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naom Markovitch

Congratulations to Dr. Noam Markovitch

24 May, 2023

For receiving the best doctoral award in developmental psychology from the APA organization!
Noam's doctorate deals with the understanding of children's differential sensitivity to the effects of the environment on their development. The work's contribution to developmental psychology is very significant, both in theoretical thought and methodological approaches.
Well done Noam!
Noam PhD supervisor, Prof. Ariel Knafo-Noam, has also won the award in the past

 

From acute stress to persistent post-concussion symptoms: The role of parental accommodation and child’s coping strategies

19 April, 2023

An article by PhD candidate Irit Aviv, supervised by Dr. Tammy Pilowsky Peleg and Prof. Hillel Aviezer was selected as the winner of the Eighth Annual TCN/AACN student Project Competition, from among 15 eligible manuscripts

Acute stress following mild Traumatic Brain Injury (mTBI) is highly prevalent and associated with Persistent Post-Concussion symptoms (PPCS). However, the mechanism mediating this relationship is understudied.

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The learnability consequences of Zipfian distributions in language

24 April, 2022
The learnability consequences of Zipfian distributions in language

While the languages of the world differ in many respects, they share certain commonalties, which can provide insight on our shared cognition. In a new study Prof. Inbal Arnon and Dr. Ori Lavi-Rotbain explore the learnability consequences of one of the striking commonalities between languages.

Across languages, word frequencies follow a Zipfian distribution, showing a power law relation between a word's frequency and its rank. While their source in language has been studied extensively, less work has explored the learnability consequences of such distributions for language learners. this study proposes that the greater predictability of words in this distribution (relative to less skewed distributions) can facilitate word segmentation, a crucial aspect of early language acquisition. To explore this, we quantify word predictability using unigram entropy, assess it across languages using naturalistic corpora of child-directed speech and then ask whether similar unigram predictability facilitates word segmentation in the lab. We find similar unigram entropy in child-directed speech across 15 languages. We then use an auditory word segmentation task to show that the unigram predictability levels found in natural language are uniquely facilitative for word segmentation for both children and adults. These findings illustrate the facilitative impact of skewed input distributions on learning and raise questions about the possible role of cognitive pressures in the prevalence of Zipfian distributions in language.

See full article here