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Enterprise AI Analysis: Interpretable mycology: leveraging Kolmogorov-Arnold networks for high-accuracy Lactarius species classification and comparative benchmarking

Enterprise AI Analysis

Interpretable mycology: leveraging Kolmogorov-Arnold networks for high-accuracy Lactarius species classification and comparative benchmarking

This study introduces a hybrid deep learning framework that integrates convolutional neural networks (CNNs) with Kolmogorov-Arnold networks (KAN) for fine-grained classification of eight Lactarius species using a curated dataset of 1.614 images. The proposed CNN-KAN architecture significantly outperforms seven state-of-the-art baseline models, ConvNeXt-Small, EfficientNetV2-Small, MobileNetV3-Small, RegNetY-400MF, ResNet-50, SqueezeNet1.1M, and ViT-Small, across all evaluation metrics. The model achieved an accuracy of 0.9877, F1-score 0.9877, precision 0.9879, sensitivity 0.9877, specificity 0.9982, MCC 0.9855, and AUC 0.9994, representing improvements of approximately 1-3% over high-capacity baselines such as ConvNeXt-Small (accuracy 0.9775), ResNet-50 (0.9754), and EfficientNetV2-Small (0.9672), and a substantial margin of+23.36% compared with SqueezeNet1.1M (0.7541). Statistical analysis confirmed that CNN-KAN achieved the lowest Friedman mean rank (1.07) and demonstrated significant superiority over RegNetY-400MF, ViT-Small, and SqueezeNet1.1M in the Nemenyi post hoc test (p<0.05). Only three misclassifications occurred in 488 independent test samples, all within morphologically similar Lactarius aurantiacus images. Explainable AI analysis using LIME revealed that correct predictions predominantly relied on biologically meaningful structures, including gill lamellation, cap zonation, and stipe-cap transitions, while misclassifications were linked to background interference and chromatic ambiguity. Collectively, the findings demonstrate that the CNN-KAN framework provides a highly accurate, statistically validated, and interpretable solution for automated fungal taxonomy, with strong potential for deployment in ecological monitoring and digital biodiversity assessment pipelines. Moreover, the computational complexity associated with the hybrid CNN-KAN architecture, including high-dimensional feature extraction, spline-based functional transformations, and extensive hyperparameter optimization, necessitates the use of high-performance computing (HPC) resources. This highlights the model's strong alignment

Executive Impact

The CNN-KAN framework offers a significant advancement for enterprises in ecological monitoring, biodiversity assessment, and automated taxonomic systems. Its superior accuracy (up to 23% over lightweight models) and interpretability enable reliable, data-driven decision-making, reducing manual effort and expert dependency. The model's compatibility with high-performance computing (HPC) ensures scalability for large-scale data analysis, directly translating to accelerated research, improved conservation strategies, and efficient resource allocation in environmental sciences and agricultural applications. This technology can streamline data processing pipelines, enhance diagnostic precision, and provide actionable insights faster.

0 Overall Accuracy
0 F1-Score
0 MCC Score
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Deep Analysis & Enterprise Applications

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AI Architecture
Performance Benchmarking
Interpretability (XAI)
Real-world Applications
0.9877 Accuracy (CNN-KAN)

Novel Integration of CNNs with KANs

The study introduces a hybrid deep learning framework combining convolutional neural networks (CNNs) for hierarchical feature extraction with Kolmogorov-Arnold networks (KAN) for enhanced nonlinear modeling. This architecture leverages the strengths of both paradigms: CNNs capture multiscale visual characteristics (cap texture, gill lamellation), while KANs employ learnable, spline-parameterized activation functions on network edges, enabling richer and more adaptable nonlinear mappings than traditional MLPs. This unique integration is key to its high performance in fine-grained classification.

Enterprise Process Flow

Curated Lactarius Dataset (1.614 Images)
Data Augmentation (224x224)
CNN Feature Extraction (512-dim)
KAN Classification (8 species)
Performance Metrics Calculation
Statistical Significance Testing (Friedman/Nemenyi)
XAI for Interpretability

CNN-KAN vs. SOTA Baselines

Model Key Advantages Performance (Accuracy) Compared to CNN-KAN
CNN-KAN (Proposed)
  • Hybrid architecture (CNN + KAN)
  • Spline-based learnable activations
  • High interpretability via XAI
0.9877 Baseline (Highest)
ConvNeXt-Small
  • Modernized CNN, transformer-inspired
  • Large kernel depthwise convolutions
  • Good balance of capacity/efficiency
0.9775 1.02% lower
EfficientNetV2-Small
  • Training-aware NAS optimization
  • Fused-MBConv blocks for speed
  • Progressive resizing
0.9672 2.05% lower
ResNet-50
  • Residual connections for deep networks
  • Bottleneck residual blocks
  • Global average pooling
0.9754 1.26% lower
MobileNetV3-Small
  • Mobile-optimized via NAS/NetAdapt
  • Squeeze-and-excitation (SE) attention
  • Hard-swish activations
0.9611 2.75% lower
ViT-Small
  • Pure attention mechanisms
  • Patch embedding
  • Global dependencies capture
0.9672 2.05% lower
RegNetY-400MF
  • Systematic design space exploration
  • Regular network structure
  • SE attention
0.9775 1.02% lower
SqueezeNet1.1M
  • Highly efficient, low parameters
  • Fire modules for dimensionality reduction
  • AlexNet-level accuracy
0.7541 23.36% lower (Significant)

LIME Reveals Biologically Meaningful Feature Reliance

Explainable AI (LIME) analysis demonstrated that CNN-KAN's correct predictions predominantly rely on biologically meaningful morphological structures. These include gill lamellation, cap zonation, and stipe-cap transitions—features consistent with traditional mycological taxonomic criteria. This indicates the model learns relevant visual attributes, enhancing trustworthiness for domain experts. Misclassifications were linked to background interference or chromatic ambiguity, providing critical insights for dataset refinement.

Automated Fungal Taxonomy for Ecological Monitoring

The high accuracy and interpretability of the CNN-KAN framework make it an ideal solution for automated fungal taxonomy. In ecological monitoring, rapid and precise identification of Lactarius species, which are ecologically significant ectomycorrhizal fungi, is crucial. This system can be deployed in digital biodiversity assessment pipelines, supporting faster data collection, improved conservation efforts, and more efficient environmental management. For instance, monitoring changes in fungal populations due to climate change or habitat destruction could be significantly streamlined, providing real-time insights.

Key Benefit: Accelerated biodiversity assessment and conservation efforts.

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