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-# Dataset
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-% Data Repository related to the paper "Cerebellar activity predicts vocalization in fruit bats" (currently under minor revision in Current Biology).
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-
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-% The data is stored in Matlab files containing neural recordings from the cerebellum of fruit-eating bats, captured during the production of both echolocation and social calls.
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-
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-## Data Guide: Cerebellar Activity Predicts Vocalization in Fruit Bats
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-
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-% This repository contains data collected from cerebellar recordings in fruit-eating bats during the production of echolocation and social calls. The data is structured into various Matlab files, with the details of each dataset and its specific parameters explained below.
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-
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-### 1. Frequency Tuning LFP
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-% This dataset includes Local Field Potentials (LFP) data captured from 224 channels, organized by stimulus level and frequency.
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-
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-% - ft-P2P (224 channels x levels x frequency)
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-% - besterp: Evoked response data across levels (30:15:90) and frequencies (15:5:85).
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-% - bestresponse: Best frequency-band level response (BFBL) for each channel.
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-% - cfmt: Characteristic Frequency/Minimum Threshold for each channel (CFMT).
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-
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-### 2. Frequency Tuning Spikes
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+# %Cerebellum Dataset
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+
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+% Data Repository related to the paper "Cerebellar activity predicts vocalization in fruit bats"
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+% (currently under minor revision in Current Biology).
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+%
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+% The data is stored in .mat files containing neural recordings from the cerebellum of fruit-eating bats,
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+% captured during the production of both echolocation and social calls.
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+
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+## %% Data Guide: Cerebellar Activity Predicts Vocalization in Fruit Bats
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+%
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+% This repository contains data collected from cerebellar recordings in fruit-eating bats during the
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+% production of echolocation and social calls. The data is structured into various .mat files, with details of
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+% each dataset and its specific parameters explained below.
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+
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+%% 1. Frequency Tuning LFP
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+% This dataset includes Local Field Potentials (LFP) data captured from 224 channels, organized by stimulus
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+% level and frequency.
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+%
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+% Variables:
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+% - ft-P2P: Local Field Potential data (224 channels x levels x frequency)
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+% - besterp: Evoked response data across levels (30:15:90) and frequencies (15:5:85)
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+% - bestresponse: Best frequency-band level response (BFBL) for each channel
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+% - cfmt: Characteristic Frequency/Minimum Threshold for each channel (CFMT)
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+
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+%% 2. Frequency Tuning Spikes
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% This dataset contains spike count data from 224 channels, organized similarly by stimulus level and frequency.
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% This dataset contains spike count data from 224 channels, organized similarly by stimulus level and frequency.
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-% - ft – spike count (224 channels x levels x frequency)
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-% - N2w: Peri-Stimulus Time Histogram (PSTH) data across levels (30:15:90) and frequencies (15:5:85).
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-% - bestresponse: Best frequency-Best level response (BFBL) for each channel.
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-% - cfmt: Characteristic Frequency/Minimum Threshold for each channel (CFMT).
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-
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-### 3. Vocs (Vocalization Data)
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+%
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+% Variables:
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+% - ft: Spike count (224 channels x levels x frequency)
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+% - N2w: Peri-Stimulus Time Histogram (PSTH) data across levels (30:15:90) and frequencies (15:5:85)
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+% - bestresponse: Best frequency-Best level response (BFBL) for each channel
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+% - cfmt: Characteristic Frequency/Minimum Threshold for each channel (CFMT)
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+
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+%% 3. Vocs (Vocalization Data)
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% This dataset provides information about the call parameters and classification data for both echo and communication calls.
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% This dataset provides information about the call parameters and classification data for both echo and communication calls.
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+%
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+% Variables:
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+% - callparams:
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+% - dur2: Duration of calls, categorized by call type
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+% - pf2: Peak frequency of calls, categorized by call type
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+% - finalMatrix: Cross-correlation matrix of different call types
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+% - newClass: Identifiers for calls used in cross-correlation
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+%
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+% - SpikeClassifData:
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+% - Ne: Normalized echo call spike data for training the SVM
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+% - Nc: Normalized communication call spike data for training the SVM
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+% - N2: Spike count data
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+% - N3: Identifiers for spike count data
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+%
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+% - LFPClassifData:
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+% - echoData: LFP data during echo calls for training the SVM
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+% - commData: LFP data during communication calls for training the SVM
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-% callparams:
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-% - dur2: Duration of calls, categorized by call type.
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-% - pf2: Peak frequency of calls, categorized by call type.
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-% - finalMatrix: Cross-correlation matrix of different call types.
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-% - newClass: Identifiers for calls used in cross-correlation.
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-
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-% - SpikeClassifData: Data for classifying spiking responses using Support Vector Machines (SVM).
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-% - Ne: Normalized echo call spike data for training the SVM.
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-% - Nc: Normalized communication call spike data for training the SVM.
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-% - N2: Spike count data.
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-% - N3: Identifiers for spike count data.
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-
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-% - LFPClassifData: Data for classifying LFP responses using SVM.
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-% - echoData: LFP data during echo calls for training the SVM.
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-% - commData: LFP data during communication calls for training the SVM.
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-
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% ---
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% ---
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-
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-% This guide outlines the structure of the data, which is organized into several Matlab files.
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-
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+% This guide outlines the structure of the data, which is organized into several .mat files.
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+% MATLAB version: R2021a.
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