P. Dayan and L. F. Abbott, Theoretical Neuroscience: Computational and Mathematical Modeling of Neural Systems, 2005.

H. B. Barlow, Possible principles underlying the transformation of sensory messages, pp.217-234, 1961.

S. Laughlin, A simple coding procedure enhances a neuron's information capacity, vol.36, pp.910-912, 1981.

J. J. Atick, Could information theory provide an ecological theory of sensory processing, Netw Comput Neural Syst, vol.3, issue.2, pp.213-251, 1992.

M. S. Lewicki, Efficient coding of natural sounds, Nat Neurosci, vol.5, issue.4, pp.356-363, 2002.

C. K. Machens, T. Gollisch, O. Kolesnikova, and A. Herz, Testing the efficiency of sensory coding with optimal stimulus ensembles, Neuron, vol.47, issue.3, pp.447-456, 2005.

E. C. Smith and M. S. Lewicki, Efficient auditory coding, Nature, vol.439, issue.7079, pp.978-982, 2006.

A. M. Hermundstad, J. J. Briguglio, M. M. Conte, J. D. Victor, V. Balasubramanian et al., Variance predicts salience in central sensory processing, eLife, vol.3, 2015.

M. Levakova, L. Kostal, C. Monsempès, V. Jacob, and P. Lucas, Moth olfactory receptor neurons adjust their encoding efficiency to temporal statistics of pheromone fluctuations, PLoS Comput Biol, vol.14, issue.11, p.1006586, 2018.
URL : https://hal.archives-ouvertes.fr/hal-02621297

C. Shannon, A mathematical theory of communication. Bell system technical journal, vol.27, 1948.

D. Attwell and S. B. Laughlin, An Energy Budget for Signaling in the Grey Matter of the Brain, J Cereb Blood Flow Metab, vol.21, issue.10, pp.1133-1145, 2001.

J. J. Harris, R. Jolivet, and D. Attwell, Synaptic energy use and supply, Neuron, vol.75, issue.5, pp.762-777, 2012.

J. J. Harris, R. Jolivet, E. Engl, and D. Attwell, Energy-Efficient Information Transfer by Visual Pathway Synapses, Curr Biol, vol.25, issue.24, pp.3151-3160, 2015.

W. B. Levy and R. A. Baxter, Energy Efficient Neural Codes, Neural Comput, vol.8, issue.3, pp.531-543, 1996.

R. B. Stein, E. R. Gossen, and K. E. Jones, Neuronal variability: noise or part of the signal?, Nat Rev Neurosci, vol.6, issue.5, pp.389-397, 2005.

R. R. De-ruyter-van-steveninck, Reproducibility and Variability in Neural Spike Trains, Science, vol.275, issue.5307, pp.1805-1808, 1997.

S. P. Strong, R. Koberle, R. R. De-ruyter-van-steveninck, and W. Bialek, Entropy and Information in Neural Spike Trains, Phys Rev Lett, vol.80, issue.1, pp.197-200, 1998.

A. Borst and F. E. Theunissen, Information theory and neural coding, Nat Neurosci, vol.2, issue.11, pp.947-957, 1999.

R. B. Stein, The Information Capacity of Nerve Cells Using a Frequency Code, Biophys J, vol.7, issue.6, pp.797-826, 1967.

R. R. De-ruyter-van-steveninck and S. B. Laughlin, The rate of information transfer at graded-potential synapses, Nature, vol.379, issue.6566, pp.642-645, 1996.

S. Ikeda and J. H. Manton, Capacity of a single spiking neuron channel, Neural Comput, vol.21, issue.6, pp.1714-1748, 2009.

R. G. Gallager, Information Theory and Reliable Communication, 1968.

A. G. Dimitrov and J. P. Miller, Neural coding and decoding: communication channels and quantization, Netw Comput Neural Syst, vol.12, issue.4, pp.441-472, 2001.

A. G. Dimitrov, A. L. Lazar, and J. D. Victor, Information theory in neuroscience, J Comput Neurosci, vol.30, p.21279429, 2011.

M. D. Mcdonnell, S. Ikeda, and J. H. Manton, An introductory review of information theory in the context of computational neuroscience, Biol Cybern, vol.105, p.21792610, 2011.

M. Wibral, J. T. Lizier, and V. Priesemann, Bits from brains for biologically inspired computing, Front Robot AI, vol.2, 2015.

S. B. Laughlin, R. R. De-ruyter-van-steveninck, and J. C. Anderson, The metabolic cost of neural information, Nat Neurosci, vol.1, issue.1, pp.36-41, 1998.

V. Balasubramanian, D. Kimber, M. J. Berry, and . Ii, Metabolically Efficient Information Processing, Neural Comput, vol.13, issue.4, pp.799-815, 2001.

R. J. Mceliece, The Theory of Information and Coding, 2002.

G. G. De-polavieja, Errors Drive the Evolution of Biological Signalling to Costly Codes, J Theor Biol, vol.214, issue.4, pp.657-664, 2002.

G. G. Depolavieja, Reliable biological communication with realistic constraints, Phys Rev E, vol.70, issue.6, 2004.

E. D. Adrian, The basis of sensation, 1928.

A. Treves, S. Panzeri, E. T. Rolls, M. Booth, and E. A. Wakeman, Firing rate distributions and efficiency of information transmission of inferior temporal cortex neurons to natural visual stimuli, Neural Comput, vol.11, pp.601-632, 1999.

L. Kostal and R. Kobayashi, Optimal decoding and information transmission in Hodgkin-Huxley neurons under metabolic cost constraints, Biosystems, vol.136, pp.3-10, 2015.

L. Kostal, P. Lansky, and M. D. Mcdonnell, Metabolic cost of neuronal information in an empirical stimulusresponse model, Biol Cybern, vol.107, issue.3, pp.355-365, 2013.

P. Suksompong and T. Berger, Capacity Analysis for Integrate-and-Fire Neurons With Descending Action Potential Thresholds, IEEE Trans Inf Theory, vol.56, issue.2, pp.838-851, 2010.

J. Xing, T. Berger, M. Sungkar, and W. B. Levy, Energy Efficient Neurons With Generalized Inverse Gaussian Conditional and Marginal Hitting Times, IEEE Trans Inf Theory, vol.61, issue.8, pp.4390-4398, 2015.

M. Sungkar, T. Berger, and W. B. Levy, Mutual Information and Parameter Estimation in the Generalized Inverse Gaussian Diffusion Model of Cortical Neurons, IEEE Trans Mol Biol Multiscale Commun, vol.2, issue.2, pp.166-182, 2016.

M. Sungkar, T. Berger, and W. B. Levy, Capacity achieving input distribution to the generalized inverse Gaussian neuron model, 2017 55th Annual Allerton Conference on Communication, Control, and Computing, 2017.

R. Kobayashi, Y. Tsubo, and S. Shinomoto, Made-to-order spiking neuron model equipped with a multi-timescale adaptive threshold, Front Comput Neurosci, vol.3, issue.9, 2009.

R. Jolivet, R. Kobayashi, A. Rauch, R. Naud, S. Shinomoto et al., A benchmark test for a quantitative assessment of simple neuron models, J Neurosci Methods, vol.169, issue.2, pp.417-424, 2008.

R. Jolivet, F. Schürmann, T. K. Berger, R. Naud, W. Gerstner et al., The quantitative single-neuron modeling competition, Biol Cybern, vol.99, issue.4-5, pp.417-426, 2008.

W. Gerstner and R. Naud, How Good Are Neuron Models?, Science, vol.326, issue.5951, pp.379-380, 2009.

A. F. Jahangiri and G. J. Gerling, A multi-timescale adaptive threshold model for the SAI tactile afferent to predict response to mechanical vibration, Int IEEE EMBS Conf Neural Eng, pp.152-155, 2011.

R. Kobayashi and K. Kitano, Impact of slow K+ currents on spike generation can be described by an adaptive threshold model, J Comput Neurosci, vol.40, issue.3, p.27085337, 2016.

W. Gerstner, W. M. Kistler, R. Naud, and . Dynamics, , 2019.

M. Levakova, L. Kostal, C. Monsempès, P. Lucas, and R. Kobayashi, Adaptive integrate-and-fire model reproduces the dynamics of olfactory receptor neuron responses in a moth, J R Soc Interface, vol.16, issue.157, 2019.
URL : https://hal.archives-ouvertes.fr/hal-02627910

H. Witsenhausen, Some aspects of convexity useful in information theory, IEEE Trans Inf Theory, vol.26, issue.3, pp.265-271, 1980.

A. Destexhe, M. Rudolph, J. M. Fellous, and T. J. Sejnowski, Fluctuating synaptic conductances recreate in vivolike activity in neocortical neurons, Neuroscience, vol.107, issue.01, p.344, 2001.
URL : https://hal.archives-ouvertes.fr/hal-00124691

B. Sengupta, M. Stemmler, S. B. Laughlin, and J. E. Niven, Action Potential Energy Efficiency Varies Among Neuron Types in Vertebrates and Invertebrates, PLoS Comput Biol, vol.6, issue.7, p.1000840, 2010.

J. J. Harris and D. Attwell, The Energetics of CNS White Matter, J Neurosci, vol.32, issue.1, pp.356-371, 2012.

D. A. Butts and M. S. Goldman, Tuning Curves, Neuronal Variability, and Sensory Coding, PLoS Biol, vol.4, issue.4, 2006.

M. Bezzi, Quantifying the information transmitted in a single stimulus, Biosystems, vol.89, pp.4-9, 2007.

L. Kostal, D. Onofrio, and G. , Coordinate invariance as a fundamental constraint on the form of stimulus-specific information measures, Biol Cybern, vol.112, issue.1-2, p.28856427, 2018.

D. G. Luenberger, Optimization by Vector Space Methods, 1997.

J. G. Smith, The Information Capacity of Amplitude-and Variance-Constrained Scalar Gaussian Channels, Information and Control, vol.18, issue.3, pp.90346-90355, 1971.

S. Verdu, On channel capacity per unit cost, IEEE Trans Inf Theory, vol.36, issue.5, pp.1019-1030, 1990.

I. C. Abou-faycal, M. D. Trott, and S. Shamai, The capacity of discrete-time memoryless Rayleigh-fading channels, IEEE Trans Inf Theory, vol.47, issue.4, pp.1290-1301, 2001.

P. Reinagel and R. C. Reid, Temporal Coding of Visual Information in the Thalamus, J Neurosci, vol.20, issue.14, pp.5392-5400, 2000.

M. Richardson, Effects of synaptic conductance on the voltage distribution and firing rate of spiking neurons, Phys Rev E, vol.69, issue.5, 2004.

C. Monier, F. Chavane, P. Baudot, L. J. Graham, and Y. Frégnac, Orientation and Direction Selectivity of Synaptic Inputs in Visual Cortical Neurons, Neuron, vol.37, issue.4, pp.64-67, 2003.
URL : https://hal.archives-ouvertes.fr/hal-00123859

Y. Isomura, R. Harukuni, T. Takekawa, H. Aizawa, and T. Fukai, Microcircuitry coordination of cortical motor information in self-initiation of voluntary movements, Nat Neurosci, vol.12, issue.12, pp.1586-1593, 2009.

Y. Tsubo, Y. Isomura, and T. Fukai, Power-Law Inter-Spike Interval Distributions Infer a Conditional Maximization of Entropy in Cortical Neurons, PLoS Comput Biol, vol.8, issue.4, p.1002461, 2012.

L. Kostal, Information capacity in the weak-signal approximation, Phys Rev E, vol.82, issue.2, 2010.

M. Shafi, Y. Zhou, J. Quintana, C. Chow, J. Fuster et al., Variability in neuronal activity in primate cortex during working memory tasks, Neuroscience, vol.146, issue.3, pp.1082-1108, 2007.

D. H. O'connor, S. P. Peron, D. Huber, and K. Svoboda, Neural Activity in Barrel Cortex Underlying Vibrissa-Based Object Localization in Mice, Neuron, vol.67, issue.6, pp.1048-1061, 2010.

G. Buzsáki and K. Mizuseki, The log-dynamic brain: how skewed distributions affect network operations, Nat Rev Neurosci, vol.15, pp.264-278, 2014.

S. Yamauchi, H. Kim, and S. Shinomoto, Elemental Spiking Neuron Model for Reproducing Diverse Firing Patterns and Predicting Precise Firing Times, Front Comput Neurosci, 2011.

L. Kostal and R. Kobayashi, Critical size of neural population for reliable information transmission, Phys Rev E (Rapid Commun), vol.100, issue.1, p.50401, 2019.

B. Sengupta, S. B. Laughlin, and J. E. Niven, Balanced Excitatory and Inhibitory Synaptic Currents Promote Efficient Coding and Metabolic Efficiency, PLoS Comput Biol, vol.9, issue.10, p.1003263, 2013.

M. Richardson and W. Gerstner, Synaptic Shot Noise and Conductance Fluctuations Affect the Membrane Voltage with Equal Significance, Neural Comput, vol.17, issue.4, pp.923-947, 2005.

O. Bernander, R. J. Douglas, K. A. Martin, and C. Koch, Synaptic background activity influences spatiotemporal integration in single pyramidal cells, Proc Natl Acad Sci USA, vol.88, issue.24, pp.11569-11573, 1991.

D. Paré, E. Shink, H. Gaudreau, A. Destexhe, and E. J. Lang, Impact of Spontaneous Synaptic Activity on the Resting Properties of Cat Neocortical Pyramidal Neurons In Vivo, J Neurophysiol, vol.79, issue.3, pp.1450-1460, 1998.

A. Destexhe, M. Rudolph, and D. Paré, The high-conductance state of neocortical neurons in vivo, Nat Rev Neurosci, vol.4, issue.9, pp.739-751, 2003.
URL : https://hal.archives-ouvertes.fr/hal-00299172

W. Mittmann, U. Koch, and . Hä, Feed-forward inhibition shapes the spike output of cerebellar Purkinje cells, J Physiol (Lond), vol.563, issue.2, pp.369-378, 2005.

J. Wolfart, D. Debay, G. L. Masson, A. Destexhe, and T. Bal, Synaptic background activity controls spike transfer from thalamus to cortex, Nat Neurosci, vol.8, issue.12, pp.1760-1767, 2005.
URL : https://hal.archives-ouvertes.fr/hal-00018620

M. Rudolph, M. Pospischil, I. Timofeev, and A. Destexhe, Inhibition Determines Membrane Potential Dynamics and Controls Action Potential Generation in Awake and Sleeping Cat Cortex, J Neurosci, vol.27, issue.20, pp.5280-5290, 2007.
URL : https://hal.archives-ouvertes.fr/hal-00151880

J. J. Harris, E. Engl, D. Attwell, and R. B. Jolivet, Energy-efficient information transfer at thalamocortical synapses, PLoS Comput Biol, vol.15, issue.8, p.1007226, 2019.

R. Kobayashi, S. Kurita, A. Kurth, K. Kitano, K. Mizuseki et al., Reconstructing neuronal circuitry from parallel spike trains, Nat Commun, vol.10, issue.1, 2019.

L. Kostal and P. Lansky, Information capacity and its approximations under metabolic cost in a simple homogeneous population of neurons, Biosystems, vol.112, issue.3, pp.265-275, 2013.

A. El-gamal and Y. H. Kim, Network Information Theory, 2011.