 | 8 | 23 |
|
| 208 | .08 | 9 | 17 | |
| CSLB | Mean | 298 | .25 | 15 | 24 |
|
| 246 | 0.06 | 11 | 13 | |
| Correlation | .61 | .36 | .58 | .35 |
Fig. 2Similarity structure for 48 items in common for CSLB and McRae norms
Fig. 3Similarity structure for the 49 “land animal” items appearing in both the CLSB and McRae norms. Rows and columns of the similarity matrix are ordered by a complete-linkage hierarchical clustering solution
Fig. 4Within-category similarity for the McRae and CSLB norms. Size: the number of items common to both sets of norms in each category