Abstract
Hippocampus and entorhinal cortex form cognitive maps that represent relations among memories within a multidimensional space. While these relational maps have long been proposed to contribute to episodic memory, recent work suggests that they also support concept formation by representing relevant features for discriminating among related concepts. Cognitive maps may be refined by medial prefrontal cortex, which selects dimensions to represent based on their behavioral relevance. Hippocampal pattern completion, which is critical for retrieval of episodic memories, may also contribute to generalization of existing concepts to new exemplars. Navigation within hippocampal cognitive maps, which is guided by grid coding in entorhinal cortex, may contribute to imagination through recombination of event elements or concept features.
Keywords: cognitive map, episodic memory, category learning, imagination
Introduction
Reasoning about the world is greatly facilitated by knowledge of concepts, which represent combinations of features shared by things of the same kind and allow generalization from limited experience to novel exemplars. Distinctions between concepts are drawn based on differences in their component features and on the behavioral relevance of those features. For example, when shopping for a vehicle, prior knowledge about vehicle categories—such as sedans or trucks and their associated features such as shape, size, and cargo capacity—guides decision making about new vehicles one has not encountered before. While concepts may relate to perceptual categories, concepts may also be abstract; for instance, social cognition may be supported by knowledge of common personality types. Distinguishing between distinct concepts often requires simultaneous consideration of multiple features. For example, determining someone’s personality type might require considering both extraversion and conscientiousness. Recent work suggests that concept learning is supported by multidimensional cognitive maps within hippocampus, entorhinal cortex, and medial prefrontal cortex (mPFC) [1–4]. Cognitive maps encode multiple relationships within a common representational space [5], forming a simplified model of stimulus relationships and rewards that can be used to flexibly guide behavior [6,7]. We review recent evidence suggesting how computational processes of cognitive map formation, pattern completion, and dimensionality reduction contribute to concept learning. We propose that similar processes are involved in both concept learning and episodic memory, contributing to retrieval, generalization, and imagination in both domains.
Hippocampus, entorhinal cortex, and medial prefrontal cortex represent conceptual cognitive maps
Recent work demonstrates that the hippocampus and entorhinal cortex, which are thought to have critical roles in mapping spatial environments [8–10], also form cognitive maps of concepts that facilitate generalization of relationships [2,11,12]. Conceptual cognitive maps represent features that distinguish different concepts [11]. A simple example of how hippocampus supports one-dimensional representations that code the relationships among items comes from transitive inference paradigms, in which participants are presented with pairs of items that are arranged in a hierarchy (e.g., A<B<C<D<E) and must learn to select the correct item from each pair. Rats with lesions that disconnect inputs to hippocampus are able to correctly respond to the individual adjacent pairs that were learned explicitly (e.g., B<C, D<E), but fail to correctly infer relationships that have not been directly experienced (e.g., B<D) [13]. These findings indicate that hippocampus forms one-dimensional cognitive maps, which represent the relational distance between items and allow inference beyond direct experience. Similar to decisions about memory [14], hippocampal representations that code the relational distance between items are thought to guide decisions about concepts [11].
However, real-world concepts often cannot be captured by a single feature dimension; rather, multiple features contribute to defining concept boundaries. Hippocampus forms non-spatial cognitive maps that represent multiple dimensions simultaneously [12,15–17], suggesting that hippocampus might contribute to learning of multidimensional concepts. In a recent study, participants learned about social rankings of fictional people along two dimensions, popularity and competence (Figure 1A) [18]. After learning, activation patterns in hippocampus and entorhinal cortex during retrieval of individual people reflected the distance between them in a 2-dimensional space combining both dimensions. Although the individual dimensions were learned separately, they were represented within a unified cognitive map [18], suggesting that the hippocampal-entorhinal system forms multidimensional maps to organize information about related stimuli.
Multidimensional spaces in hippocampus may contribute to concept learning by representing combinations of features that are diagnostic of category membership [3,19,20]. Consistent with this hypothesis, a recent study found that hippocampal representations did not reflect all features within a 3-D stimulus space; instead, hippocampus represented only the two dimensions that were important for a categorization decision [12]. Furthermore, another study found that hippocampal concept representations are dynamic, emphasizing the feature dimensions that are relevant for the current task [3]. The same stimuli elicited distinct representations in hippocampus during different concept learning problems that required attending to different feature combinations (Figure 1C) [3], suggesting that hippocampus may represent distinctions between concepts rather than perceptual feature dimensions per se. These observations, which suggest that hippocampal concept representations are context-dependent, raise the possibility that hippocampus may represent only concept features that are currently relevant for behavior. However, there is also evidence that hippocampus represents associations between well-learned concepts during passive viewing, suggesting a more general role for hippocampus in forming stable concept representations [21,22]. An important direction for future research will be to characterize the conditions under which hippocampal concept representations are invariant or task dependent.
Regardless of the behavioral task, flexible access to concept representations requires that different exemplars of a concept, including exemplars that have never been seen before, activate the same concept representation. The episodes-to-concepts (EpCon) model proposes that such generalization is supported by a process of integration whereby different items come to elicit the same representation [16]. The hippocampus has been implicated in integrating events with overlapping features [23,24] to connect related events and in integrating item representations to form clusters of items that predict similar behavioral outcomes [11,16,25]. The EpCon model proposes that these clusters support flexible concept learning, which may facilitate categorization based on complex concept boundaries that require considering multiple dimensions simultaneously [16]. The EpCon model successfully predicts the representational geometry of hippocampal representations after learning of different categorization problems (Figure 1C) [3]. An open question, however, is how different scales of categories are represented within hippocampus; for example, a vehicle could be described broadly as a car, more specifically as a coupe, or very specifically as a 1967 Camaro. The scale of hippocampal representations varies along its anterior/posterior axis, raising the possibility that different areas represent different conceptual scales [11]. Consistent with this proposal, one study found evidence of an anterior/posterior gradient in how extended narratives are represented in hippocampus [26]; however, it remains unclear whether concepts are coded in a similar manner.
A related facet of hippocampal representation that may be advantageous for concept learning is its ability to encode information hierarchically. A study in rats found that population firing activity in hippocampus reflected a hierarchy of multiple dimensions, with behaviorally distinct contexts represented in opposing neural codes [27,28]. Hippocampus represented both superordinate distinctions between stimuli (the different behavioral contexts) and subordinate distinctions (e.g., the correct object to select within a given context). Similarly, a recent fMRI study found that events with a common associative structure are represented in a hierarchical cognitive map [29]. Participants studied pairs of novel objects which included initial (AB) pairs followed by overlapping (BC) pairs (Figure 2A). After learning, item representations in hippocampus, parahippocampal cortex, and mPFC exhibited a consistent geometry that reflected the conceptual triad relationship, i.e., that all triads shared the same structure regardless of their individual features (Figure 2B). The common neural geometry formed a hierarchy that represented both the general conceptual structure while also distinguishing between triads of associated items. The representation of the conceptual dimension predicted later performance in retrieving individual associations between triads, suggesting that hierarchical concept representations may facilitate retrieval of individual memories (Figure 2C). While yet to be tested directly, hierarchical representations within hippocampus may similarly facilitate different types of concept decisions that rely on superordinate and subordinate discriminations.
Entorhinal representations, along with those in hippocampus discussed above, may provide additional capacity for multidimensional organization that is beneficial for concept learning. Entorhinal grid cells, which fire at regularly spaced intervals within a spatial environment [30], are thought to provide a consistent spatial metric that supports navigation within cognitive maps [31]. A recent study found that grid-like activity in entorhinal cortex, measured using fMRI, may also provide a metric within conceptual cognitive maps [2]. When participants navigated through a “bird space” composed of combinations of leg and neck length of cartoon birds, entorhinal cortex exhibited grid-like activation, suggesting that entorhinal cortex has a general role in navigating both spatial and non-spatial cognitive maps (Figure 1B) [2]. While the involvement of grid cells in representing 2-D spaces is well-established, representing the relevant features of a concept may require higher-dimensional spaces [3]. Simulations of grid cell modules in entorhinal cortex suggest that it may be able to flexibly represent higher-dimensional spaces [32], potentially facilitating navigation of higher-dimensional cognitive maps of concept features.
While the hippocampal-entorhinal system may represent multidimensional cognitive maps with Euclidean geometry [18,31], recent work suggests that Euclidean cognitive maps may result from a more general capacity of this system to learn graph structures [33–36]. Learning of different graph structures that define relationships between concepts may support formation of cognitive maps of both continuous spaces (e.g., the popularity and competence of different people) and other relational structures (e.g., relationships between people in a family tree) [33].
When learning real-world concepts (e.g., types of vehicles, personality types), a key challenge is to determine what features are relevant for distinguishing between concepts [37]. The mPFC has been proposed to play a critical role in determining the behavioral relevance of stimuli based on current goals [38], a process critical for concept learning. The mPFC receives input from the hippocampus, which is thought to provide information about the current context [39,40]. The mPFC represents a cognitive map of stimulus-outcome relationships and is thought to shape hippocampal representations to select relevant dimensions based on the current context [41,42]. Cognitive maps in mPFC are flexible, forming efficient representations that reflect the behavioral relevance of features such as changes in context [4] or stimulus dimensions [18]. A recent concept learning study showed that mPFC performs goal-directed dimensionality reduction to form efficient representations, in which lower-dimensional representations are formed for less complex concepts. Importantly, mPFC representations were learned, with concept representation being higher-dimensional early in learning and then compressed over learning to only represent relevant dimensions (Figure 1D) [43]. Hippocampus is functionally coupled with mPFC during concept learning, suggesting that mPFC input helps refine hippocampal representation to form efficient concept spaces that are tuned based on goal relevance (Figure 1C) [16].
Parallel computations support decisions about concepts and episodic memory
Real-world experiences include both conceptual knowledge and episodic details [16]. For example, a memory of seeing your neighbor’s new car may include multiple levels of information, including the context (your neighborhood), items and entities within that context (your neighbor and their new sportscar), and relevant concepts (e.g., knowledge about the features of cars in general and sportscars in particular). Multidimensional content encoded within hippocampal representations, together with a common set of computations, may support retrieval of both episodic detail and conceptual knowledge (Figure 3) [16]. In this section, we review how the mechanisms of pattern completion and recombination drive expression of both episodic memory and concepts in different cognitive tasks.
Recurrent connections within hippocampus form attractor states, whereby patterns near to a learned attractor will settle into the learned state [44]. In the context of episodic memory, attractor states allow pattern completion of stored episodes, which are conjunctions of context and item information [45]. For example, seeing your neighbor’s car again might cue retrieval of the context in which you saw it earlier. Recent work suggests that hippocampal pattern completion might also be involved in retrieval of individual concepts [46]. Participants were asked to generate features related to a concept, such as “book” or “grapefruit.” Participants with hippocampal damage generally produced features that were semantically related to the prompt, while healthy controls produced valid features that were more distantly related [46]. These results suggest that hippocampus may facilitate pattern completion of concept features by retrieving attractor states representing multidimensional concept representations [47].
Multidimensional hippocampal representations may further support imagination of both episodes and concepts [48,49]. Hippocampus is thought to contribute to simulations of future experiences by flexibly recombining features from existing episodic memories; for example, retrieving a memory of visiting a college campus may help one to imagine meeting a new friend there (Figure 3) [1,48]. Consistent with this proposal, activation patterns measured in hippocampus during retrieval of episodic memories are reactivated during imagination of new episodes composed from the same elements [50]. Similarly, multidimensional hippocampal representations may support imagination in the conceptual domain. For example, if one is trying to imagine an ideal new family vehicle, mPFC may select relevant item dimensions such as cargo capacity and passenger capacity to be represented within the hippocampal-entorhinal system. Each of these dimensions may be related to multiple stimulus features (e.g., low passenger capacity is associated with smaller size, fewer doors, and fewer seats). Exploration of this feature space could then support imagination of novel concepts that involve novel feature combinations [11]; for example, one might imagine a vehicle that is intermediate between a sedan and an SUV, resulting in a new concept of a crossover vehicle (Figure 3). Consistent with this account, hippocampus represents conjunctions of individual concepts (e.g., tea, jelly) when they are combined to form a new concept (e.g., tea-jelly) [51]. At the same time, mPFC also demonstrates evidence of conjunctive representations and reflects the perceived value of the new concept, suggesting that it may have a role in evaluating hypothetical concepts [51].
Conclusions
A key challenge in successfully navigating our complex world is to identify important concepts and the features that define those concepts. Growing evidence suggests that hippocampus, entorhinal cortex, and mPFC support rapid concept learning by forming multidimensional cognitive maps of relevant features. Dimensionality reduction in mPFC may facilitate selection of behaviorally relevant features, guiding formation of attractor states in hippocampus that support concept generalization. Finally, hippocampal and entorhinal cognitive maps may guide recombination of concept features, supporting imagination of novel concepts.
Highlights.
Hippocampus and medial prefrontal cortex form multidimensional cognitive maps
Grid coding in entorhinal cortex supports navigation within cognitive maps
Cognitive maps support relational coding of both episodic memories and concepts
Hippocampal pattern completion supports generalization of concepts to new exemplars
Navigation of cognitive maps supports imagination of future events and new concepts
Acknowledgements
Thanks to Meghana Potturu for assistance with reviewing literature. This work was supported by the National Institutes of Health (R01 MH100121 to ARP; F32 MH114869 to NWM).
Footnotes
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