Javascript must be enabled to continue!
Internal Neural Representations in Task-Switching Guided by Context Biases
View through CrossRef
Our brain can filter and integrate external information with internal representations to accomplish goal-directed behavior. The ability to switch between tasks effectively in response to context and external stimuli is a hallmark of cognitive control. Task switching occurs rapidly and efficiently, allowing us to perform multiple tasks with ease. Similarly, artificial intelligence can be tailored to exhibit multitask capabilities and achieve high performance across domains. In this study, we delve into neural representations learned by task-switching feedforward networks, which use task-specific biases for multitasking mediated by context inputs. Task-specific biases are learned by alternating the tasks the neural network learns during training. By using two-alternative choice tasks, we find that task-switching networks produce representations that resemble other multitasking paradigms, namely parallel networks in the early stages of processing and independent subnetworks in later stages. This transition in information processing is akin to that in the cortex. We then analyze the impact of inserting task contexts in different stages of processing, and the role of its location in the alignment between the task and the stimulus features. To confirm the generality of results, we display neural representations during task switching for different task and data sets. In summary, the use of context inputs improves the interpretability of feedforward neural networks for multitasking, setting the basis for studying architectures and tasks of higher complexity, including biological microcircuits in the brain carrying out context-dependent decision making.
Title: Internal Neural Representations in Task-Switching Guided by Context Biases
Description:
Our brain can filter and integrate external information with internal representations to accomplish goal-directed behavior.
The ability to switch between tasks effectively in response to context and external stimuli is a hallmark of cognitive control.
Task switching occurs rapidly and efficiently, allowing us to perform multiple tasks with ease.
Similarly, artificial intelligence can be tailored to exhibit multitask capabilities and achieve high performance across domains.
In this study, we delve into neural representations learned by task-switching feedforward networks, which use task-specific biases for multitasking mediated by context inputs.
Task-specific biases are learned by alternating the tasks the neural network learns during training.
By using two-alternative choice tasks, we find that task-switching networks produce representations that resemble other multitasking paradigms, namely parallel networks in the early stages of processing and independent subnetworks in later stages.
This transition in information processing is akin to that in the cortex.
We then analyze the impact of inserting task contexts in different stages of processing, and the role of its location in the alignment between the task and the stimulus features.
To confirm the generality of results, we display neural representations during task switching for different task and data sets.
In summary, the use of context inputs improves the interpretability of feedforward neural networks for multitasking, setting the basis for studying architectures and tasks of higher complexity, including biological microcircuits in the brain carrying out context-dependent decision making.
Related Results
Code-switching: Types and Functions in Fathia Izzati's Vlog
Code-switching: Types and Functions in Fathia Izzati's Vlog
Abstract. This study analyzed the code-switching used in Fathia Izzati's YouTube videos channel according to the types and their functions. This study used a qualitative descriptiv...
Meta-Representations as Representations of Processes
Meta-Representations as Representations of Processes
In this study, we explore how the notion of meta-representations in Higher-Order Theories (HOT) of consciousness can be implemented in computational models. HOT suggests that consc...
Processing Speed Predicts Mean Performance in Task-Switching but Not Task-Switching Cost
Processing Speed Predicts Mean Performance in Task-Switching but Not Task-Switching Cost
In several studies, it has been suggested that task-switching performance is linked to processing speed. Here we argue that the relation between processing speed and high-level cog...
Lingering neural representations of past task features adversely affect future behavior
Lingering neural representations of past task features adversely affect future behavior
AbstractDuring goal-directed behavior, humans purportedly form and retrieve so called ‘event files’ – conjunctive representations that link context-specific information about stimu...
Code-switching used by English teachers in teaching EFL students
Code-switching used by English teachers in teaching EFL students
This study aims to investigate: (1) the types of code-switching used by English teachers in teaching the classroom; and (2) the frequency of code-switching functions used by Englis...
Linguistic Types of Code-Switching as a Medium of Solidarity in Eat, Pray, Love Movie
Linguistic Types of Code-Switching as a Medium of Solidarity in Eat, Pray, Love Movie
Accommodation theorists argue that speakers use different varieties of language to express solidarity with or social distance from their interlocutors (Howard Giles et al, 1991; Mu...
CODE-SWITCHING IN ENGLISH CLASSROOM
CODE-SWITCHING IN ENGLISH CLASSROOM
Code-switching is one of sociolinguitics phenomenon when a a speaker of bilingual or multilingual switch from a language to another one. The research aims to figure out types of te...
On the role of network dynamics for information processing in artificial and biological neural networks
On the role of network dynamics for information processing in artificial and biological neural networks
Understanding how interactions in complex systems give rise to various collective behaviours has been of interest for researchers across a wide range of fields. However, despite ma...

