All Publications
2023
“Emotion prediction as computation over a generative theory of mind”, Philosophical Transactions of the Royal Society A: Mathematical, Physical and Engineering Sciences, vol. 381, no. 2251, 2023. houlihan2023computedappraisals.pdf (2.37 MB) ,
CBMM Funded
CBMM Memo No.
141
“Feature learning in deep classifiers through Intermediate Neural Collapse”. 2023. Feature_Learning_memo.pdf (2.16 MB) ,
CBMM Funded
CBMM Memo No.
140
“SGD and Weight Decay Provably Induce a Low-Rank Bias in Deep Neural Networks”. 2023. Low-rank bias.pdf (2.38 MB) ,
CBMM Funded
CBMM Memo No.
139
“Norm-Based Generalization Bounds for Compositionally Sparse Neural Networks”. 2023. Norm-based bounds for convnets.pdf (1.2 MB) ,
CBMM Funded
2022
CBMM Memo No.
138
“How Deep Sparse Networks Avoid the Curse of Dimensionality: Efficiently Computable Functions are Compositionally Sparse”. 2022. v1.0 (984.15 KB) v5.7 adding in context learning etc (1.16 MB) ,
CBMM Funded
CBMM Memo No.
137
“Understanding the Role of Recurrent Connections in Assembly Calculus”. 2022. CBMM-Memo-137.pdf (1.49 MB) ,
CBMM Funded
CBMM Memo No.
134
“SGD Noise and Implicit Low-Rank Bias in Deep Neural Networks”. 2022. Implicit Rank Minimization.pdf (1.76 MB) ,
CBMM Funded
CBMM Memo No.
135
“PCA as a defense against some adversaries”. 2022. CBMM-Memo-135.pdf (2.58 MB) ,
CBMM Funded
“Joint rotational invariance and adversarial training of a dual-stream Transformer yields state of the art Brain-Score for Area V4”, in BrainScore Workshop at COSYNE, 2022. ,
CBMM Funded
“Finding Biological Plausibility for Adversarially Robust Features via Metameric Tasks”, International Conference on Learning Representations (ICLR). 2022. ,
CBMM Funded
2021
“Leveraging facial expressions and contextual information to investigate opaque representations of emotions.”, Emotion, 2021. Anzellotti 2021 Emotion.pdf (1.08 MB) ,
CBMM Funded
CBMM Memo No.
117
“Dynamics and Neural Collapse in Deep Classifiers trained with the Square Loss”. 2021. v1.0 (4.61 MB) v1.4corrections to generalization section (5.85 MB) v1.7Small edits (22.65 MB) ,
CBMM Funded
CBMM Memo No.
115
“Distribution of Classification Margins: Are All Data Equal?”. 2021. CBMM Memo 115.pdf (9.56 MB) arXiv version (23.05 MB) ,
CBMM Funded
“What Matters In Branch Specialization? Using a Toy Task to Make Predictions”, in Shared Visual Representations in Human and Machine Intelligence (SVRHM) Workshop at NeurIPS, 2021. ,
CBMM Funded
“On the use of Cortical Magnification and Saccades as Biological Proxies for Data Augmentation”, in Shared Visual Representations in Human and Machine Intelligence (SVRHM) Workshop at NeurIPS, 2021. ,
CBMM Funded
2020
CBMM Memo No.
113
“Dreaming with ARC”, Learning Meets Combinatorial Algorithms workshop at NeurIPS 2020. 2020. CBMM Memo 113.pdf (1019.64 KB) ,
CBMM Funded
CBMM Memo No.
109
“Hierarchically Local Tasks and Deep Convolutional Networks”. 2020. CBMM_Memo_109.pdf (2.12 MB) ,
CBMM Funded
2019
CBMM Memo No.
102
“Double descent in the condition number”. 2019. Fixing typos, clarifying error in y, best approach is crossvalidation (837.18 KB) Incorporated footnote in text plus other edits (854.05 KB) Deleted previous discussion on kernel regression and deep nets: it will appear, extended, in a separate paper (795.28 KB) correcting a bad typo (261.24 KB) Deleted plot of condition number of kernel matrix: we cannot get a double descent curve (769.32 KB) ,
CBMM Funded
CBMM Memo No.
100
“Theoretical Issues in Deep Networks”. 2019. CBMM Memo 100 v1 (1.71 MB) CBMM Memo 100 v3 (8/25/2019) (1.31 MB) CBMM Memo 100 v4 (11/19/2019) (1008.23 KB) ,
CBMM Funded
“ Does intuitive inference of physical stability interruptattention?”, Cognitive Sciences Society. 2019. ,
CBMM Funded
“How to never be wrong”, Psychonomic Bulletin & Review, vol. 26, no. 1, pp. 13 - 28, 2019. ,
CBMM Funded
“Fast and Accurate Seismic Tomography via Deep Learning”, in Deep Learning: Algorithms and Applications, SPRINGER-VERLAG, 2019. ,
CBMM Related
2018
“Learning physical parameters from dynamic scenes.”, Cognitive Psychology, vol. 104, pp. 57-82, 2018. T-Ullman-etal_CogPsych_LearningPhysicalParametersFromDynamicScenes.pdf (3.15 MB) ,
CBMM Funded
CBMM Memo No.
095
“Can Deep Neural Networks Do Image Segmentation by Understanding Insideness?”. 2018. CBMM-Memo-095.pdf (1.96 MB) ,
CBMM Funded
“Trading robust representations for sample complexity through self-supervised visual experience”, in Advances in Neural Information Processing Systems 31, Montreal, Canada, 2018, pp. 9640–9650. trading-robust-representations-for-sample-complexity-through-self-supervised-visual-experience.pdf (3.32 MB) NeurIPS2018_Poster.pdf (6.12 MB) ,