Genders and Classifiers

Every language has some means of categorizing objects into humans, or animates, or by their shape, form, size, and function. The most wide-spread are linguistic genders—grammatical classes of nouns based on core semantic properties such as sex (female and male), animacy, humanness, and also shape and size. Classifiers of several types also serve to categorize entities. Numeral classifiers occur with number words, possessive classifiers appear in the expressions of possession, and verbal classifiers are used on a verb, categorizing its argument. Genders and classifiers of varied types can occur together. Their meanings reflect beliefs and traditions, and in many ways mirror the ways in which speakers view the ever-changing reality. This volume elaborates on the expression, usage, history, and meanings of noun categorization devices, exploring their various facets across the languages of South America and Asia, known for the diversity of their noun categorization. The volume starts with a typological introduction outlining the types of noun categorization devices, their expression, scope, and functions, in addition to the socio-cultural aspects of their use, and their development. It is followed by revised versions of eight papers focussing on gender and classifier systems in two areas of high diversity—South America (with a focus on Amazonia) and Asia.

2019 ◽  
pp. 1-29
Author(s):  
Alexandra Y. Aikhenvald

A noun may refer to a man, a woman, an animal, or an inanimate object of varied shape, size, and function, or have abstract reference. Noun categorization devices vary in their expression, and the contexts in which they occur. Large sets of numeral classifiers in South-East Asian languages occur with number words and quantifying expressions. Small highly grammaticalized noun classes and gender systems in Indo-European and African languages, and the languages of the Americas are expressed with agreement markers on adjectives, demonstratives, and also on the noun itself. Further means include noun classifiers, classifiers in possessive constructions, verbal classifiers, and two lesser-known types: locative and deictic classifiers. This introductory chapter offers a general typological background, focusing on issues in noun categorization devices particularly relevant for this volume.


Author(s):  
Marcin Kilarski ◽  
Marc Allassonnière-Tang

Classifiers are partly grammaticalized systems of classification of nominal referents. The choice of a classifier can be based on such criteria as animacy, sex, material, and function as well as physical properties such as shape, size, and consistency. Such meanings are expressed by free or bound morphemes in a variety of morphosyntactic contexts, on the basis of which particular subtypes of classifiers are distinguished. These include the most well-known numeral classifiers which occur with numerals or quantifiers, as in Mandarin Chinese yí liàng chē (one clf.vehicle car) ‘one car’. The other types of classifiers are found in contexts other than quantification (noun classifiers), in possessive constructions (possessive classifiers), in verbs (verbal classifiers), as well as with deictics (deictic classifiers) and in locative phrases (locative classifiers). Classifiers are found in languages of diverse typological profiles, ranging from the analytic languages of Southeast Asia and Oceania to the polysynthetic languages of the Americas. Classifiers are also found in other modalities (i.e., sign languages and writing systems). Along with grammatical gender, classifiers constitute one of the two main types of nominal classification. Although classifiers and gender differ in some ways, with the presence of a classifier not being reflected in agreement (i.e., the form of associated words), in others they exhibit common patterns. Thus, both types of nominal classification markers contribute to the expansion of the lexicon and the organization of discourse. Shared patterns also involve common paths of evolution, as illustrated by the grammaticalization of classifier systems into gender systems. In turn, particular types of classifiers resemble various means of lexical categorization found in non-classifier languages, including measure words, class terms, as well as semantic agreement between the verb and direct object. All these three means of classification can be viewed in terms of a continuum of grammaticalization, ranging from lexical means to partly grammaticalized classifiers and to grammaticalized gender systems. Although evidence of classifiers in non-Indo-European languages has been available since the 16th century, it was only the end of the 20th century that saw a formative stage in their study. Since then, classifier systems have offered fascinating insights into the diversity of language structure, including such key phenomena as categorization, functionality, grammaticalization, and the distinction between lexicon and grammar as well as the language-internal and external factors underlying the evolution of morphosyntactic complexity.


Brain tumor detection from MRI images is a challenging process due to high diversity in the tumor pixels of different peoples. Automatic detection has got wide spread acclaim because the manual detection by experts is time consuming and prone to error in judgment. Due to its high mortality rate, detection of tumor automatically is a new emerging technique in bio medical imaging. Here we present a review of few methods from simple thresholding to advanced deep learning methods for segmentation of tumor from MRI data. The segmentation of tumor methods is classified to image segmentation using gray level processing, machine learning and deep learning. The results of various methods are compared to find the best methods available. As medical imaging methods have improving day by day this review will help to understand emerging trends in brain tumor detection.


2002 ◽  
Vol 45 (11) ◽  
pp. 35-44 ◽  
Author(s):  
S.K. Hamilton

Inundation patterns in the Pantanal remain in a relatively natural state, yet a number of significant human influences have occurred in the past, and there is potential for more severe human impacts as development of the region continues in the future. The objectives of this paper are 1) to briefly review the linkages between hydrology and ecological structure and function in the Pantanal; 2) to review some documented cases of historical influences of human activities on hydrology in the region; and 3) to consider potential future impacts, particularly in regard to the recently proposed navigation project known as the Paraguay-Paraná Waterway (or Hidrovía).


2011 ◽  
Vol 25 (5) ◽  
pp. 407 ◽  
Author(s):  
Daniela A. Lopes ◽  
Alejandro Bravo ◽  
Eduardo Hajdu

Eight new species of carnivorous sponges are described from southern South America, off Diego Ramírez Archipelago (south Chile): Abyssocladia diegoramirezensis, sp. nov., A. umbellata, sp. nov., Asbestopluma (Asbestopluma) bitrichela, sp. nov., A. (A.) magnifica, sp. nov., A. (A.) microstrongyla, sp. nov., A. (Helophloeina) delicata, sp. nov., Chondrocladia (Chondrocladia) schlatteri, sp. nov. and C. (Meliiderma) latrunculioides, sp. nov. Most of these sponges were sampled from an antipatharian coral collected accidentaly by demersal fisheries, which indicates an unexpected high diversity and abundance of carnivorous sponges in this area. The taxonomy and biogeography of the family Cladorhizidae is discussed, with an emphasis on cladorhizid versus phellodermid affinities of Abyssocladia, and on the possibility that species bearing either cleistochelae or arcuate chelae as the sole chelae morphotype may belong in this genus. A synthesis of the geographic as well as bathymetric distribution of cladorhizids is presented.


2002 ◽  
Vol 96 (8) ◽  
pp. 781-785 ◽  
Author(s):  
F. Pratlong ◽  
M. Deniau ◽  
H. Darie ◽  
S. Eichenlaub ◽  
S. Pröll ◽  
...  

2001 ◽  
Vol 23 (1) ◽  
pp. 90 ◽  

This study compares second language (12) acquisition and attrition sequences of the syntax and semantics of numeral classifier systems in light of considerations of markedness, frequency, and the regression hypothesis. In classifier data elicited from English-speaking adult learners and attriters of two East Asia languages, Japanese and Chinese, we find in the attrition of both languages, in both syntax and semantics, a regression of the acquisition sequence. An implicational semantic scale, the Numeral Classifer Accessibility Hierarchy, cOinciding closely with the relative frequencies of the classifiers in input, appears to provide a path of least resistance for the learning and the loss of the semantic systems.


2021 ◽  
Author(s):  
◽  
Muhammad Iqbal

<p>Using evolutionary intelligence and machine learning techniques, a broad range of intelligent machines have been designed to perform different tasks. An intelligent machine learns by perceiving its environmental status and taking an action that maximizes its chances of success. Human beings have the ability to apply knowledge learned from a smaller problem to more complex, large-scale problems of the same or a related domain, but currently the vast majority of evolutionary machine learning techniques lack this ability. This lack of ability to apply the already learned knowledge of a domain results in consuming more than the necessary resources and time to solve complex, large-scale problems of the domain. As the problem increases in size, it becomes difficult and even sometimes impractical (if not impossible) to solve due to the needed resources and time. Therefore, in order to scale in a problem domain, a systemis needed that has the ability to reuse the learned knowledge of the domain and/or encapsulate the underlying patterns in the domain. To extract and reuse building blocks of knowledge or to encapsulate the underlying patterns in a problem domain, a rich encoding is needed, but the search space could then expand undesirably and cause bloat, e.g. as in some forms of genetic programming (GP). Learning classifier systems (LCSs) are a well-structured evolutionary computation based learning technique that have pressures to implicitly avoid bloat, such as fitness sharing through niche based reproduction. The proposed thesis is that an LCS can scale to complex problems in a domain by reusing the learnt knowledge from simpler problems of the domain and/or encapsulating the underlying patterns in the domain. Wilson’s XCS is used to implement and test the proposed systems, which is a well-tested,  online learning and accuracy based LCS model. To extract the reusable building  blocks of knowledge, GP-tree like, code-fragments are introduced, which are more  than simply another representation (e.g. ternary or real-valued alphabets). This  thesis is extended to capture the underlying patterns in a problemusing a cyclic  representation. Hard problems are experimented to test the newly developed scalable  systems and compare them with benchmark techniques. Specifically, this work develops four systems to improve the scalability of XCS-based classifier systems. (1) Building blocks of knowledge are extracted fromsmaller problems of a Boolean domain and reused in learning more complex, large-scale problems in the domain, for the first time. By utilizing the learnt knowledge from small-scale problems, the developed XCSCFC (i.e. XCS with Code-Fragment Conditions) system readily solves problems of a scale that existing LCS and GP approaches cannot, e.g. the 135-bitMUX problem. (2) The introduction of the code fragments in classifier actions in XCSCFA (i.e. XCS with Code-Fragment Actions) enables the rich representation of GP, which when couples with the divide and conquer approach of LCS, to successfully solve various complex, overlapping and niche imbalance Boolean problems that are difficult to solve using numeric action based XCS. (3) The underlying patterns in a problem domain are encapsulated in classifier rules encoded by a cyclic representation. The developed XCSSMA system produces general solutions of any scale n for a number of important Boolean problems, for the first time in the field of LCS, e.g. parity problems. (4) Optimal solutions for various real-valued problems are evolved by extending the existing real-valued XCSR system with code-fragment actions to XCSRCFA. Exploiting the combined power of GP and LCS techniques, XCSRCFA successfully learns various continuous action and function approximation problems that are difficult to learn using the base techniques. This research work has shown that LCSs can scale to complex, largescale problems through reusing learnt knowledge. The messy nature, disassociation of  message to condition order, masking, feature construction, and reuse of extracted knowledge add additional abilities to the XCS family of LCSs. The ability to use  rich encoding in antecedent GP-like codefragments or consequent cyclic representation  leads to the evolution of accurate, maximally general and compact solutions in learning  various complex Boolean as well as real-valued problems. Effectively exploiting the combined power of GP and LCS techniques, various continuous action and function approximation problems are solved in a simple and straight forward manner. The analysis of the evolved rules reveals, for the first time in XCS, that no matter how specific or general the initial classifiers are, all the optimal classifiers are converged through the mechanism ‘be specific then generalize’ near the final stages of evolution. Also that standard XCS does not use all available information or all available genetic operators to evolve optimal rules, whereas the developed code-fragment action based systems effectively use figure  and ground information during the training process. Thiswork has created a platformto explore the reuse of learnt functionality, not just terminal knowledge as present, which is needed to replicate human capabilities.</p>


2019 ◽  
Vol 93 (06) ◽  
pp. 1258-1275
Author(s):  
Sofía I. Quiñones ◽  
Ángel R. Miño-Boilini ◽  
Alfredo E. Zurita ◽  
Silvina A. Contreras ◽  
Carlos A. Luna ◽  
...  

AbstractXenarthra is an endemic South American lineage of mammals, probably the sister clade of the other placental mammals. The oldest records of Xenarthra are from the latest Paleocene, although its current diversity is much lower than that recorded in some intervals of the Cenozoic Era. A new Neogene Xenarthra (Pilosa and Cingulata) assemblage from two localities of the Argentine Eastern Puna (Calahoyo and Casira) is described. The newly recorded taxa—Cingulata, Dasypodidae, Eutatini: Stenotatus sp. indet. and Eutatini indet., Euphractini: Macrochorobates scalabrinii (Moreno and Mercerat, 1891), and Tardigrada, Mylodontinae: cf. Simomylodon sp. indet. and Simomylodon cf. S. uccasamamensis Saint-André et al., 2010—and those already published from Calahoyo—Cingulata: Macrochorobates chapadmalensis (Ameghino, 1908), Eosclerocalyptus sp. indet., and Tardigrada, Megatheriidae: Pyramiodontherium bergi (Moreno and Mercerat, 1891)—suggest a middle–late Miocene age for the fossil-bearing levels. In Calahoyo, the presence of Stenotatus sp. indet., in addition to some rodents currently under study in the lower levels, suggest a closer similarity with the palaeofauna of Cerdas (southern Bolivia), probably involving the last part of the Miocene Climatic Optimum. The Xenarthra recorded in the middle and upper levels of Calahoyo and Casira suggest a late Miocene–Pliocene age. A comparative analysis between Calahoyo and Casira highlights the absence of Cingulata in the latter and a high diversity in the former. This situation probably indicates different paleoenvironmental conditions. Finally, we present the first certain record of the genus Simomylodon Saint-André et al., 2010 in Argentina, which includes the oldest record of dermal ossicles for sloths in South America.


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