|
|
| --- |
| tags: |
| - regression |
| - classification |
| - clustering |
| - tabular |
| - linkedin |
| - job-postings |
| - sklearn |
| - random-forest |
| - decision-tree |
| - kmeans |
| - shap |
| license: mit |
| --- |
| |
| # π LinkedIn Job Posting Engagement Analysis |
|
|
| > **Which LinkedIn job posting characteristics predict candidate engagement (views) β and how well can engagement be predicted or classified using only posting-level features?** |
|
|
| **Personal motivation:** As someone in entrepreneurship, understanding which job posting features attract candidates is directly relevant to future hiring decisions. |
|
|
| --- |
|
|
| ## πΉ Presentation Video |
|
|
| <video src=["https://huggingface.co/datasets/YOUR_USERNAME/YOUR_REPO/resolve/main/presentation.mp4](https://www.loom.com/share/c7d9b89a54234f699204b16a9a313c7d)" controls style="max-width:720px;"></video> |
|
|
| --- |
|
|
| ## π Interactive Dashboard |
|
|
| π **[Open the LinkedIn Job Engagement Dashboard](https://huggingface.co/spaces/MichaelYitzchak/linkedin_Job_Engagement)** |
|
|
| | Tab | Description | |
| |---|---| |
| | π― Engagement Predictor | Enter posting details β get predicted views + High/Normal classification in real time | |
| | π EDA Dashboard | All 5 EDA findings as interactive charts | |
| | βΉοΈ About | Feature groups, model details, limitations | |
|
|
| --- |
|
|
| ## π Dataset at a Glance |
|
|
| | Property | Value | |
| |---|---| |
| | **Source** | [LinkedIn Job Postings β arshkon/linkedin-job-postings (Kaggle)](https://www.kaggle.com/datasets/arshkon/linkedin-job-postings) | |
| | **Original size** | 123,850 rows Γ 49 columns | |
| | **Working sample** | 30,000 rows Β· `random_state=42` | |
| | **After join with companies** | 30,000 rows Γ 40 columns | |
| | **After cleaning** | 29,572 rows Γ 51 columns (in `df_model`) | |
| | **Train / Test split** | 23,657 / 5,915 (80/20, `random_state=42`) | |
| | **Regression target** | `log_views = log1p(views)` β log-transformed to handle right skew | |
| | **Classification target** | `high_engagement` β top 25% of training views (threshold derived from training set only) | |
|
|
| --- |
|
|
| ## β οΈ Scope & Limitations |
|
|
| > LinkedIn's algorithm, sponsored status, and company follower counts drive the **majority of view variance** and are **unobservable** in this dataset. Models use posting-level features only. The practical goal is **ranking postings by predicted engagement**, not exact point prediction. Results show associations, not causal relationships. |
|
|
| --- |
|
|
| ## ποΈ Repository Files |
|
|
| | File | Description | |
| |---|---| |
| | `notebook.ipynb` | Full pipeline: Cleaning β EDA β Feature Engineering β Clustering β Regression β Classification β Bonus | |
| | `linkedin_regression_model.pkl` | Winning regression model: Random Forest (Tuned via RandomizedSearchCV) | |
| | `linkedin_classification_model.pkl` | Winning classification model: Decision Tree (max_depth=8, class_weight="balanced") | |
| | `regression_model_results.csv` | Full regression model comparison table | |
| | `classification_model_results.csv` | Full classification model comparison table | |
|
|
| --- |
|
|
| ## π§Ή Data Cleaning Pipeline |
|
|
| **7 steps from 123,850 raw rows to a clean, leakage-free modelling matrix:** |
|
|
| ``` |
| Step 1 β Reproducible sampling |
| 123,850 rows β sample(n=30,000, random_state=42) |
| Joined with companies.csv on company_id (left join, rows preserved) |
| Result: 30,000 rows Γ 40 columns |
| |
| Step 2 β Duplicate & missing target removal |
| Removed duplicate rows |
| Dropped rows where views is NaN or negative |
| Result: 29,572 usable rows |
| |
| Step 3 β Date parsing |
| listed_time, original_listed_time, expiry, closed_time β parsed to datetime |
| Extracted: posting_year, posting_month, posting_dayofweek, posting_weekend |
| |
| Step 4 β Missing value analysis & column dropping |
| Threshold: >70% missing β drop |
| Dropped: closed_time (99.2%), skills_desc (98.1%), med_salary (95.1%), |
| remote_allowed (87.9%), applies (81.1%), max_salary/min_salary (76%) |
| |
| Step 5 β Leakage columns excluded |
| expiry, applies β removed (post-publication outcomes) |
| views β kept as target only, never as a feature |
| |
| Step 6 β Salary imputation strategy |
| has_salary_info = 1 if salary present, else 0 |
| salary_midpoint computed from min/max salary where available |
| Missing salary β imputed inside sklearn Pipeline on training data only |
| |
| Step 7 β Log transformation of target |
| Raw views: mean=14.9, std=98.8, max=9,949 β heavily right-skewed |
| log_views = log1p(views) β compresses scale, improves regression fit |
| Predictions converted back via expm1() for interpretation |
| Outliers (IQR method): 4,074 (13.8%) β kept, not removed |
| ``` |
|
|
| --- |
|
|
| ## π EDA β 5 Research Questions |
|
|
| > **Note on notebook ordering:** Q1=Work type, Q2=Salary, Q3=Description, Q4=Day of week, Q5=Seniority. Presented below in order of business impact. |
|
|
| --- |
|
|
| ### π° Q2 β Salary Transparency vs Views |
|
|
| ``` |
| No salary info βββββββββββββββββββββββββ ~12 avg views (70.1% of postings) |
| Has salary info βββββββββββββββββββββββββ ~21 avg views (29.9% of postings) |
| +74.3% lift β |
| ``` |
|
|
| > Only **8,562 of 29,572 postings (29.9%)** disclose salary. Transparent postings attract **74.3% more views** on average. This is the highest-leverage, lowest-cost recruiter action available. |
|
|
| --- |
|
|
| ### π Q3 β Description Length vs Views |
|
|
| ``` |
| < 100 words ββββββββββββββββββββ ~8 avg views β signals incomplete posting |
| 100β250 words ββββββββββββββββββββ ~13 avg views |
| 250β500 words ββββββββββββββββββββ ~24 avg views PEAK β
β sweet spot |
| 500β750 words ββββββββββββββββββββ ~18 avg views |
| > 1000 words ββββββββββββββββββββ ~10 avg views β overwhelms candidates |
| ``` |
|
|
| > Non-linear relationship confirmed. Sweet spot: **250β500 words**. This motivated `description_density` β the **#1 feature** in the winning regression model. |
| |
| --- |
| |
| ### π
Q4 β Day of Week vs Views |
| |
| ``` |
| Monday ββββββββββββββββββββ 39 avg views β
best day (n=1,837) |
| Tuesday ββββββββββββββββββββ 25 avg views |
| Wednesday ββββββββββββββββββββ 22 avg views |
| Thursday ββββββββββββββββββββ 18 avg views |
| Friday ββββββββββββββββββββ 7 avg views β worst day (n=10,076) |
| Saturday ββββββββββββββββββββ 28 avg views (weekend β n=2,116 total, noisier) |
| Sunday ββββββββββββββββββββ 28 avg views (weekend β noisier) |
| ``` |
| |
| > **Counterintuitive finding:** Weekend postings show higher averages (~28), but the weekend sample is tiny (2,116 obs total) making these estimates unreliable. Monday is the clear best weekday at 39 avg views. The day-of-week signal is modest and should not override content features. |
| |
| --- |
| |
| ### πΌ Q1 β Work Type vs Views |
| |
| ``` |
| Contract ββββββββββββββββββββ 29.97 avg views median: 7.0 |
| Internship ββββββββββββββββββββ 25.71 avg views median: 5.0 |
| Full-time ββββββββββββββββββββ 13.70 avg views median: 4.0 β 80% of volume |
| Other ββββββββββββββββββββ 11.27 avg views median: 4.0 |
| Part-time ββββββββββββββββββββ 9.59 avg views median: 4.0 |
| ``` |
| |
| > Contract and Internship roles show the highest engagement. However, **Full-time dominates volume** (23,674 of 29,572 postings = 80%). Work type is a useful predictive feature but should not be interpreted as causal. |
| |
| --- |
| |
| ### π Q5 β Seniority Level vs Views |
| |
| ``` |
| Entry-level ββββββββββββββββββββ 18 avg views n=792 |
| Senior-level ββββββββββββββββββββ 16 avg views n=3,577 |
| Other/Mid ββββββββββββββββββββ 15 avg views n=25,203 |
| |
| Entry vs Senior: +12.4% more views |
| Entry vs Other: +18.9% more views |
| ``` |
| |
| > Supply-side effect β more candidates qualify for junior roles, so the pool is larger. `is_entry_role` carries predictive signal because it proxies for **candidate pool size**, not intrinsic desirability. |
| |
| --- |
| |
| ### π₯ Feature Correlation with log(views+1) |
| |
| ``` |
| Feature Corr Direction Note |
| βββββββββββββββββββββββββββββββββββββββββββββββββββββββββββββββββββββ |
| desc_salary_interaction +0.18 β views strongest single predictor |
| has_salary_info +0.14 β views salary transparency |
| salary_log +0.12 β views salary level |
| description_density +0.10 β views content quality |
| description_word_count +0.08 β views description length |
| is_software_role +0.08 β views tech role demand |
| is_data_role +0.07 β views data role demand |
| is_entry_role +0.06 β views larger candidate pool |
| posting_weekend -0.04 β views small negative signal |
| is_senior_role -0.03 β views smaller candidate pool |
| βββββββββββββββββββββββββββββββββββββββββββββββββββββββββββββββββββββ |
| Internal correlations (structural β not data leakage): |
| salary_log β salary_midpoint +0.96 log transform of same variable |
| desc_wc β desc_density +0.55 density uses length in formula |
| is_software β is_data +0.35 often co-occur in job titles |
| is_senior β is_entry -0.28 mutually exclusive by construction |
| ``` |
| |
| > Most features show **weak linear correlation** β no single feature dominates. This motivated tree-based models (Random Forest, Gradient Boosting) which capture non-linear interactions and feature combinations. |
| |
| ### π‘οΈ Correlation Heatmap (feature-to-feature + target) |
| |
| ``` |
| log desc has sal desc is_ is_ is_ post is_ |
| views dens sal log wc soft data entr wknd snr |
| ββββββββββββββββββββββββββββββββββββββββββββββββββββββββββββββββββββββββββββββββββββββ |
| log_views β 1.00 0.10 0.14 0.12 0.08 0.08 0.07 0.06 -0.04 -0.03 |
| description_density β 0.10 1.00 0.02 0.04 0.55 0.01 0.01 -0.01 0.00 0.00 |
| has_salary_info β 0.14 0.02 1.00 0.72 0.03 0.06 0.07 -0.03 -0.01 -0.02 |
| salary_log β 0.12 0.04 0.72 1.00 0.04 0.05 0.06 -0.02 -0.01 -0.01 |
| description_word_count β 0.08 0.55 0.03 0.04 1.00 0.01 0.01 -0.01 0.00 0.00 |
| is_software_role β 0.08 0.01 0.06 0.05 0.01 1.00 0.35 -0.08 0.00 -0.05 |
| is_data_role β 0.07 0.01 0.07 0.06 0.01 0.35 1.00 -0.06 0.00 -0.04 |
| is_entry_role β 0.06 -0.01 -0.03 -0.02 -0.01 -0.08 -0.06 1.00 0.01 -0.28 |
| posting_weekend β -0.04 0.00 -0.01 -0.01 0.00 0.00 0.00 0.01 1.00 0.00 |
| is_senior_role β -0.03 0.00 -0.02 -0.01 0.00 -0.05 -0.04 -0.28 0.00 1.00 |
| ββββββββββββββββββββββββββββββββββββββββββββββββββββββββββββββββββββββββββββββββββββββ |
| Key structural correlations: |
| salary_log β has_salary_info +0.72 same underlying signal, different form |
| desc_wc β desc_density +0.55 density formula uses word count |
| is_software β is_data +0.35 frequently co-occur in job titles |
| is_entry β is_senior -0.28 mutually exclusive flags |
| ``` |
| |
| > The heatmap confirms no multicollinearity crisis β the highest inter-feature correlation (salary_log β has_salary_info at 0.72) is a structural relationship between two forms of the same signal, not a data problem. All correlations with log_views are weak, validating the move to non-linear tree-based models. |
|
|
| --- |
|
|
| ## βοΈ Feature Engineering β 20 Base + 6 Cluster = 30 Total Features |
|
|
| | Group | Features | |
| |---|---| |
| | Text length | `title_length`, `title_word_count`, `description_length`, `description_word_count` | |
| | Text structure | `description_density` β
, `title_desc_ratio` | |
| | Salary | `salary_midpoint`, `salary_range`, `has_salary_info`, `salary_log` | |
| | Role keywords | `is_senior_role`, `is_entry_role`, `is_software_role`, `is_data_role`, `is_manager_role`, `is_sales_role`, `is_marketing_role`, `is_remote_text` | |
| | Interactions | `desc_salary_interaction` β
, `senior_salary`, `weekend_remote`, `title_desc_word_interaction`, `salary_density_interaction`, `salary_description_interaction`, `title_density_interaction` | |
| | Clustering | `cluster_0`, `cluster_1`, `cluster_2`, `cluster_3`, `cluster_4`, `cluster_5` | |
|
|
| **Missing value strategy:** |
| - Columns with >70% missing β dropped |
| - Salary β `has_salary_info` flag + `salary_midpoint` where available; remaining NaN imputed inside sklearn Pipeline on training data only |
| - Remaining numeric β `SimpleImputer(strategy="median")` inside Pipeline |
|
|
| --- |
|
|
| ## π΅ Clustering β KMeans k=6 |
|
|
| **Features used for clustering (12 total, leakage-checked):** |
| `title_word_count`, `description_word_count`, `salary_log`, `description_density`, `has_salary_info`, `is_senior_role`, `is_entry_role`, `is_software_role`, `is_data_role`, `is_manager_role`, `is_sales_role`, `is_marketing_role` |
|
|
| **Methods used to select k:** |
| 1. Elbow method β inconclusive, no sharp elbow |
| 2. KMeans silhouette scores on full training matrix |
| 3. Cluster-size stability table |
| 4. Interactive K-Means widget (visualization aid β uses sample) |
| 5. Hierarchical clustering dendrogram (Ward linkage, 300 obs) |
| 6. Agglomerative clustering comparison (k=2β10) |
|
|
| ``` |
| Silhouette scores by k (full training matrix): |
| |
| k=2 ββββββββββββββββββββ 0.198 smallest cluster: 6,830 (28.9%) |
| k=3 ββββββββββββββββββββ 0.221 smallest cluster: 2,100 (8.9%) |
| k=4 ββββββββββββββββββββ 0.312 β strong BUT largest=72% of data |
| k=5 ββββββββββββββββββββ 0.250 smallest: 526 (unstable) |
| k=6 ββββββββββββββββββββ 0.290 β SELECTED β
smallest: 583 (2.5%) |
| k=7 ββββββββββββββββββββ 0.286 singleton cluster appeared |
| k=8+ singleton clusters appeared |
| |
| Why NOT k=10 (highest score): singleton cluster (1 observation) |
| Why NOT k=4 (strong score): largest cluster = 72% β not meaningful separation |
| Why k=6: no singletons, stable sizes, interpretable profiles, silhouette 0.290 |
| ``` |
|
|
| **Cluster profiles at k=6 (training set n=23,657):** |
|
|
| | Cluster | Label | Size | Share | Key Signal | |
| |---|---|---|---|---| |
| | 0 | Manager-focused | 4,571 | 19% | `is_manager_role=1.00` | |
| | 1 | General / Mixed | 13,055 | 55% | No dominant role signal | |
| | 2 | Salary-transparent | 1,940 | 8% | `has_salary_info=1.00` | |
| | 3 | Data roles | 1,451 | 6% | `is_data_role=1.00` | |
| | 4 | Software roles | 2,057 | 9% | `is_software_role=1.00` | |
| | 5 | Entry / low salary | 583 | 2% | Smallest cluster | |
|
|
| **Official final silhouette score: 0.290** (full training matrix) |
|
|
| Cluster labels one-hot encoded as 6 dummy features. Including clusters improved both regression RMSE and classification F1 over models without them. |
|
|
| --- |
|
|
| ## π Regression β Predicting `log1p(views)` |
|
|
| ### Baseline |
|
|
| ``` |
| Mean Baseline (predict training mean for all observations): |
| RMSE_log = 0.8708 RΒ² = -0.0002 β floor every model must beat |
| MAE_views β 10.64 |
| |
| Baseline Linear Regression (20 features, no clustering): |
| RMSE_log = 0.8425 RΒ² = 0.0639 |
| ``` |
|
|
| ### Full Model Comparison (after feature engineering + clustering) |
|
|
| | Model | RMSE_log β | RΒ² β | Notes | |
| |---|---|---|---| |
| | **Random Forest (Tuned) β
** | **0.8347** | **0.0811** | RandomizedSearchCV winner | |
| | Random Forest (Controlled) | 0.8349 | 0.0807 | Manual constraints | |
| | Gradient Boosting | 0.8370 | 0.0770 | β | |
| | Linear Regression + Features | 0.8420 | 0.0640 | β | |
| | RidgeCV | 0.8420 | 0.0640 | β | |
| | Lasso Regression | 0.8430 | 0.0640 | β | |
| | PCA + Linear Regression | 0.8440 | 0.0600 | 15 components, 96.3% variance | |
| | Mean Baseline | 0.8708 | -0.0002 | Floor | |
| |
| **Key lessons:** |
| - Unrestricted RF β train RΒ²=0.854, test RΒ²=0.003 (massive overfit). Fixed by `max_depth`, `min_samples_split`, `min_samples_leaf`, `max_features` constraints. |
| - 3-fold CV mean RMSE_log: 0.8747 (Β±0.0125) β stable across folds |
| - Outlier robustness test: capping views at 99th pct β RMSE_log 0.8147, RΒ²=0.0812 |
| |
| ### Top Feature Importances (RF Tuned) |
| |
| ``` |
| description_density ββββββββββββ #1 β content quality proxy |
| description_length ββββββββββββ #2 β raw description size |
| description_word_count ββββββββββββ #3 β word count |
| title-description interactionββββββββββββ #4 β combined text signal |
| is_software_role ββββββββββββ #5 β tech role demand |
| is_data_role ββββββββββββ #6 β data role demand |
| salary_log / has_salary_info ββββββββββββ #7+ β salary signals |
| ``` |
| |
| > `desc_salary_interaction` ranks #2 in SHAP analysis but further down in Gini importance β both agree on description quality and salary as top drivers. |
| |
| ### Why RΒ² = 0.081 Is Acceptable |
| |
| ``` |
| RΒ² = 0.081 β model explains ~8% of variance in log(views+1) |
|
|
| β Beats mean baseline (RΒ²β0) β real posting-level signal captured |
| β Social engagement inherently noisy β platform factors dominate |
| β 92% of variance from unobservable sources (algorithm, followers, ads) |
| β Practical use = ranking postings, not forecasting exact counts |
| ``` |
| |
| --- |
| |
| ## π Classification β High Engagement vs. Normal |
| |
| ``` |
| Target: high_engagement = 1 if views β₯ 75th percentile of TRAINING views |
| Class balance: ~75% Normal (Class 0) / ~25% High Engagement (Class 1) |
| Feature matrix: X_clf uses 24 features (see notebook cell 207) |
| Metric: F1-score for Class 1 (accuracy misleading with 75/25 imbalance) |
| ``` |
| |
| ### Model Comparison |
| |
| | Model | F1 (Class 1) | Recall (Class 1) | Notes | |
| |---|---|---|---| |
| | **Decision Tree β
** | **HIGHEST** | **HIGHEST** | max_depth=8, class_weight="balanced" | |
| | Logistic Regression | near-best | high | Close to DT in F1 | |
| | Random Forest | moderate | lower | Lowest FP count | |
| | Dummy Baseline | 0.00 | 0.00 | Always predicts Class 0 | |
| |
| **5-fold CV F1: 0.4424 Β± 0.0152** β stable, no lucky split |
| |
| ### Error Cost Analysis |
| |
| ``` |
| FN (missed high-engagement) = most costly error |
| β Company fails to prioritize, promote, or learn from a strong posting |
|
|
| FP (false alarm) = also costly |
| β Recruiter wastes time and budget on a posting that won't perform |
| ``` |
| |
| Decision Tree minimises FN (catches most high-engagement postings) but produces more FP. |
| Random Forest minimises FP (fewest false alarms) but misses more high-engagement postings. |
| |
| --- |
| |
| ## π‘ Business Insights |
| |
| 1. **Salary transparency is the single highest-leverage action** β 74.3% more views for free. Fewer than 30% of postings disclose salary today. |
| 2. **Description structure matters** β `description_density` was the #1 feature in both models. Sweet spot: 250β500 words. |
| 3. **Tech roles attract disproportionate engagement** β `is_software_role` and `is_data_role` carry real signal beyond salary. |
| 4. **Work type is associated with engagement** β contract roles lead, but full-time dominates volume (80%). |
| 5. **Platform factors dominate** β RΒ²β0.08 is expected and acceptable. Model value is in **ranking** postings, not exact prediction. |
| |
| --- |
| |
| ## π Bonus Work |
| |
| ### π§ SHAP Explainability |
| |
| ``` |
| SHAP mean |value| β RF Tuned regression (test observations) |
|
|
| description_density ββββββββββββ strongest positive impact β |
| desc_salary_interaction ββββββββββββ salary Γ description synergy β |
| salary_log ββββββββββββ salary level β |
| has_salary_info ββββββββββββ disclosed β more views β |
| posting_weekend ββββββββββββ weekend β fewer views β |
| ``` |
| |
| `desc_salary_interaction` ranks #2 in SHAP but lower in Gini β confirms it captures genuine non-linear interaction that neither feature achieves alone. |
| |
| ### π Feature Importance: Regression vs Classification |
| |
| ``` |
| Regression RF Classification DT |
| description_density #1 #2 |
| desc_salary_interaction #2 (SHAP) varies |
| salary_log #7+ varies |
| is_entry_role lower rises in classification |
| is_data_role #6 varies |
| ββββββββββββββββββββββββββββββββββββββββββββββββββββββββββ |
| Agreement: description quality + salary dominate both models |
| Divergence: seniority/role flags matter more for threshold-crossing |
| (classification) than for predicting exact counts (regression) |
| ``` |
| |
| ### π¬ Additional Extras |
| |
| - **Interactive K-Means Widget** β explore different k values visually (notebook cell 4.11) |
| - **Hierarchical Clustering Dendrogram** β Ward linkage, 300 obs sample (cell 4.12) |
| - **Agglomerative Clustering Diagnostic** β k=2β10 comparison (cell 4.13) |
| - **Outlier Robustness Test** β views capped at 99th percentile: RMSE_log 0.8147 vs 0.8347 uncapped |
| - **3-fold CV for regression** β mean RMSE_log 0.8747 Β± 0.0125 |
| |
| --- |
| |
| ## π οΈ How to Use the Models |
| |
| ```python |
| import pickle, numpy as np |
| |
| with open("linkedin_regression_model.pkl", "rb") as f: |
| reg_model = pickle.load(f) |
| with open("linkedin_classification_model.pkl", "rb") as f: |
| clf_model = pickle.load(f) |
| |
| # Regression β predict log(views+1), convert back to raw view estimate |
| log_views_pred = reg_model.predict(X_test_fe) |
| views_pred = np.expm1(log_views_pred) |
|
|
| # Classification β predict high-engagement label (0 = Normal, 1 = High) |
| label = clf_model.predict(X_clf) |
| ``` |
| |
| > Regression model expects **30-column** `X_test_fe` (including cluster dummies). |
| > Classification model expects **24-column** `X_clf` (see notebook cell 207). |
| > Run the full pipeline in the notebook to produce compatible feature matrices. |
| |
| --- |
| |
| *Assignment 2 β Classification, Regression, Clustering, Evaluation | LinkedIn Job Postings Β· arshkon/linkedin-job-postings (Kaggle)* |
| |
| |